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. 2015 Jul 29;75(7):349. doi: 10.1140/epjc/s10052-015-3543-1

Search for the Standard Model Higgs boson produced in association with top quarks and decaying into bb¯ in pp collisions at s=8TeV with the ATLAS detector

G Aad 85, B Abbott 113, J Abdallah 152, O Abdinov 11, R Aben 107, M Abolins 90, O S AbouZeid 159, H Abramowicz 154, H Abreu 153, R Abreu 30, Y Abulaiti 147,227, B S Acharya 165,229, L Adamczyk 38, D L Adams 25, J Adelman 108, S Adomeit 100, T Adye 131, A A Affolder 74, T Agatonovic-Jovin 13, J A Aguilar-Saavedra 126,215, M Agustoni 17, S P Ahlen 22, F Ahmadov 65, G Aielli 134,218, H Akerstedt 147,227, T P A Åkesson 81, G Akimoto 156, A V Akimov 96, G L Alberghi 20,185, J Albert 170, S Albrand 55, M J Alconada Verzini 71, M Aleksa 30, I N Aleksandrov 65, C Alexa 26, G Alexander 154, T Alexopoulos 10, M Alhroob 113, G Alimonti 91, L Alio 85, J Alison 31, S P Alkire 35, B M M Allbrooke 18, P P Allport 74, A Aloisio 104,208, A Alonso 36, F Alonso 71, C Alpigiani 76, A Altheimer 35, B Alvarez Gonzalez 90, D Álvarez Piqueras 168, M G Alviggi 104,208, K Amako 66, Y Amaral Coutinho 24, C Amelung 23, D Amidei 89, S P Amor Dos Santos 126,212, A Amorim 126,211, S Amoroso 48, N Amram 154, G Amundsen 23, C Anastopoulos 140, L S Ancu 49, N Andari 30, T Andeen 35, C F Anders 58,202, G Anders 30, K J Anderson 31, A Andreazza 91,207, V Andrei 58, S Angelidakis 9, I Angelozzi 107, P Anger 44, A Angerami 35, F Anghinolfi 30, A V Anisenkov 109, N Anjos 12, A Annovi 124,210, M Antonelli 47, A Antonov 98, J Antos 224, F Anulli 133, M Aoki 66, L Aperio Bella 18, G Arabidze 90, Y Arai 66, J P Araque 126, A T H Arce 45, F A Arduh 71, J-F Arguin 95, S Argyropoulos 42, M Arik 19, A J Armbruster 30, O Arnaez 30, V Arnal 82, H Arnold 48, M Arratia 28, O Arslan 21, A Artamonov 97, G Artoni 23, S Asai 156, N Asbah 42, A Ashkenazi 154, B Åsman 147,227, L Asquith 150, K Assamagan 25, R Astalos 145, M Atkinson 166, N B Atlay 142, B Auerbach 6, K Augsten 128, M Aurousseau 225, G Avolio 30, B Axen 15, M K Ayoub 117, G Azuelos 95, M A Baak 30, A E Baas 58, C Bacci 135,219, H Bachacou 137, K Bachas 155, M Backes 30, M Backhaus 30, E Badescu 26, P Bagiacchi 133,217, P Bagnaia 133,217, Y Bai 33, T Bain 35, J T Baines 131, O K Baker 177, P Balek 129, T Balestri 149, F Balli 84, E Banas 39, Sw Banerjee 174, A A E Bannoura 176, H S Bansil 18, L Barak 30, S P Baranov 96, E L Barberio 88, D Barberis 50,200, M Barbero 85, T Barillari 101, M Barisonzi 165,229, T Barklow 144, N Barlow 28, S L Barnes 84, B M Barnett 131, R M Barnett 15, Z Barnovska 5, A Baroncelli 135, G Barone 49, A J Barr 120, F Barreiro 82, J Barreiro Guimarães da Costa 57, R Bartoldus 144, A E Barton 72, P Bartos 145, A Bassalat 117, A Basye 166, R L Bates 53, S J Batista 159, J R Batley 28, M Battaglia 138, M Bauce 133,217, F Bauer 137, H S Bawa 144, J B Beacham 111, M D Beattie 72, T Beau 80, P H Beauchemin 162, R Beccherle 124,210, P Bechtle 21, H P Beck 17, K Becker 120, M Becker 83, S Becker 100, M Beckingham 171, C Becot 117, A J Beddall 184, A Beddall 184, V A Bednyakov 65, C P Bee 149, L J Beemster 107, T A Beermann 176, M Begel 25, J K Behr 120, C Belanger-Champagne 87, P J Bell 49, W H Bell 49, G Bella 154, L Bellagamba 20, A Bellerive 29, M Bellomo 86, K Belotskiy 98, O Beltramello 30, O Benary 154, D Benchekroun 136, M Bender 100, K Bendtz 227, N Benekos 10, Y Benhammou 154, E Benhar Noccioli 49, J A Benitez Garcia 228, D P Benjamin 45, J R Bensinger 23, S Bentvelsen 107, L Beresford 120, M Beretta 47, D Berge 107, E Bergeaas Kuutmann 167, N Berger 5, F Berghaus 170, J Beringer 15, C Bernard 22, N R Bernard 86, C Bernius 110, F U Bernlochner 21, T Berry 77, P Berta 129, C Bertella 83, G Bertoli 147,227, F Bertolucci 124,210, C Bertsche 113, D Bertsche 113, M I Besana 91, G J Besjes 106, O Bessidskaia Bylund 147,227, M Bessner 42, N Besson 137, C Betancourt 48, S Bethke 101, A J Bevan 76, W Bhimji 46, R M Bianchi 125, L Bianchini 23, M Bianco 30, O Biebel 100, S P Bieniek 78, M Biglietti 135, J Bilbao De Mendizabal 49, H Bilokon 47, M Bindi 54, S Binet 117, A Bingul 184, C Bini 133,217, C W Black 151, J E Black 144, K M Black 22, D Blackburn 139, R E Blair 6, J-B Blanchard 137, JE Blanco 77, T Blazek 145, I Bloch 42, C Blocker 23, W Blum 83, U Blumenschein 54, G J Bobbink 107, V S Bobrovnikov 109, S S Bocchetta 81, A Bocci 45, C Bock 100, M Boehler 48, J A Bogaerts 30, A G Bogdanchikov 109, C Bohm 147, V Boisvert 77, T Bold 38, V Boldea 26, A S Boldyrev 99, M Bomben 80, M Bona 76, M Boonekamp 137, A Borisov 130, G Borissov 72, S Borroni 42, J Bortfeldt 100, V Bortolotto 60,204,205, K Bos 107, D Boscherini 20, M Bosman 12, J Boudreau 125, J Bouffard 2, E V Bouhova-Thacker 72, D Boumediene 34, C Bourdarios 117, N Bousson 114, A Boveia 30, J Boyd 30, I R Boyko 65, I Bozic 13, J Bracinik 18, A Brandt 8, G Brandt 15, O Brandt 58, U Bratzler 157, B Brau 86, J E Brau 116, H M Braun 176, S F Brazzale 165,230, K Brendlinger 122, A J Brennan 88, L Brenner 107, R Brenner 167, S Bressler 173, K Bristow 226, T M Bristow 46, D Britton 53, D Britzger 42, F M Brochu 28, I Brock 21, R Brock 90, J Bronner 101, G Brooijmans 35, T Brooks 77, W K Brooks 192, J Brosamer 15, E Brost 116, J Brown 55, P A Bruckman de Renstrom 39, D Bruncko 224, R Bruneliere 48, A Bruni 20, G Bruni 20, M Bruschi 20, L Bryngemark 81, T Buanes 14, Q Buat 143, P Buchholz 142, A G Buckley 53, S I Buda 26, I A Budagov 65, F Buehrer 48, L Bugge 119, M K Bugge 119, O Bulekov 98, H Burckhart 30, S Burdin 74, B Burghgrave 108, S Burke 131, I Burmeister 43, E Busato 34, D Büscher 48, V Büscher 83, P Bussey 53, C P Buszello 167, J M Butler 22, A I Butt 3, C M Buttar 53, J M Butterworth 78, P Butti 107, W Buttinger 25, A Buzatu 53, R Buzykaev 109, S Cabrera Urbán 168, D Caforio 128, O Cakir 4, P Calafiura 15, A Calandri 137, G Calderini 80, P Calfayan 100, L P Caloba 24, D Calvet 34, S Calvet 34, R Camacho Toro 49, S Camarda 42, D Cameron 119, L M Caminada 15, R Caminal Armadans 12, S Campana 30, M Campanelli 78, A Campoverde 149, V Canale 104,208, A Canepa 160, M Cano Bret 76, J Cantero 82, R Cantrill 126, T Cao 40, M D M Capeans Garrido 30, I Caprini 26, M Caprini 26, M Capua 37,198, R Caputo 83, R Cardarelli 134, T Carli 30, G Carlino 104, L Carminati 91,207, S Caron 106, E Carquin 32, G D Carrillo-Montoya 8, J R Carter 28, J Carvalho 126,212, D Casadei 78, M P Casado 12, M Casolino 12, E Castaneda-Miranda 225, A Castelli 107, V Castillo Gimenez 168, N F Castro 126, P Catastini 57, A Catinaccio 30, J R Catmore 119, A Cattai 30, J Caudron 83, V Cavaliere 166, D Cavalli 91, M Cavalli-Sforza 12, V Cavasinni 124,210, F Ceradini 135,219, B C Cerio 45, K Cerny 129, A S Cerqueira 186, A Cerri 150, L Cerrito 76, F Cerutti 15, M Cerv 30, A Cervelli 17, S A Cetin 183, A Chafaq 136, D Chakraborty 108, I Chalupkova 129, P Chang 166, B Chapleau 87, J D Chapman 28, D G Charlton 18, C C Chau 159, C A Chavez Barajas 150, S Cheatham 153, A Chegwidden 90, S Chekanov 6, S V Chekulaev 160, G A Chelkov 65, M A Chelstowska 89, C Chen 64, H Chen 25, K Chen 149, L Chen 195, S Chen 194, X Chen 197, Y Chen 67, H C Cheng 89, Y Cheng 31, A Cheplakov 65, E Cheremushkina 130, R Cherkaoui El Moursli 223, V Chernyatin 25, E Cheu 7, L Chevalier 137, V Chiarella 47, J T Childers 6, G Chiodini 73, A S Chisholm 18, R T Chislett 78, A Chitan 26, M V Chizhov 65, K Choi 61, S Chouridou 9, B K B Chow 100, V Christodoulou 78, D Chromek-Burckhart 30, M L Chu 152, J Chudoba 127, A J Chuinard 87, J J Chwastowski 39, L Chytka 115, G Ciapetti 133,217, A K Ciftci 4, D Cinca 53, V Cindro 75, I A Cioara 21, A Ciocio 15, Z H Citron 173, M Ciubancan 26, A Clark 49, B L Clark 57, P J Clark 46, R N Clarke 15, W Cleland 125, C Clement 147,227, Y Coadou 85, M Cobal 165,230, A Coccaro 139, J Cochran 64, L Coffey 23, J G Cogan 144, B Cole 35, S Cole 108, A P Colijn 107, J Collot 55, T Colombo 203, G Compostella 101, P Conde Muiño 126,211, E Coniavitis 48, S H Connell 225, I A Connelly 77, S M Consonni 91,207, V Consorti 48, S Constantinescu 26, C Conta 121,209, G Conti 30, F Conventi 104, M Cooke 15, B D Cooper 78, A M Cooper-Sarkar 120, K Copic 15, T Cornelissen 176, M Corradi 20, F Corriveau 87, A Corso-Radu 164, A Cortes-Gonzalez 12, G Cortiana 101, G Costa 91, M J Costa 168, D Costanzo 140, D Côté 8, G Cottin 28, G Cowan 77, B E Cox 84, K Cranmer 110, G Cree 29, S Crépé-Renaudin 55, F Crescioli 80, W A Cribbs 147,227, M Crispin Ortuzar 120, M Cristinziani 21, V Croft 106, G Crosetti 37,198, T Cuhadar Donszelmann 140, J Cummings 177, M Curatolo 47, C Cuthbert 151, H Czirr 142, P Czodrowski 3, S D’Auria 53, M D’Onofrio 74, M J Da Cunha Sargedas De Sousa 126,211, C Da Via 84, W Dabrowski 38, A Dafinca 120, T Dai 89, O Dale 14, F Dallaire 95, C Dallapiccola 86, M Dam 36, J R Dandoy 31, A C Daniells 18, M Danninger 169, M Dano Hoffmann 137, V Dao 48, G Darbo 50, S Darmora 8, J Dassoulas 3, A Dattagupta 61, W Davey 21, C David 170, T Davidek 129, E Davies 120, M Davies 154, P Davison 78, Y Davygora 58, E Dawe 88, I Dawson 140, R K Daya-Ishmukhametova 86, K De 8, R de Asmundis 104, S De Castro 20,185, S De Cecco 80, N De Groot 106, P de Jong 107, H De la Torre 82, F De Lorenzi 64, L De Nooij 107, D De Pedis 133, A De Salvo 133, U De Sanctis 150, A De Santo 150, J B De Vivie De Regie 117, W J Dearnaley 72, R Debbe 25, C Debenedetti 138, D V Dedovich 65, I Deigaard 107, J Del Peso 82, T Del Prete 124,210, D Delgove 117, F Deliot 137, C M Delitzsch 49, M Deliyergiyev 75, A Dell’Acqua 30, L Dell’Asta 22, M Dell’Orso 124,210, M Della Pietra 104, D della Volpe 49, M Delmastro 5, P A Delsart 55, C Deluca 107, D A DeMarco 159, S Demers 177, M Demichev 65, A Demilly 80, S P Denisov 130, D Derendarz 39, J E Derkaoui 222, F Derue 80, P Dervan 74, K Desch 21, C Deterre 42, P O Deviveiros 30, A Dewhurst 131, S Dhaliwal 107, A Di Ciaccio 134,218, L Di Ciaccio 5, A Di Domenico 133,217, C Di Donato 104,208, A Di Girolamo 30, B Di Girolamo 30, A Di Mattia 153, B Di Micco 135,219, R Di Nardo 47, A Di Simone 48, R Di Sipio 159, D Di Valentino 29, C Diaconu 85, M Diamond 159, F A Dias 46, M A Diaz 32, E B Diehl 89, J Dietrich 16, S Diglio 85, A Dimitrievska 13, J Dingfelder 21, F Dittus 30, F Djama 85, T Djobava 201, J I Djuvsland 58, M A B do Vale 187, D Dobos 30, M Dobre 26, C Doglioni 49, T Dohmae 156, J Dolejsi 129, Z Dolezal 129, B A Dolgoshein 98, M Donadelli 188, S Donati 124,210, P Dondero 121,209, J Donini 34, J Dopke 131, A Doria 104, M T Dova 71, A T Doyle 53, E Drechsler 54, M Dris 10, E Dubreuil 34, E Duchovni 173, G Duckeck 100, O A Ducu 26,85, D Duda 176, A Dudarev 30, L Duflot 117, L Duguid 77, M Dührssen 30, M Dunford 58, H Duran Yildiz 4, M Düren 52, A Durglishvili 201, D Duschinger 44, M Dyndal 38, C Eckardt 42, K M Ecker 101, W Edson 2, N C Edwards 46, W Ehrenfeld 21, T Eifert 30, G Eigen 14, K Einsweiler 15, T Ekelof 167, M El Kacimi 221, M Ellert 167, S Elles 5, F Ellinghaus 83, A A Elliot 170, N Ellis 30, J Elmsheuser 100, M Elsing 30, D Emeliyanov 131, Y Enari 156, O C Endner 83, M Endo 118, R Engelmann 149, J Erdmann 43, A Ereditato 17, G Ernis 176, J Ernst 2, M Ernst 25, S Errede 166, E Ertel 83, M Escalier 117, H Esch 43, C Escobar 125, B Esposito 47, A I Etienvre 137, E Etzion 154, H Evans 61, A Ezhilov 123, L Fabbri 20,185, G Facini 31, R M Fakhrutdinov 130, S Falciano 133, R J Falla 78, J Faltova 129, Y Fang 33, M Fanti 91,207, A Farbin 8, A Farilla 135, T Farooque 12, S Farrell 15, S M Farrington 171, P Farthouat 30, F Fassi 223, P Fassnacht 30, D Fassouliotis 9, M Faucci Giannelli 77, A Favareto 50,200, L Fayard 117, P Federic 145, O L Fedin 123, W Fedorko 169, S Feigl 30, L Feligioni 85, C Feng 195, E J Feng 6, H Feng 89, A B Fenyuk 130, P Fernandez Martinez 168, S Fernandez Perez 30, S Ferrag 53, J Ferrando 53, A Ferrari 167, P Ferrari 107, R Ferrari 121, D E Ferreira de Lima 53, A Ferrer 168, D Ferrere 49, C Ferretti 89, A Ferretto Parodi 50,200, M Fiascaris 31, F Fiedler 83, A Filipčič 75, M Filipuzzi 42, F Filthaut 106, M Fincke-Keeler 170, K D Finelli 151, M C N Fiolhais 126,212, L Fiorini 168, A Firan 40, A Fischer 2, C Fischer 12, J Fischer 176, W C Fisher 90, E A Fitzgerald 23, M Flechl 48, I Fleck 142, P Fleischmann 89, S Fleischmann 176, G T Fletcher 140, G Fletcher 76, T Flick 176, A Floderus 81, L R Flores Castillo 60, M J Flowerdew 101, A Formica 137, A Forti 84, D Fournier 117, H Fox 72, S Fracchia 12, P Francavilla 80, M Franchini 20,185, D Francis 30, L Franconi 119, M Franklin 57, M Fraternali 121,209, D Freeborn 78, S T French 28, F Friedrich 44, D Froidevaux 30, J A Frost 120, C Fukunaga 157, E Fullana Torregrosa 83, B G Fulsom 144, J Fuster 168, C Gabaldon 55, O Gabizon 176, A Gabrielli 20,185, A Gabrielli 133,217, S Gadatsch 107, S Gadomski 49, G Gagliardi 50,200, P Gagnon 61, C Galea 106, B Galhardo 126,212, E J Gallas 120, B J Gallop 131, P Gallus 128, G Galster 36, K K Gan 111, J Gao 193,85, Y Gao 46, Y S Gao 144, F M Garay Walls 46, F Garberson 177, C García 168, J E García Navarro 168, M Garcia-Sciveres 15, R W Gardner 31, N Garelli 144, V Garonne 119, C Gatti 47, A Gaudiello 50,200, G Gaudio 121, B Gaur 142, L Gauthier 95, P Gauzzi 133,217, I L Gavrilenko 96, C Gay 169, G Gaycken 21, E N Gazis 10, P Ge 195, Z Gecse 169, C N P Gee 131, D A A Geerts 107, Ch Geich-Gimbel 21, M P Geisler 58, C Gemme 50, M H Genest 55, S Gentile 133,217, M George 54, S George 77, D Gerbaudo 164, A Gershon 154, H Ghazlane 136,220, B Giacobbe 20, S Giagu 133,217, V Giangiobbe 12, P Giannetti 124,210, B Gibbard 25, S M Gibson 77, M Gilchriese 15, T P S Gillam 28, D Gillberg 30, G Gilles 34, D M Gingrich 3, N Giokaris 9, M P Giordani 165,230, F M Giorgi 20, F M Giorgi 16, P F Giraud 137, P Giromini 47, D Giugni 91, C Giuliani 48, M Giulini 202, B K Gjelsten 119, S Gkaitatzis 155, I Gkialas 155, E L Gkougkousis 117, L K Gladilin 99, C Glasman 82, J Glatzer 30, P C F Glaysher 46, A Glazov 42, M Goblirsch-Kolb 101, J R Goddard 76, J Godlewski 39, S Goldfarb 89, T Golling 49, D Golubkov 130, A Gomes 126,211,213, R Gonçalo 126, J Goncalves Pinto Firmino Da Costa 137, L Gonella 21, S González de la Hoz 168, G Gonzalez Parra 12, S Gonzalez-Sevilla 49, L Goossens 30, P A Gorbounov 97, H A Gordon 25, I Gorelov 105, B Gorini 30, E Gorini 73,206, A Gorišek 75, E Gornicki 39, A T Goshaw 45, C Gössling 43, M I Gostkin 65, D Goujdami 221, A G Goussiou 139, N Govender 225, H M X Grabas 138, L Graber 54, I Grabowska-Bold 38, P Grafström 20,185, K-J Grahn 42, J Gramling 49, E Gramstad 119, S Grancagnolo 16, V Grassi 149, V Gratchev 123, H M Gray 30, E Graziani 135, Z D Greenwood 79, K Gregersen 78, I M Gregor 42, P Grenier 144, J Griffiths 8, A A Grillo 138, K Grimm 72, S Grinstein 12, Ph Gris 34, J-F Grivaz 117, J P Grohs 44, A Grohsjean 42, E Gross 173, J Grosse-Knetter 54, G C Grossi 79, Z J Grout 150, L Guan 193, J Guenther 128, F Guescini 49, D Guest 177, O Gueta 154, E Guido 50,200, T Guillemin 117, S Guindon 2, U Gul 53, C Gumpert 44, J Guo 196, S Gupta 120, P Gutierrez 113, N G Gutierrez Ortiz 53, C Gutschow 44, C Guyot 137, C Gwenlan 120, C B Gwilliam 74, A Haas 110, C Haber 15, H K Hadavand 8, N Haddad 223, P Haefner 21, S Hageböck 21, Z Hajduk 39, H Hakobyan 178, M Haleem 42, J Haley 114, D Hall 120, G Halladjian 90, G D Hallewell 85, K Hamacher 176, P Hamal 115, K Hamano 170, M Hamer 54, A Hamilton 146, S Hamilton 162, G N Hamity 226, P G Hamnett 42, L Han 193, K Hanagaki 118, K Hanawa 156, M Hance 15, P Hanke 58, R Hann 137, J B Hansen 36, J D Hansen 36, M C Hansen 21, P H Hansen 36, K Hara 161, A S Hard 174, T Harenberg 176, F Hariri 117, S Harkusha 92, R D Harrington 46, P F Harrison 171, F Hartjes 107, M Hasegawa 67, S Hasegawa 103, Y Hasegawa 141, A Hasib 113, S Hassani 137, S Haug 17, R Hauser 90, L Hauswald 44, M Havranek 127, C M Hawkes 18, R J Hawkings 30, A D Hawkins 81, T Hayashi 161, D Hayden 90, C P Hays 120, J M Hays 76, H S Hayward 74, S J Haywood 131, S J Head 18, T Heck 83, V Hedberg 81, L Heelan 8, S Heim 122, T Heim 176, B Heinemann 15, L Heinrich 110, J Hejbal 127, L Helary 22, S Hellman 147,227, D Hellmich 21, C Helsens 30, J Henderson 120, R C W Henderson 72, Y Heng 174, C Hengler 42, S Henkelmann 169, A Henrichs 177, A M Henriques Correia 30, S Henrot-Versille 117, G H Herbert 16, Y Hernández Jiménez 168, R Herrberg-Schubert 16, G Herten 48, R Hertenberger 100, L Hervas 30, G G Hesketh 78, N P Hessey 107, J W Hetherly 40, R Hickling 76, E Higón-Rodriguez 168, E Hill 170, J C Hill 28, K H Hiller 42, S J Hillier 18, I Hinchliffe 15, E Hines 122, R R Hinman 15, M Hirose 158, D Hirschbuehl 176, J Hobbs 149, N Hod 107, M C Hodgkinson 140, P Hodgson 140, A Hoecker 30, M R Hoeferkamp 105, F Hoenig 100, M Hohlfeld 83, D Hohn 21, T R Holmes 15, T M Hong 122, L Hooft van Huysduynen 110, W H Hopkins 116, Y Horii 103, A J Horton 143, J-Y Hostachy 55, S Hou 152, A Hoummada 136, J Howard 120, J Howarth 42, M Hrabovsky 115, I Hristova 16, J Hrivnac 117, T Hryn’ova 5, A Hrynevich 93, C Hsu 226, P J Hsu 152, S-C Hsu 139, D Hu 35, Q Hu 193, X Hu 89, Y Huang 42, Z Hubacek 30, F Hubaut 85, F Huegging 21, T B Huffman 120, E W Hughes 35, G Hughes 72, M Huhtinen 30, T A Hülsing 83, N Huseynov 64, J Huston 90, J Huth 57, G Iacobucci 49, G Iakovidis 25, I Ibragimov 142, L Iconomidou-Fayard 117, E Ideal 177, Z Idrissi 223, P Iengo 30, O Igonkina 107, T Iizawa 172, Y Ikegami 66, K Ikematsu 142, M Ikeno 66, Y Ilchenko 31, D Iliadis 155, N Ilic 159, Y Inamaru 67, T Ince 101, P Ioannou 9, M Iodice 135, K Iordanidou 35, V Ippolito 57, A Irles Quiles 168, C Isaksson 167, M Ishino 68, M Ishitsuka 158, R Ishmukhametov 111, C Issever 120, S Istin 19, J M Iturbe Ponce 84, R Iuppa 134,218, J Ivarsson 81, W Iwanski 39, H Iwasaki 66, J M Izen 41, V Izzo 104, S Jabbar 3, B Jackson 122, M Jackson 74, P Jackson 1, M R Jaekel 30, V Jain 2, K Jakobs 48, S Jakobsen 30, T Jakoubek 127, J Jakubek 128, D O Jamin 152, D K Jana 79, E Jansen 78, R W Jansky 62, J Janssen 21, M Janus 171, G Jarlskog 81, N Javadov 65, T Javůrek 48, L Jeanty 15, J Jejelava 51, G-Y Jeng 151, D Jennens 88, P Jenni 48, J Jentzsch 43, C Jeske 171, S Jézéquel 5, H Ji 174, J Jia 149, Y Jiang 193, S Jiggins 78, J Jimenez Pena 168, S Jin 33, A Jinaru 26, O Jinnouchi 158, M D Joergensen 36, P Johansson 140, K A Johns 7, K Jon-And 147,227, G Jones 171, R W L Jones 72, T J Jones 74, J Jongmanns 58, P M Jorge 126,211, K D Joshi 84, J Jovicevic 160, X Ju 174, C A Jung 43, P Jussel 62, A Juste Rozas 12, M Kaci 168, A Kaczmarska 39, M Kado 117, H Kagan 111, M Kagan 144, S J Kahn 85, E Kajomovitz 45, C W Kalderon 120, S Kama 40, A Kamenshchikov 130, N Kanaya 156, M Kaneda 30, S Kaneti 28, V A Kantserov 98, J Kanzaki 66, B Kaplan 110, A Kapliy 31, D Kar 53, K Karakostas 10, A Karamaoun 3, N Karastathis 107, M J Kareem 54, M Karnevskiy 83, S N Karpov 65, Z M Karpova 65, K Karthik 110, V Kartvelishvili 72, A N Karyukhin 130, L Kashif 174, R D Kass 111, A Kastanas 14, Y Kataoka 156, A Katre 49, J Katzy 42, K Kawagoe 70, T Kawamoto 156, G Kawamura 54, S Kazama 156, V F Kazanin 109, M Y Kazarinov 65, R Keeler 170, R Kehoe 40, M Keil 54, J S Keller 42, J J Kempster 77, H Keoshkerian 84, O Kepka 127, B P Kerševan 75, S Kersten 176, R A Keyes 87, F Khalil-zada 11, H Khandanyan 147,227, A Khanov 114, AG Kharlamov 109, T J Khoo 28, G Khoriauli 21, V Khovanskiy 97, E Khramov 65, J Khubua 201, H Y Kim 8, H Kim 147,227, S H Kim 161, Y Kim 31, N Kimura 155, O M Kind 16, B T King 74, M King 168, R S B King 120, S B King 169, J Kirk 131, A E Kiryunin 101, T Kishimoto 67, D Kisielewska 38, F Kiss 48, K Kiuchi 161, O Kivernyk 137, E Kladiva 224, M H Klein 35, M Klein 74, U Klein 74, K Kleinknecht 83, P Klimek 147,227, A Klimentov 25, R Klingenberg 43, J A Klinger 84, T Klioutchnikova 30, P F Klok 106, E-E Kluge 58, P Kluit 107, S Kluth 101, E Kneringer 62, E B F G Knoops 85, A Knue 53, D Kobayashi 158, T Kobayashi 156, M Kobel 44, M Kocian 144, P Kodys 129, T Koffas 29, E Koffeman 107, L A Kogan 120, S Kohlmann 176, Z Kohout 128, T Kohriki 66, T Koi 144, H Kolanoski 16, I Koletsou 5, A A Komar 96, Y Komori 156, T Kondo 66, N Kondrashova 42, K Köneke 48, A C König 106, S König 83, T Kono 66, R Konoplich 110, N Konstantinidis 78, R Kopeliansky 153, S Koperny 38, L Köpke 83, A K Kopp 48, K Korcyl 39, K Kordas 155, A Korn 78, A A Korol 109, I Korolkov 12, E V Korolkova 140, O Kortner 101, S Kortner 101, T Kosek 129, V V Kostyukhin 21, V M Kotov 65, A Kotwal 45, A Kourkoumeli-Charalampidi 155, C Kourkoumelis 9, V Kouskoura 25, A Koutsman 160, R Kowalewski 170, T Z Kowalski 38, W Kozanecki 137, A S Kozhin 130, V A Kramarenko 99, G Kramberger 75, D Krasnopevtsev 98, M W Krasny 80, A Krasznahorkay 30, J K Kraus 21, A Kravchenko 25, S Kreiss 110, M Kretz 203, J Kretzschmar 74, K Kreutzfeldt 52, P Krieger 159, K Krizka 31, K Kroeninger 43, H Kroha 101, J Kroll 122, J Kroseberg 21, J Krstic 13, U Kruchonak 65, H Krüger 21, N Krumnack 64, Z V Krumshteyn 65, A Kruse 174, M C Kruse 45, M Kruskal 22, T Kubota 88, H Kucuk 78, S Kuday 181, S Kuehn 48, A Kugel 203, F Kuger 175, A Kuhl 138, T Kuhl 42, V Kukhtin 65, Y Kulchitsky 92, S Kuleshov 192, M Kuna 133,217, T Kunigo 68, A Kupco 127, H Kurashige 67, Y A Kurochkin 92, R Kurumida 67, V Kus 127, E S Kuwertz 148, M Kuze 158, J Kvita 115, T Kwan 170, D Kyriazopoulos 140, A La Rosa 49, J L La Rosa Navarro 188, L La Rotonda 37,198, C Lacasta 168, F Lacava 133,217, J Lacey 29, H Lacker 16, D Lacour 80, V R Lacuesta 168, E Ladygin 65, R Lafaye 5, B Laforge 80, T Lagouri 177, S Lai 48, L Lambourne 78, S Lammers 61, C L Lampen 7, W Lampl 7, E Lançon 137, U Landgraf 48, M P J Landon 76, V S Lang 58, J C Lange 12, A J Lankford 164, F Lanni 25, K Lantzsch 30, S Laplace 80, C Lapoire 30, J F Laporte 137, T Lari 91, F Lasagni Manghi 20,185, M Lassnig 30, P Laurelli 47, W Lavrijsen 15, A T Law 138, P Laycock 74, O Le Dortz 80, E Le Guirriec 85, E Le Menedeu 12, M LeBlanc 170, T LeCompte 6, F Ledroit-Guillon 55, C A Lee 225, S C Lee 152, L Lee 1, G Lefebvre 80, M Lefebvre 170, F Legger 100, C Leggett 15, A Lehan 74, G Lehmann Miotto 30, X Lei 7, W A Leight 29, A Leisos 155, A G Leister 177, M A L Leite 188, R Leitner 129, D Lellouch 173, B Lemmer 54, K J C Leney 78, T Lenz 21, G Lenzen 176, B Lenzi 30, R Leone 7, S Leone 124,210, C Leonidopoulos 46, S Leontsinis 10, C Leroy 95, C G Lester 28, M Levchenko 123, J Levêque 5, D Levin 89, L J Levinson 173, M Levy 18, A Lewis 120, A M Leyko 21, M Leyton 41, B Li 193, H Li 149, H L Li 31, L Li 45, L Li 196, S Li 45, Y Li 194, Z Liang 138, H Liao 34, B Liberti 134, A Liblong 159, P Lichard 30, K Lie 166, J Liebal 21, W Liebig 14, C Limbach 21, A Limosani 151, S C Lin 152, T H Lin 83, F Linde 107, B E Lindquist 149, J T Linnemann 90, E Lipeles 122, A Lipniacka 14, M Lisovyi 42, T M Liss 166, D Lissauer 25, A Lister 169, A M Litke 138, B Liu 152, D Liu 152, J Liu 85, J B Liu 193, K Liu 85, L Liu 166, M Liu 45, M Liu 193, Y Liu 193, M Livan 121,209, A Lleres 55, J Llorente Merino 82, S L Lloyd 76, F Lo Sterzo 152, E Lobodzinska 42, P Loch 7, W S Lockman 138, F K Loebinger 84, A E Loevschall-Jensen 36, A Loginov 177, T Lohse 16, K Lohwasser 42, M Lokajicek 127, B A Long 22, J D Long 89, R E Long 72, K A Looper 111, L Lopes 126, D Lopez Mateos 57, B Lopez Paredes 140, I Lopez Paz 12, J Lorenz 100, N Lorenzo Martinez 61, M Losada 163, P Loscutoff 15, P J Lösel 100, X Lou 33, A Lounis 117, J Love 6, P A Love 72, N Lu 89, H J Lubatti 139, C Luci 133,217, A Lucotte 55, F Luehring 61, W Lukas 62, L Luminari 133, O Lundberg 147,227, B Lund-Jensen 148, M Lungwitz 83, D Lynn 25, R Lysak 127, E Lytken 81, H Ma 25, L L Ma 195, G Maccarrone 47, A Macchiolo 101, C M Macdonald 140, J Machado Miguens 122,211, D Macina 30, D Madaffari 85, R Madar 34, H J Maddocks 72, W F Mader 44, A Madsen 167, S Maeland 14, T Maeno 25, A Maevskiy 99, E Magradze 54, K Mahboubi 48, J Mahlstedt 107, C Maiani 137, C Maidantchik 24, A A Maier 101, T Maier 100, A Maio 126,211,213, S Majewski 116, Y Makida 66, N Makovec 117, B Malaescu 80, Pa Malecki 39, V P Maleev 123, F Malek 55, U Mallik 63, D Malon 6, C Malone 144, S Maltezos 10, V M Malyshev 109, S Malyukov 30, J Mamuzic 42, G Mancini 47, B Mandelli 30, L Mandelli 91, I Mandić 75, R Mandrysch 63, J Maneira 126,211, A Manfredini 101, L Manhaes de Andrade Filho 186, J Manjarres Ramos 228, A Mann 100, P M Manning 138, A Manousakis-Katsikakis 9, B Mansoulie 137, R Mantifel 87, M Mantoani 54, L Mapelli 30, L March 226, G Marchiori 80, M Marcisovsky 127, C P Marino 170, M Marjanovic 13, F Marroquim 24, S P Marsden 84, Z Marshall 15, L F Marti 17, S Marti-Garcia 168, B Martin 90, T A Martin 171, V J Martin 46, B Martin dit Latour 14, M Martinez 12, S Martin-Haugh 131, V S Martoiu 26, A C Martyniuk 78, M Marx 139, F Marzano 133, A Marzin 30, L Masetti 83, T Mashimo 156, R Mashinistov 96, J Masik 84, A L Maslennikov 109, I Massa 20,185, L Massa 20,185, N Massol 5, P Mastrandrea 149, A Mastroberardino 37,198, T Masubuchi 156, P Mättig 176, J Mattmann 83, J Maurer 26, S J Maxfield 74, D A Maximov 109, R Mazini 152, S M Mazza 91,207, L Mazzaferro 134,218, G Mc Goldrick 159, S P Mc Kee 89, A McCarn 89, R L McCarthy 149, T G McCarthy 29, N A McCubbin 131, K W McFarlane 56, J A Mcfayden 78, G Mchedlidze 54, S J McMahon 131, R A McPherson 170, M Medinnis 42, S Meehan 146, S Mehlhase 100, A Mehta 74, K Meier 58, C Meineck 100, B Meirose 41, B R Mellado Garcia 226, F Meloni 17, A Mengarelli 20,185, S Menke 101, E Meoni 162, K M Mercurio 57, S Mergelmeyer 21, P Mermod 49, L Merola 104,208, C Meroni 91, F S Merritt 31, A Messina 217, J Metcalfe 25, A S Mete 164, C Meyer 83, C Meyer 122, J-P Meyer 137, J Meyer 107, R P Middleton 131, S Miglioranzi 230, L Mijović 21, G Mikenberg 173, M Mikestikova 127, M Mikuž 75, M Milesi 88, A Milic 30, D W Miller 31, C Mills 46, A Milov 173, D A Milstead 147,227, A A Minaenko 130, Y Minami 156, I A Minashvili 65, A I Mincer 110, B Mindur 38, M Mineev 65, Y Ming 174, L M Mir 12, T Mitani 172, J Mitrevski 100, V A Mitsou 168, A Miucci 49, P S Miyagawa 140, J U Mjörnmark 81, T Moa 147,227, K Mochizuki 85, S Mohapatra 35, W Mohr 48, S Molander 147,227, R Moles-Valls 168, K Mönig 42, C Monini 55, J Monk 36, E Monnier 85, J Montejo Berlingen 12, F Monticelli 71, S Monzani 133,217, R W Moore 3, N Morange 117, D Moreno 163, M Moreno Llácer 54, P Morettini 50, M Morgenstern 44, M Morii 57, M Morinaga 156, V Morisbak 119, S Moritz 83, A K Morley 148, G Mornacchi 30, J D Morris 76, S S Mortensen 36, A Morton 53, L Morvaj 103, H G Moser 101, M Mosidze 51,201, J Moss 111, K Motohashi 158, R Mount 144, E Mountricha 25, S V Mouraviev 96, E J W Moyse 86, S Muanza 85, R D Mudd 18, F Mueller 101, J Mueller 125, K Mueller 21, R S P Mueller 100, T Mueller 28, D Muenstermann 49, P Mullen 53, Y Munwes 154, J A Murillo Quijada 18, W J Murray 171,131, H Musheghyan 54, E Musto 153, A G Myagkov 130, M Myska 128, O Nackenhorst 54, J Nadal 54, K Nagai 120, R Nagai 158, Y Nagai 85, K Nagano 66, A Nagarkar 111, Y Nagasaka 59, K Nagata 161, M Nagel 101, E Nagy 85, A M Nairz 30, Y Nakahama 30, K Nakamura 66, T Nakamura 156, I Nakano 112, H Namasivayam 41, G Nanava 21, R F Naranjo Garcia 42, R Narayan 202, T Naumann 42, G Navarro 163, R Nayyar 7, H A Neal 89, P Yu Nechaeva 96, T J Neep 84, P D Nef 144, A Negri 121,209, M Negrini 20, S Nektarijevic 106, C Nellist 117, A Nelson 164, S Nemecek 127, P Nemethy 110, A A Nepomuceno 24, M Nessi 30, M S Neubauer 166, M Neumann 176, R M Neves 110, P Nevski 25, P R Newman 18, D H Nguyen 6, R B Nickerson 120, R Nicolaidou 137, B Nicquevert 30, J Nielsen 138, N Nikiforou 35, A Nikiforov 16, V Nikolaenko 130, I Nikolic-Audit 80, K Nikolopoulos 18, J K Nilsen 119, P Nilsson 25, Y Ninomiya 156, A Nisati 133, R Nisius 101, T Nobe 158, M Nomachi 118, I Nomidis 29, T Nooney 76, S Norberg 113, M Nordberg 30, O Novgorodova 44, S Nowak 101, M Nozaki 66, L Nozka 115, K Ntekas 10, G Nunes Hanninger 88, T Nunnemann 100, E Nurse 78, F Nuti 88, B J O’Brien 46, F O’grady 7, D C O’Neil 143, V O’Shea 53, F G Oakham 29, H Oberlack 101, T Obermann 21, J Ocariz 80, A Ochi 67, I Ochoa 78, S Oda 70, S Odaka 66, H Ogren 61, A Oh 84, S H Oh 45, C C Ohm 15, H Ohman 167, H Oide 30, W Okamura 118, H Okawa 161, Y Okumura 31, T Okuyama 156, A Olariu 26, S A Olivares Pino 46, D Oliveira Damazio 25, E Oliver Garcia 168, A Olszewski 39, J Olszowska 39, A Onofre 126,214, P U E Onyisi 31, C J Oram 160, M J Oreglia 31, Y Oren 154, D Orestano 135,219, N Orlando 155, C Oropeza Barrera 53, R S Orr 159, B Osculati 50,200, R Ospanov 84, G Otero y Garzon 27, H Otono 70, M Ouchrif 222, E A Ouellette 170, F Ould-Saada 119, A Ouraou 137, K P Oussoren 107, Q Ouyang 33, A Ovcharova 15, M Owen 53, R E Owen 18, V E Ozcan 19, N Ozturk 8, K Pachal 120, A Pacheco Pages 12, C Padilla Aranda 12, M Pagáčová 48, S Pagan Griso 15, E Paganis 140, C Pahl 101, F Paige 25, P Pais 86, K Pajchel 119, G Palacino 228, S Palestini 30, M Palka 199, D Pallin 34, A Palma 126,211, Y B Pan 174, E Panagiotopoulou 10, C E Pandini 80, J G Panduro Vazquez 77, P Pani 147,227, S Panitkin 25, L Paolozzi 134,218, Th D Papadopoulou 10, K Papageorgiou 155, A Paramonov 6, D Paredes Hernandez 155, M A Parker 28, K A Parker 140, F Parodi 50,200, J A Parsons 35, U Parzefall 48, E Pasqualucci 133, S Passaggio 50, F Pastore 135,219, Fr Pastore 77, G Pásztor 29, S Pataraia 176, N D Patel 151, J R Pater 84, T Pauly 30, J Pearce 170, B Pearson 113, L E Pedersen 36, M Pedersen 119, S Pedraza Lopez 168, R Pedro 126,211, S V Peleganchuk 109, D Pelikan 167, H Peng 193, B Penning 31, J Penwell 61, D V Perepelitsa 25, E Perez Codina 160, M T Pérez García-Estañ 168, L Perini 91,207, H Pernegger 30, S Perrella 104,208, R Peschke 42, V D Peshekhonov 65, K Peters 30, R F Y Peters 84, B A Petersen 30, T C Petersen 36, E Petit 42, A Petridis 147,227, C Petridou 155, E Petrolo 133, F Petrucci 135,219, N E Pettersson 158, R Pezoa 192, P W Phillips 131, G Piacquadio 144, E Pianori 171, A Picazio 49, E Piccaro 76, M Piccinini 20,185, M A Pickering 120, R Piegaia 27, D T Pignotti 111, J E Pilcher 31, A D Pilkington 78, J Pina 126,211,213, M Pinamonti 165,230, J L Pinfold 3, A Pingel 36, B Pinto 126, S Pires 80, M Pitt 173, C Pizio 91,207, L Plazak 145, M-A Pleier 25, V Pleskot 129, E Plotnikova 65, P Plucinski 147,227, D Pluth 64, R Poettgen 83, L Poggioli 117, D Pohl 21, G Polesello 121, A Policicchio 37,198, R Polifka 159, A Polini 20, C S Pollard 53, V Polychronakos 25, K Pommès 30, L Pontecorvo 133, B G Pope 90, G A Popeneciu 189, D S Popovic 13, A Poppleton 30, S Pospisil 128, K Potamianos 15, I N Potrap 65, C J Potter 150, C T Potter 116, G Poulard 30, J Poveda 30, V Pozdnyakov 65, P Pralavorio 85, A Pranko 15, S Prasad 30, S Prell 64, D Price 84, L E Price 6, M Primavera 73, S Prince 87, M Proissl 46, K Prokofiev 205, F Prokoshin 192, E Protopapadaki 137, S Protopopescu 25, J Proudfoot 6, M Przybycien 38, E Ptacek 116, D Puddu 135,219, E Pueschel 86, D Puldon 149, M Purohit 25, P Puzo 117, J Qian 89, G Qin 53, Y Qin 84, A Quadt 54, D R Quarrie 15, W B Quayle 165,229, M Queitsch-Maitland 84, D Quilty 53, S Raddum 119, V Radeka 25, V Radescu 42, S K Radhakrishnan 149, P Radloff 116, P Rados 88, F Ragusa 91,207, G Rahal 179, S Rajagopalan 25, M Rammensee 30, C Rangel-Smith 167, F Rauscher 100, S Rave 83, T Ravenscroft 53, M Raymond 30, A L Read 119, N P Readioff 74, D M Rebuzzi 121,209, A Redelbach 175, G Redlinger 25, R Reece 138, K Reeves 41, L Rehnisch 16, H Reisin 27, M Relich 164, C Rembser 30, H Ren 33, A Renaud 117, M Rescigno 133, S Resconi 91, O L Rezanova 109, P Reznicek 129, R Rezvani 95, R Richter 101, S Richter 78, E Richter-Was 199, O Ricken 21, M Ridel 80, P Rieck 16, C J Riegel 176, J Rieger 54, M Rijssenbeek 149, A Rimoldi 121,209, L Rinaldi 20, B Ristić 49, E Ritsch 62, I Riu 12, F Rizatdinova 114, E Rizvi 76, S H Robertson 87, A Robichaud-Veronneau 87, D Robinson 28, J E M Robinson 84, A Robson 53, C Roda 124,210, S Roe 30, O Røhne 119, S Rolli 162, A Romaniouk 98, M Romano 20,185, S M Romano Saez 34, E Romero Adam 168, N Rompotis 139, M Ronzani 48, L Roos 80, E Ros 168, S Rosati 133, K Rosbach 48, P Rose 138, P L Rosendahl 14, O Rosenthal 142, V Rossetti 147,227, E Rossi 104,208, L P Rossi 50, R Rosten 139, M Rotaru 26, I Roth 173, J Rothberg 139, D Rousseau 117, C R Royon 137, A Rozanov 85, Y Rozen 153, X Ruan 226, F Rubbo 144, I Rubinskiy 42, V I Rud 99, C Rudolph 44, M S Rudolph 159, F Rühr 48, A Ruiz-Martinez 30, Z Rurikova 48, N A Rusakovich 65, A Ruschke 100, H L Russell 139, J P Rutherfoord 7, N Ruthmann 48, Y F Ryabov 123, M Rybar 129, G Rybkin 117, N C Ryder 120, A F Saavedra 151, G Sabato 107, S Sacerdoti 27, A Saddique 3, H F-W Sadrozinski 138, R Sadykov 65, F Safai Tehrani 133, M Saimpert 137, H Sakamoto 156, Y Sakurai 172, G Salamanna 135,219, A Salamon 134, M Saleem 113, D Salek 107, P H Sales De Bruin 139, D Salihagic 101, A Salnikov 144, J Salt 168, D Salvatore 37,198, F Salvatore 150, A Salvucci 106, A Salzburger 30, D Sampsonidis 155, A Sanchez 104,208, J Sánchez 168, V Sanchez Martinez 168, H Sandaker 14, R L Sandbach 76, H G Sander 83, M P Sanders 100, M Sandhoff 176, C Sandoval 163, R Sandstroem 101, D P C Sankey 131, M Sannino 50,200, A Sansoni 47, C Santoni 34, R Santonico 134,218, H Santos 126, I Santoyo Castillo 150, K Sapp 125, A Sapronov 65, J G Saraiva 126,213, B Sarrazin 21, O Sasaki 66, Y Sasaki 156, K Sato 161, G Sauvage 5, E Sauvan 5, G Savage 77, P Savard 156, C Sawyer 120, L Sawyer 79, J Saxon 31, C Sbarra 20, A Sbrizzi 20,185, T Scanlon 78, D A Scannicchio 164, M Scarcella 151, V Scarfone 37,198, J Schaarschmidt 173, P Schacht 101, D Schaefer 30, R Schaefer 42, J Schaeffer 83, S Schaepe 21, S Schaetzel 202, U Schäfer 83, A C Schaffer 117, D Schaile 100, R D Schamberger 149, V Scharf 58, V A Schegelsky 123, D Scheirich 129, M Schernau 164, C Schiavi 50,200, C Schillo 48, M Schioppa 37,198, S Schlenker 30, E Schmidt 48, K Schmieden 30, C Schmitt 202, S Schmitt 58, S Schmitt 42, B Schneider 160, Y J Schnellbach 74, U Schnoor 44, L Schoeffel 137, A Schoening 202, B D Schoenrock 90, E Schopf 21, A L S Schorlemmer 54, M Schott 83, D Schouten 160, J Schovancova 8, S Schramm 159, M Schreyer 175, C Schroeder 83, N Schuh 83, M J Schultens 21, H-C Schultz-Coulon 58, H Schulz 16, M Schumacher 48, B A Schumm 138, Ph Schune 137, C Schwanenberger 84, A Schwartzman 144, T A Schwarz 89, Ph Schwegler 101, Ph Schwemling 137, R Schwienhorst 90, J Schwindling 137, T Schwindt 21, M Schwoerer 5, F G Sciacca 17, E Scifo 117, G Sciolla 23, F Scuri 124,210, F Scutti 21, J Searcy 89, G Sedov 42, E Sedykh 123, P Seema 21, S C Seidel 105, A Seiden 138, F Seifert 128, J M Seixas 24, G Sekhniaidze 104, S J Sekula 40, K E Selbach 46, D M Seliverstov 123, N Semprini-Cesari 20,185, C Serfon 30, L Serin 117, L Serkin 165,229, T Serre 85, R Seuster 160, H Severini 113, T Sfiligoj 75, F Sforza 101, A Sfyrla 30, E Shabalina 54, M Shamim 116, L Y Shan 33, R Shang 166, J T Shank 22, M Shapiro 15, P B Shatalov 97, K Shaw 165,229, A Shcherbakova 147,227, C Y Shehu 150, P Sherwood 78, L Shi 152, S Shimizu 67, C O Shimmin 164, M Shimojima 102, M Shiyakova 65, A Shmeleva 96, D Shoaleh Saadi 95, M J Shochet 31, S Shojaii 91,207, S Shrestha 111, E Shulga 98, M A Shupe 7, S Shushkevich 42, P Sicho 127, O Sidiropoulou 175, D Sidorov 114, A Sidoti 20,185, F Siegert 44, Dj Sijacki 13, J Silva 126,213, Y Silver 154, S B Silverstein 147, V Simak 128, O Simard 5, Lj Simic 13, S Simion 117, E Simioni 83, B Simmons 78, D Simon 34, R Simoniello 91,207, P Sinervo 159, N B Sinev 116, G Siragusa 175, A N Sisakyan 65, S Yu Sivoklokov 99, J Sjölin 147,227, T B Sjursen 14, M B Skinner 72, H P Skottowe 57, P Skubic 113, M Slater 18, T Slavicek 128, M Slawinska 107, K Sliwa 162, V Smakhtin 173, B H Smart 46, L Smestad 14, S Yu Smirnov 98, Y Smirnov 98, L N Smirnova 99, O Smirnova 81, M N K Smith 35, M Smizanska 72, K Smolek 128, A A Snesarev 96, G Snidero 76, S Snyder 25, R Sobie 170, F Socher 44, A Soffer 154, D A Soh 152, C A Solans 30, M Solar 128, J Solc 128, E Yu Soldatov 98, U Soldevila 168, A A Solodkov 130, A Soloshenko 65, O V Solovyanov 130, V Solovyev 123, P Sommer 48, H Y Song 193, N Soni 1, A Sood 15, A Sopczak 128, B Sopko 128, V Sopko 128, V Sorin 12, D Sosa 202, M Sosebee 8, C L Sotiropoulou 124,210, R Soualah 165,230, P Soueid 95, A M Soukharev 109, D South 42, S Spagnolo 73,206, M Spalla 124,210, F Spanò 77, W R Spearman 57, F Spettel 101, R Spighi 20, G Spigo 30, L A Spiller 88, M Spousta 129, T Spreitzer 159, R D St Denis 53, S Staerz 44, J Stahlman 122, R Stamen 58, S Stamm 16, E Stanecka 39, C Stanescu 135, M Stanescu-Bellu 42, M M Stanitzki 42, S Stapnes 119, E A Starchenko 130, J Stark 55, P Staroba 127, P Starovoitov 42, R Staszewski 39, P Stavina 145, P Steinberg 25, B Stelzer 143, H J Stelzer 30, O Stelzer-Chilton 160, H Stenzel 52, S Stern 101, G A Stewart 53, J A Stillings 21, M C Stockton 87, M Stoebe 87, G Stoicea 26, P Stolte 54, S Stonjek 101, A R Stradling 8, A Straessner 44, M E Stramaglia 17, J Strandberg 148, S Strandberg 147,227, A Strandlie 119, E Strauss 144, M Strauss 113, P Strizenec 224, R Ströhmer 175, D M Strom 116, R Stroynowski 40, A Strubig 106, S A Stucci 17, B Stugu 14, N A Styles 42, D Su 144, J Su 125, R Subramaniam 79, A Succurro 12, Y Sugaya 118, C Suhr 108, M Suk 128, V V Sulin 96, S Sultansoy 182, T Sumida 68, S Sun 57, X Sun 33, J E Sundermann 48, K Suruliz 150, G Susinno 37,198, M R Sutton 150, S Suzuki 66, Y Suzuki 66, M Svatos 127, S Swedish 169, M Swiatlowski 144, I Sykora 145, T Sykora 129, D Ta 90, C Taccini 135,219, K Tackmann 42, J Taenzer 159, A Taffard 164, R Tafirout 160, N Taiblum 154, H Takai 25, R Takashima 69, H Takeda 67, T Takeshita 141, Y Takubo 66, M Talby 85, A A Talyshev 108, J Y C Tam 175, K G Tan 88, J Tanaka 156, R Tanaka 117, S Tanaka 132, S Tanaka 66, B B Tannenwald 111, N Tannoury 21, S Tapprogge 83, S Tarem 153, F Tarrade 29, G F Tartarelli 91, P Tas 129, M Tasevsky 127, T Tashiro 68, E Tassi 37,198, A Tavares Delgado 126,211, Y Tayalati 222, F E Taylor 94, G N Taylor 88, W Taylor 228, F A Teischinger 30, M Teixeira Dias Castanheira 76, P Teixeira-Dias 77, K K Temming 48, H Ten Kate 30, P K Teng 152, J J Teoh 118, F Tepel 176, S Terada 66, K Terashi 156, J Terron 82, S Terzo 101, M Testa 47, R J Teuscher 159, J Therhaag 21, T Theveneaux-Pelzer 34, J P Thomas 18, J Thomas-Wilsker 77, E N Thompson 35, P D Thompson 18, R J Thompson 84, A S Thompson 53, L A Thomsen 36, E Thomson 122, M Thomson 28, R P Thun 89, M J Tibbetts 15, R E Ticse Torres 85, V O Tikhomirov 96, Yu A Tikhonov 109, S Timoshenko 98, E Tiouchichine 85, P Tipton 177, S Tisserant 85, T Todorov 5, S Todorova-Nova 129, J Tojo 70, S Tokár 145, K Tokushuku 66, K Tollefson 90, E Tolley 57, L Tomlinson 84, M Tomoto 103, L Tompkins 144, K Toms 105, E Torrence 116, H Torres 143, E Torró Pastor 168, J Toth 84, F Touchard 85, D R Tovey 140, T Trefzger 175, L Tremblet 30, A Tricoli 30, I M Trigger 160, S Trincaz-Duvoid 80, M F Tripiana 12, W Trischuk 159, B Trocmé 55, C Troncon 91, M Trottier-McDonald 15, M Trovatelli 135,219, P True 90, M Trzebinski 39, A Trzupek 39, C Tsarouchas 30, J C-L Tseng 120, P V Tsiareshka 92, D Tsionou 155, G Tsipolitis 10, N Tsirintanis 9, S Tsiskaridze 12, V Tsiskaridze 48, E G Tskhadadze 51, I I Tsukerman 97, V Tsulaia 15, S Tsuno 66, D Tsybychev 149, A Tudorache 26, V Tudorache 26, A N Tuna 122, S A Tupputi 20,185, S Turchikhin 99, D Turecek 128, R Turra 91,207, A J Turvey 40, P M Tuts 35, A Tykhonov 49, M Tylmad 147,227, M Tyndel 131, I Ueda 156, R Ueno 29, M Ughetto 147,227, M Ugland 14, M Uhlenbrock 21, F Ukegawa 161, G Unal 30, A Undrus 25, G Unel 164, F C Ungaro 48, Y Unno 66, C Unverdorben 100, J Urban 224, P Urquijo 88, P Urrejola 83, G Usai 8, A Usanova 62, L Vacavant 85, V Vacek 128, B Vachon 87, C Valderanis 83, N Valencic 107, S Valentinetti 20,185, A Valero 168, L Valery 12, S Valkar 129, E Valladolid Gallego 168, S Vallecorsa 49, J A Valls Ferrer 168, W Van Den Wollenberg 107, P C Van Der Deijl 107, R van der Geer 107, H van der Graaf 107, R Van Der Leeuw 107, N van Eldik 153, P van Gemmeren 6, J Van Nieuwkoop 143, I van Vulpen 107, M C van Woerden 30, M Vanadia 133,217, W Vandelli 30, R Vanguri 122, A Vaniachine 6, F Vannucci 80, G Vardanyan 178, R Vari 133, E W Varnes 7, T Varol 40, D Varouchas 80, A Vartapetian 8, K E Varvell 151, F Vazeille 34, T Vazquez Schroeder 87, J Veatch 7, F Veloso 126,212, T Velz 21, S Veneziano 133, A Ventura 73,206, D Ventura 86, M Venturi 170, N Venturi 159, A Venturini 23, V Vercesi 121, M Verducci 133,217, W Verkerke 107, J C Vermeulen 107, A Vest 44, M C Vetterli 143, O Viazlo 81, I Vichou 166, T Vickey 140, O E Vickey Boeriu 140, G H A Viehhauser 120, S Viel 15, R Vigne 30, M Villa 20,185, M Villaplana Perez 91,207, E Vilucchi 47, M G Vincter 29, V B Vinogradov 65, I Vivarelli 150, F Vives Vaque 3, S Vlachos 10, D Vladoiu 100, M Vlasak 128, M Vogel 32, P Vokac 128, G Volpi 124,210, M Volpi 88, H von der Schmitt 101, H von Radziewski 48, E von Toerne 21, V Vorobel 129, K Vorobev 98, M Vos 168, R Voss 30, J H Vossebeld 74, N Vranjes 13, M Vranjes Milosavljevic 13, V Vrba 127, M Vreeswijk 107, R Vuillermet 30, I Vukotic 31, Z Vykydal 128, P Wagner 21, W Wagner 176, H Wahlberg 71, S Wahrmund 44, J Wakabayashi 103, J Walder 72, R Walker 100, W Walkowiak 142, C Wang 194, F Wang 174, H Wang 15, H Wang 40, J Wang 42, J Wang 33, K Wang 87, R Wang 6, S M Wang 152, T Wang 21, X Wang 177, C Wanotayaroj 116, A Warburton 87, C P Ward 28, D R Wardrope 78, M Warsinsky 48, A Washbrook 46, C Wasicki 42, P M Watkins 18, A T Watson 18, I J Watson 151, M F Watson 18, G Watts 139, S Watts 84, B M Waugh 78, S Webb 84, M S Weber 17, S W Weber 175, J S Webster 31, A R Weidberg 120, B Weinert 61, J Weingarten 54, C Weiser 48, H Weits 107, P S Wells 30, T Wenaus 25, T Wengler 30, S Wenig 30, N Wermes 21, M Werner 48, P Werner 30, M Wessels 58, J Wetter 162, K Whalen 29, A M Wharton 72, A White 8, M J White 1, R White 192, S White 124,210, D Whiteson 164, F J Wickens 131, W Wiedenmann 174, M Wielers 131, P Wienemann 21, C Wiglesworth 36, L A M Wiik-Fuchs 21, A Wildauer 101, H G Wilkens 30, H H Williams 122, S Williams 107, C Willis 90, S Willocq 86, A Wilson 89, J A Wilson 18, I Wingerter-Seez 5, F Winklmeier 116, B T Winter 21, M Wittgen 144, J Wittkowski 100, S J Wollstadt 83, M W Wolter 39, H Wolters 126,212, B K Wosiek 39, J Wotschack 30, M J Woudstra 84, K W Wozniak 39, M Wu 55, M Wu 31, S L Wu 174, X Wu 49, Y Wu 89, T R Wyatt 84, B M Wynne 46, S Xella 36, D Xu 193, L Xu 33, B Yabsley 151, S Yacoob 225, R Yakabe 67, M Yamada 66, Y Yamaguchi 118, A Yamamoto 66, S Yamamoto 156, T Yamanaka 156, K Yamauchi 103, Y Yamazaki 67, Z Yan 22, H Yang 196, H Yang 174, Y Yang 152, L Yao 33, W-M Yao 15, Y Yasu 66, E Yatsenko 42, K H Yau Wong 21, J Ye 40, S Ye 25, I Yeletskikh 65, A L Yen 57, E Yildirim 42, K Yorita 172, R Yoshida 6, K Yoshihara 122, C Young 144, C J S Young 30, S Youssef 22, D R Yu 15, J Yu 8, J M Yu 89, J Yu 114, L Yuan 67, A Yurkewicz 108, I Yusuff 28, B Zabinski 39, R Zaidan 63, A M Zaitsev 130, J Zalieckas 14, A Zaman 149, S Zambito 23, L Zanello 133,217, D Zanzi 88, C Zeitnitz 176, M Zeman 128, A Zemla 38, K Zengel 23, O Zenin 130, T Ženiš 145, D Zerwas 117, D Zhang 89, F Zhang 174, J Zhang 6, L Zhang 48, R Zhang 193, X Zhang 195, Z Zhang 117, X Zhao 40, Y Zhao 195,117, Z Zhao 193, A Zhemchugov 65, J Zhong 120, B Zhou 89, C Zhou 45, L Zhou 35, L Zhou 40, N Zhou 164, C G Zhu 195, H Zhu 33, J Zhu 89, Y Zhu 193, X Zhuang 33, K Zhukov 96, A Zibell 175, D Zieminska 61, N I Zimine 65, C Zimmermann 83, R Zimmermann 21, S Zimmermann 48, Z Zinonos 54, M Zinser 83, M Ziolkowski 142, L Živković 13, G Zobernig 174, A Zoccoli 20,185, M zur Nedden 16, G Zurzolo 104,208, L Zwalinski 30; ATLAS Publications180
PMCID: PMC4528305  PMID: 26269691

Abstract

A search for the Standard Model Higgs boson produced in association with a top-quark pair, tt¯H, is presented. The analysis uses 20.3 fb−1 of pp collision data at s=8TeV, collected with the ATLAS detector at the Large Hadron Collider during 2012. The search is designed for the Hbb¯ decay mode and uses events containing one or two electrons or muons. In order to improve the sensitivity of the search, events are categorised according to their jet and b-tagged jet multiplicities. A neural network is used to discriminate between signal and background events, the latter being dominated by tt¯+jets production. In the single-lepton channel, variables calculated using a matrix element method are included as inputs to the neural network to improve discrimination of the irreducible tt¯+bb¯ background. No significant excess of events above the background expectation is found and an observed (expected) limit of 3.4 (2.2) times the Standard Model cross section is obtained at 95 % confidence level. The ratio of the measured tt¯H signal cross section to the Standard Model expectation is found to be μ=1.5±1.1 assuming a Higgs boson mass of 125GeV.

Introduction

The discovery of a new particle in the search for the Standard Model (SM) [13] Higgs boson [47] at the LHC was reported by the ATLAS [8] and CMS [9] collaborations in July 2012. There is by now clear evidence of this particle in the Hγγ, HZZ()4, HWW()νν and Hττ decay channels, at a mass of around 125  GeV , which have strengthened the SM Higgs boson hypothesis [1015] of the observation. To determine all properties of the new boson experimentally, it is important to study it in as many production and decay modes as possible. In particular, its coupling to heavy quarks is a strong focus of current experimental searches. The SM Higgs boson production in association with a top-quark pair (tt¯H) [1619] with subsequent Higgs decay into bottom quarks (Hbb¯) addresses heavy-quark couplings in both production and decay. Due to the large measured mass of the top quark, the Yukawa coupling of the top quark (yt) is much stronger than that of other quarks. The observation of the tt¯H production mode would allow for a direct measurement of this coupling, to which other Higgs production modes are only sensitive through loop effects. Since yt is expected to be close to unity, it is also argued to be the quantity that might give insight into the scale of new physics [20].

The Hbb¯ final state is the dominant decay mode in the SM for a Higgs boson with a mass of 125 GeV. So far, this decay mode has not yet been observed. While a search for this decay via the gluon fusion process is precluded by the overwhelming multijet background, Higgs boson production in association with a vector boson (VH)  [2123] or a top-quark pair (tt¯) significantly improves the signal-to-background ratio for this decay.

This paper describes a search for the SM Higgs boson in the tt¯H production mode and is designed to be primarily sensitive to the Hbb¯ decay, although other Higgs boson decay modes are also treated as signal. Figure 1a, b show two examples of tree-level diagrams for tt¯H production with a subsequent Hbb¯ decay. A search for the associated production of the Higgs boson with a top-quark pair using several Higgs decay modes (including Hbb¯) has recently been published by the CMS Collaboration [24] quoting a ratio of the measured tt¯H signal cross section to the SM expectation for a Higgs boson mass of 125.6GeV of μ=2.8±1.0.

Fig. 1.

Fig. 1

Representative tree-level Feynman diagrams for the production of the Higgs boson in association with a top-quark pair (tt¯H) and the subsequent decay of the Higgs to bb¯, (a, b) for the main background tt¯+bb¯ (c)

The main source of background to this search comes from top-quark pairs produced in association with additional jets. The dominant source is tt¯+bb¯ production, resulting in the same final-state signature as the signal. An example is shown in Fig. 1c. A second contribution arises from tt¯ production in association with light-quark (u, d, s) or gluon jets, referred to as tt¯+light background, and from tt¯ production in association with c-quarks, referred to as tt¯+cc¯. The size of the second contribution depends on the misidentification rate of the algorithm used to identify b-quark jets.

The search presented in this paper uses 20.3 fb-1 of data collected with the ATLAS detector in pp collisions at s=8TeV during 2012. The analysis focuses on final states containing one or two electrons or muons from the decay of the tt¯ system, referred to as the single-lepton and dilepton channels, respectively. Selected events are classified into exclusive categories, referred to as “regions”, according to the number of reconstructed jets and jets identified as b-quark jets by the b-tagging algorithm (b-tagged jets or b-jets for short). Neural networks (NN) are employed in the regions with a significant expected contribution from the tt¯H signal to separate it from the background. Simpler kinematic variables are used in regions that are depleted of the tt¯H signal, and primarily serve to constrain uncertainties on the background prediction. A combined fit to signal-rich and signal-depleted regions is performed to search for the signal while simultaneously obtaining a background prediction.

ATLAS detector

The ATLAS detector [25] consists of four main subsystems: an inner tracking system, electromagnetic and hadronic calorimeters, and a muon spectrometer. The inner detector provides tracking information from pixel and silicon microstrip detectors in the pseudorapidity1 range |η|<2.5 and from a straw-tube transition radiation tracker covering |η|<2.0, all immersed in a 2 T magnetic field provided by a superconducting solenoid. The electromagnetic sampling calorimeter uses lead and liquid-argon (LAr) and is divided into barrel (|η|<1.475) and end-cap regions (1.375<|η|<3.2). Hadron calorimetry employs the sampling technique, with either scintillator tiles or liquid argon as active media, and with steel, copper, or tungsten as absorber material. The calorimeters cover |η|<4.9. The muon spectrometer measures muon tracks within |η|<2.7 using multiple layers of high-precision tracking chambers located in a toroidal field of approximately 0.5 T and 1 T in the central and end-cap regions of ATLAS, respectively. The muon spectrometer is also instrumented with separate trigger chambers covering |η|<2.4.

Object reconstruction

The main physics objects considered in this search are electrons, muons, jets and b-jets. Whenever possible, the same object reconstruction is used in both the single-lepton and dilepton channels, though some small differences exist and are noted below.

Electron candidates [26] are reconstructed from energy deposits (clusters) in the electromagnetic calorimeter that are matched to a reconstructed track in the inner detector. To reduce the background from non-prompt electrons, i.e. from decays of hadrons (in particular heavy flavour) produced in jets, electron candidates are required to be isolated. In the single-lepton channel, where such background is significant, an η-dependent isolation cut is made, based on the sum of transverse energies of cells around the direction of each candidate, in a cone of size ΔR=(Δϕ)2+(Δη)2=0.2. This energy sum excludes cells associated with the electron and is corrected for leakage from the electron cluster itself. A further isolation cut is made on the scalar sum of the track pT around the electron in a cone of size ΔR=0.3 (referred to as pTcone30). The longitudinal impact parameter of the electron track with respect to the selected event primary vertex defined in Sect. 4, z0, is required to be less than 2 mm. To increase efficiency in the dilepton channel, the electron selection is optimised by using an improved electron identification method based on a likelihood variable [27] and the electron isolation. The ratio of pTcone30 to the pT of the electron is required to be less than 0.12, i.e. pTcone30/pTe< 0.12. The optimised selection improves the efficiency by roughly 7 % per electron.

Muon candidates are reconstructed from track segments in the muon spectrometer, and matched with tracks found in the inner detector [28]. The final muon candidates are refitted using the complete track information from both detector systems, and are required to satisfy |η|<2.5. Additionally, muons are required to be separated by ΔR>0.4 from any selected jet (see below for details on jet reconstruction and selection). Furthermore, muons must satisfy a pT-dependent track-based isolation requirement that has good performance under conditions with a high number of jets from other pp interactions within the same bunch crossing, known as “pileup”, or in boosted configurations where the muon is close to a jet: the track pT scalar sum in a cone of variable size ΔR<10GeV/pTμ around the muon must be less than 5 % of the muon pT. The longitudinal impact parameter of the muon track with respect to the primary vertex, z0, is required to be less than 2 mm.

Jets are reconstructed from calibrated clusters [25, 29] built from energy deposits in the calorimeters, using the anti-kt algorithm [3032] with a radius parameter R=0.4. Prior to jet finding, a local cluster calibration scheme [33, 34] is applied to correct the cluster energies for the effects of dead material, non-compensation and out-of-cluster leakage. The jets are calibrated using energy- and η-dependent calibration factors, derived from simulations, to the mean energy of stable particles inside the jets. Additional corrections to account for the difference between simulation and data are applied [35]. After energy calibration, jets are required to have pT>25GeV and |η|<2.5. To reduce the contamination from low-pT jets due to pileup, the scalar sum of the pT of tracks matched to the jet and originating from the primary vertex must be at least 50 % of the scalar sum of the pT of all tracks matched to the jet. This is referred to as the jet vertex fraction. This criterion is only applied to jets with pT<50GeV and |η|<2.4.

During jet reconstruction, no distinction is made between identified electrons and jet candidates. Therefore, if any of the jets lie ΔR< 0.2 from a selected electron, the single closest jet is discarded in order to avoid double-counting of electrons as jets. After this, electrons which are ΔR< 0.4 from a jet are removed to further suppress background from non-isolated electrons.

Jets are identified as originating from the hadronisation of a b-quark via an algorithm [36] that uses multivariate techniques to combine information from the impact parameters of displaced tracks with topological properties of secondary and tertiary decay vertices reconstructed within the jet. The working point used for this search corresponds to a 70 % efficiency to tag a b-quark jet, with a light-jet mistag rate of 1 %, and a charm-jet mistag rate of 20 %, as determined for b-tagged jets with pT>20GeV and |η|<2.5 in simulated tt¯ events. Tagging efficiencies in simulation are corrected to match the results of the calibrations performed in data [37]. Studies in simulation show that these efficiencies do not depend on the number of jets.

Event selection and classification

For this search, only events collected using a single-electron or single-muon trigger under stable beam conditions and for which all detector subsystems were operational are considered. The corresponding integrated luminosity is 20.3 fb-1. Triggers with different pT thresholds are combined in a logical OR in order to maximise the overall efficiency. The pT thresholds are 24 or 60  GeV for electrons and 24 or 36  GeV for muons. The triggers with the lower pT threshold include isolation requirements on the lepton candidate, resulting in inefficiency at high pT that is recovered by the triggers with higher pT threshold. The triggers use selection criteria looser than the final reconstruction requirements.

Events accepted by the trigger are required to have at least one reconstructed vertex with at least five associated tracks, consistent with the beam collision region in the xy plane. If more than one such vertex is found, the vertex candidate with the largest sum of squared transverse momenta of its associated tracks is taken as the hard-scatter primary vertex.

In the single-lepton channel, events are required to have exactly one identified electron or muon with pT>25  GeV and at least four jets, at least two of which are b-tagged. The selected lepton is required to match, with ΔR<0.15, the lepton reconstructed by the trigger.

In the dilepton channel, events are required to have exactly two leptons of opposite charge and at least two b-jets. The leading and subleading lepton must have pT>25  GeV and pT>15  GeV, respectively. Events in the single-lepton sample with additional leptons passing this selection are removed from the single-lepton sample to avoid statistical overlap between the channels. In the dilepton channel, events are categorised into ee, μμ and eμ samples. In the eμ category, the scalar sum of the transverse energy of leptons and jets, HT, is required to be above 130 GeV. In the ee and μμ event categories, the invariant mass of the two leptons, m, is required to be larger than 15  GeV in events with more than two b-jets, to suppress contributions from the decay of hadronic resonances such as the J/ψ and Υ into a same-flavour lepton pair. In events with exactly two b-jets, m is required to be larger than 60  GeV due to poor agreement between data and prediction at lower m. A further cut on m is applied in the ee and μμ categories to reject events close to the Z boson mass: |m-mZ|>8 GeV.

After all selection requirements, the samples are dominated by tt¯+jets background. In both channels, selected events are categorised into different regions. In the following, a given region with m jets of which n are b-jets are referred to as “(mj,nb)”. The regions with a signal-to-background ratio S/B> 1 % and S/B>0.3, where S and B denote the expected signal for a SM Higgs boson with mH=125GeV, and background, respectively, are referred to as “signal-rich regions”, as they provide most of the sensitivity to the signal. The remaining regions are referred to as “signal-depleted regions”. They are almost purely background-only regions and are used to constrain systematic uncertainties, thus improving the background prediction in the signal-rich regions. The regions are analysed separately and combined statistically to maximise the overall sensitivity. In the most sensitive regions, (6j,4b) in the single-lepton channel and (4j,4b) in the dilepton channel, Hbb¯ decays are expected to constitute about 90 % of the signal contribution as shown in Fig. 20 of Appendix A.

Fig. 20.

Fig. 20

Contribution of various Higgs boson decay modes to the analysis regions in a the single-lepton channel and b the dilepton channel

In the single-lepton channel, a total of nine independent regions are considered: six signal-depleted regions (4j,2b), (4j,2b), (4j,4b), (5j,2b), (5j,3b), (6j,2b), and three signal-rich regions, (5j,4b), (6j,3b) and (6j,4b). In the dilepton channel, a total of six independent regions are considered. The signal-rich regions are (4j,3b) and (4j,4b), while the signal-depleted regions are (2j,2b), (3j,2b), (3j,3b) and (4j,2b). Figure 2a shows the S/B and S / B ratios for the different regions under consideration in the single-lepton channel based on the simulations described in Sect. 5. The expected proportions of different backgrounds in each region are shown in Fig. 2b. The same is shown in the dilepton channel in Fig. 3a, b.

Fig. 2.

Fig. 2

Single-lepton channel: a S/B ratio for each of the regions assuming SM cross sections and branching fractions, and mH=125GeV. Each row shows the plots for a specific jet multiplicity (4, 5, 6), and the columns show the b-jet multiplicity (2, 3, 4). Signal-rich regions are shaded in dark red, while the rest are shown in light blue. The S / B ratio for each region is also noted. b The fractional contributions of the various backgrounds to the total background prediction in each considered region. The ordering of the rows and columns is the same as in a

Fig. 3.

Fig. 3

Dilepton channel: a The S/B ratio for each of the regions assuming SM cross sections and branching fractions and mH=125GeV. Each row shows the plots for a specific jet multiplicity (2, 3, 4), and the columns show the b-jet multiplicity (2, 3, 4). Signal-rich regions are shaded in dark red, while the rest are shown in light blue. The S / B ratio for each region is also noted. b The fractional contributions of the various backgrounds to the total background prediction in each considered region. The ordering of the rows and columns is the same as in a

Background and signal modelling

After the event selection described above, the main background in both the single-lepton and dilepton channels is tt¯+jets production. In the single-lepton channel, additional background contributions come from single top quark production, followed by the production of a W or Z boson in association with jets (W / Z+jets), diboson (WW, WZ, ZZ) production, as well as the associated production of a vector boson and a tt¯ pair, tt¯+V (V=W,Z). Multijet events also contribute to the selected sample via the misidentification of a jet or a photon as an electron or the presence of a non-prompt electron or muon, referred to as “Lepton misID” background. The corresponding yield is estimated via a data-driven method known as the “matrix method” [38]. In the dilepton channel, backgrounds containing at least two prompt leptons other than tt¯+jets production arise from Z+jets, diboson, and Wt-channel single top quark production, as well as from the tt¯V processes. There are also several processes which may contain either non-prompt leptons that pass the lepton isolation requirements or jets misidentified as leptons. These processes include W+jets, tt¯ production with a single prompt lepton in the final state, and single top quark production in t- and s-channels. Their yield is estimated using simulation and cross-checked with a data-driven technique based on the selection of a same-sign lepton pair. In both channels, the contribution of the misidentified lepton background is negligible after requiring two b-tagged jets.

In the following, the simulation of each background and of the signal is described in detail. For all MC samples, the top quark mass is taken to be mt=172.5  GeV and the Higgs boson mass is taken to be mH=125 GeV.

tt¯+jets background

The tt¯+jets sample is generated using the Powheg-Box 2.0 NLO generator [3941] with the CT10 parton distribution function (PDF) set [42]. It is interfaced to Pythia 6.425 [43] with the CTEQ6L1 PDF set [44] and the Perugia2011C [45] underlying-event tune. The sample is normalised to the top++2.0 [46] theoretical calculation performed at next-to-next-to-leading order (NNLO) in QCD that includes resummation of next-to-next-to-leading logarithmic (NNLL) soft gluon terms [4751].

The tt¯+jets sample is generated inclusively, but events are categorised depending on the flavour of partons that are matched to particle jets that do not originate from the decay of the tt¯ system. The matching procedure is done using the requirement of ΔR<0.4. Particle jets are reconstructed by clustering stable particles excluding muons and neutrinos using the anti-kt algorithm with a radius parameter R=0.4, and are required to have pT>15GeV and |η|<2.5.

Events where at least one such particle jet is matched to a bottom-flavoured hadron are labelled as tt¯+bb¯ events. Similarly, events which are not already categorised as tt¯+bb¯, and where at least one particle jet is matched to a charm-flavoured hadron, are labelled as tt¯+cc¯ events. Only hadrons not associated with b and c quarks from top quark and W boson decays are considered. Events labelled as either tt¯+bb¯ or tt¯+cc¯ are generically referred to as tt¯+HF events (HF for “heavy flavour”). The remaining events are labelled as tt¯+light-jet events, including those with no additional jets.

Since Powheg+Pythia only models tt¯+bb¯ via the parton shower, an alternative tt¯+jets sample is generated with the Madgraph5 1.5.11 LO generator [52] using the CT10 PDF set and interfaced to Pythia 6.425 for showering and hadronisation. It includes tree-level diagrams with up to three extra partons (including b- and c-quarks) and uses settings similar to those in Ref. [24]. To avoid double-counting of partonic configurations generated by both the matrix element calculation and the parton-shower evolution, a parton–jet matching scheme (“MLM matching”) [53] is employed.

Fully matched NLO predictions with massive b-quarks have become available recently [54] within the Sherpa with OpenLoops framework [55, 56] referred to in the following as SherpaOL. The SherpaOL NLO sample is generated following the four-flavour scheme using the Sherpa 2.0 pre-release and the CT10 PDF set. The renormalisation scale (μR) is set to μR=i=t,t¯,b,b¯ET,i1/4, where ET,i is the transverse energy of parton i, and the factorisation and resummation scales are both set to (ET,t+ET,t¯)/2.

For the purpose of comparisons between tt¯+jets event generators and the propagation of systematic uncertainties related to the modelling of tt¯+HF, as described in Sect. 8.3.1, a finer categorisation of different topologies in tt¯+HF is made. In particular, the following categories are considered: if two particle jets are both matched to an extra b-quark or extra c-quark each, the event is referred to as tt¯+bb¯ or tt¯+cc¯; if a single particle jet is matched to a single b(c)-quark the event is referred to as tt¯+b (tt¯+c); if a single particle jet is matched to a bb¯ or a cc¯ pair, the event is referred to as tt¯+B or tt¯+C, respectively.

Figure 4 shows the relative contributions of the different tt¯+bb¯ event categories to the total tt¯+bb¯ cross section at generator level for the Powheg+Pythia, Madgraph+Pythia and SherpaOL samples. It demonstrates that Powheg+Pythia is able to reproduce reasonably well the tt¯+HF content of the Madgraphtt¯+jets sample, which includes a LO tt¯+bb¯ matrix element calculation, as well as the NLO SherpaOL prediction.

Fig. 4.

Fig. 4

Relative contributions of different categories of tt¯+bb¯ events in Powheg+Pythia, Madgraph+Pythia and SherpaOL samples. Labels “tt¯+MPI” and “tt¯+FSR” refer to events where heavy flavour is produced via multiparton interaction (MPI) or final state radiation (FSR), respectively. These contributions are not included in the SherpaOL calculation. An arrow indicates that the point is off-scale. Uncertainties are from the limited MC sample sizes

The relative distribution across categories is such that SherpaOL predicts a higher contribution of the tt¯+B category, as well as every category where the production of a second bb¯ pair is required. The modelling of the relevant kinematic variables in each category is in reasonable agreement between Powheg+Pythia and SherpaOL. Some differences are observed in the very low regions of the mass and pT of the bb¯ pair, and in the pT of the top quark and tt¯ systems.

The prediction from SherpaOL is expected to model the tt¯+bb¯ contribution more accurately than both Powheg+Pythia and Madgraph+Pythia. Thus, in the analysis tt¯+bb¯ events are reweighted from Powheg+ Pythia to reproduce the NLO tt¯+bb¯ prediction from SherpaOL for relative contributions of different categories as well as their kinematics. The reweighting is done at generator level using several kinematic variables such as the top quark pT, tt¯ system pT, ΔR and pT of the dijet system not coming from the top quark decay. In the absence of an NLO calculation of tt¯+cc¯ production, the Madgraph+Pythia sample is used to evaluate systematic uncertainties on the tt¯+cc¯ background.

Since achieving the best possible modelling of the tt¯+jets background is a key aspect of this analysis, a separate reweighting is applied to tt¯+light and tt¯+cc¯ events in Powheg+Pythia based on the ratio of measured differential cross sections at s=7TeV in data and simulation as a function of top quark pT and tt¯ system pT [57]. It was verified using the simulation that the ratio derived at s=7TeV is applicable to s=8TeV simulation. It is not applied to the tt¯+bb¯ component since that component was corrected to match the best available theory calculation. Moreover, the measured differential cross section is not sensitive to this component. The reweighting significantly improves the agreement between simulation and data in the total number of jets (primarily due to the tt¯ system pT reweighting) and jet pT (primarily due to the top quark pT reweighting). This can be seen in Fig. 5, where the number of jets and the scalar sum of the jet pT (HThad) distributions in the exclusive 2-b-tag region are plotted in the single-lepton channel before and after the reweighting is applied.

Fig. 5.

Fig. 5

The exclusive 2-b-tag region of the single-lepton channel before and after the reweighting of the pT of the tt¯ system and the pT of the top quark of the Powheg+Pythia tt¯ sample. The jet multiplicity distribution (a) before and (b) after the reweighting; HThad distribution c before and d after the reweighting

Other backgrounds

The W / Z+jets background is estimated from simulation reweighted to account for the difference in the W / ZpT spectrum between data and simulation [58]. The heavy-flavour fraction of these simulated backgrounds, i.e. the sum of W/Z+bb¯ and W/Z+cc¯ processes, is adjusted to reproduce the relative rates of Z events with no b-tags and those with one b-tag observed in data. Samples of W / Z+jets events, and diboson production in association with jets, are generated using the Alpgen 2.14 [59] leading-order (LO) generator and the CTEQ6L1 PDF set. Parton showers and fragmentation are modelled with Pythia 6.425 for W / Z+jets production and with Herwig 6.520 [60] for diboson production. The W+jets samples are generated with up to five additional partons, separately for W+light-jets, Wbb¯+jets, Wcc¯+jets, and Wc+jets. Similarly, the Z+jets background is generated with up to five additional partons separated in different parton flavours. Both are normalised to the respective inclusive NNLO theoretical cross section [61]. The overlap between WQQ¯ (ZQQ¯)(Q=b,c) events generated from the matrix element calculation and those from parton-shower evolution in the W+light-jet (Z+light-jet) samples is removed by an algorithm based on the angular separation between the extra heavy quarks: if ΔR(Q,Q¯)>0.4, the matrix element prediction is used, otherwise the parton shower prediction is used.

The diboson+jets samples are generated with up to three additional partons and are normalised to their respecitve NLO theoretical cross sections [62].

Samples of single top quark backgrounds are generated with Powheg-Box 2.0 using the CT10 PDF set. The samples are interfaced to Pythia 6.425 with the CTEQ6L1 set of parton distribution functions and Perugia2011C underlying-event tune. Overlaps between the tt¯ and Wt final states are removed [63]. The single top quark samples are normalised to the approximate NNLO theoretical cross sections [6466] using the MSTW2008 NNLO PDF set [67, 68].

Samples of tt¯+V are generated with Madgraph 5 and the CTEQ6L1 PDF set. Pythia 6.425 with the AUET2B tune [69] is used for showering. The tt¯V samples are normalised to the NLO cross-section predictions [70, 71].

Signal model

The tt¯H signal process is modelled using NLO matrix elements obtained from the HELAC-Oneloop package [72]. Powheg-Box serves as an interface to shower Monte Carlo programs. The samples created using this approach are referred to as PowHel samples [73]. They are inclusive in Higgs boson decays and are produced using the CT10nlo PDF set and factorisation (μF) and renormalisation scales set to μF=μR=mt+mH/2. The PowHeltt¯H sample is showered with Pythia 8.1 [74] with the CTEQ6L1 PDF and the AU2 underlying-event tune [75]. The tt¯H cross section and Higgs boson decay branching fractions are taken from (N)NLO theoretical calculations [19, 7682], collected in Ref. [83]. In Appendix A, the relative contributions of the Higgs boson decay modes are shown for all regions considered in the analysis.

Common treatment of MC samples

All samples using Herwig are also interfaced to Jimmy 4.31 [84] to simulate the underlying event. All simulated samples utilise Photos 2.15 [85] to simulate photon radiation and Tauola 1.20 [86] to simulate τ decays. Events from minimum-bias interactions are simulated with the Pythia 8.1 generator with the MSTW2008 LO PDF set and the AUET2 [87] tune. They are superimposed on the simulated MC events, matching the luminosity profile of the recorded data. The contributions from these pileup interactions are simulated both within the same bunch crossing as the hard-scattering process and in neighbouring bunch crossings.

Finally, all simulated MC samples are processed through a simulation [88] of the detector geometry and response either using Geant4 [89], or through a fast simulation of the calorimeter response [90]. All simulated MC samples are processed through the same reconstruction software as the data. Simulated MC events are corrected so that the object identification efficiencies, energy scales and energy resolutions match those determined from data control samples.

Figure 6a, b show a comparison of predicted yields to data prior to the fit described in Sect. 9 in all analysis regions in the single-lepton and dilepton channel, respectively. The data agree with the SM expectation within the uncertainties of 10–30 %. Detailed tables of the event yields prior to the fit and the corresponding S / B and S/B ratios for the single-lepton and dilepton channels can be found in Appendix B.

Fig. 6.

Fig. 6

Comparison of prediction to data in all analysis regions before the fit to data in a the single-lepton channel and b the dilepton channel. The signal, normalised to the SM prediction, is shown both as a filled red area stacked on the backgrounds and separately as a dashed red line. The hashed area corresponds to the total uncertainty on the yields

When requiring high jet and b-tag multiplicity in the analysis, the number of available MC events is significantly reduced, leading to large fluctuations in the resulting distributions for certain samples. This can negatively affect the sensitivity of the analysis through the large statistical uncertainties on the templates and unreliable systematic uncertainties due to shape fluctuations. In order to mitigate this problem, instead of tagging the jets by applying the b-tagging algorithm, their probabilities to be b-tagged are parameterised as functions of jet flavour, pT, and η. This allows all events in the sample before b-tagging is applied to be used in predicting the normalisation and shape after b-tagging [91]. The tagging probabilities are derived using an inclusive tt¯+jets simulated sample. Since the b-tagging probability for a b-jet coming from top quark decay is slightly higher than that of a b-jet with the same pT and η but arising from other sources, they are derived separately. The predictions agree well with the normalisation and shape obtained by applying the b-tagging algorithm directly. The method is applied to all signal and background samples.

Analysis method

In both the single-lepton and dilepton channels, the analysis uses a neural network (NN) to discriminate signal from background in each of the regions with significant expected tt¯H signal contribution since the S/B is very small and the uncertainty on the background is larger than the signal. Those include (5j,4b), (6j,3b) and (6j,4b) in the case of the single-lepton channel, and (4j,3b) and (4j,4b) in the case of the dilepton channel. In the dilepton channel, an additional NN is used to separate signal from background in the (3j,3b) channel. Despite a small expected S/B, it nevertheless adds sensitivity to the signal due to a relatively high expected S / B. In the single-lepton channel, a dedicated NN is used in the (5j,3b) region to separate tt¯+light from tt¯+HF backgrounds. The other regions considered in the analysis have lower sensitivity, and use HThad in the single-lepton channel, and the scalar sum of the jet and lepton pT (HT) in the dilepton channel as a discriminant.

The NNs used in the analysis are built using the NeuroBayes [92] package. The choice of the variables that enter the NN discriminant is made through the ranking procedure implemented in this package based on the statistical separation power and the correlation of variables. Several classes of variables were considered: object kinematics, global event variables, event shape variables and object pair properties. In the regions with 6 (4) jets, a maximum of seven (five) jets are considered to construct the kinematic variables in the single-lepton (dilepton) channel, first using all the b-jets, and then incorporating the untagged jets with the highest pT. All variables used for the NN training and their pairwise correlations are required to be described well in simulation in multiple control regions.

In the (5j,3b) region in the single-lepton channel, the separation between the tt¯+light and tt¯+HF events is achieved by exploiting the different origin of the third b-jet in the case of tt¯+light compared to tt¯+HF events. In both cases, two of the b-jets originate from the tt¯ decay. However, in the case of tt¯+HF events, the third b-jet is likely to originate from one of the additional heavy-flavour quarks, whereas in the case of tt¯+light events, the third b-jet is often matched to a c-quark from the hadronically decaying W boson. Thus, kinematic variables, such as the invariant mass of the two untagged jets with minimum ΔR, provide discrimination between tt¯+light and tt¯+HF events, since the latter presents a distinct peak at the W boson mass which is not present in the former. This and other kinematic variables are used in the dedicated NN used in this region.

In addition to the kinematic variables, two variables calculated using the matrix element method (MEM), detailed in Sect. 7, are included in the NN training in (6j,3b) and (6j,4b) regions of the single-lepton channel. These two variables are the Neyman–Pearson likelihood ratio (D1) (Eq. (4)) and the logarithm of the summed signal likelihoods (SSLL) (Eq. (2)). The D1 variable provides the best separation between tt¯H signal and the dominant tt¯+bb¯ background in the (6j,4b) region. The SSLL variable further improves the NN performance.

The variables used in the single-lepton and dilepton channels, as well as their ranking in each analysis region, are listed in Tables 1 and 2, respectively. For the construction of variables in the (4j,4b) region of the dilepton channel, the two b-jets that are closest in ΔR to the leptons are considered to originate from the top quarks, and the other two b-jets are assigned to the Higgs candidate.

Table 1.

Single-lepton channel: the definitions and rankings of the variables considered in each of the regions where an NN is used

Variable Definition NN rank
6j,4b 6j,3b 5j,4b 5j,3b
D1 Neyman–Pearson MEM discriminant (Eq. (4)) 1 10
Centrality Scalar sum of the pT divided by sum of the E for all jets and the lepton 2 2 1
pTjet5 pT of the fifth leading jet 3 7
H1 Second Fox–Wolfram moment computed using all jets and the lepton 4 3 2
ΔRbbavg Average ΔR for all b-tagged jet pairs 5 6 5
SSLL Logarithm of the summed signal likelihoods (Eq. (2)) 6 4
mbbminΔR Mass of the combination of the two b-tagged jets with the smallest ΔR 7 12 4 4
mbjmaxpT Mass of the combination of a b-tagged jet and any jet with the largest vector sum pT 8 8
ΔRbbmaxpT ΔR between the two b-tagged jets with the largest vector sum pT 9
ΔRlep-bbminΔR ΔR between the lepton and the combination of the two b-tagged jets with the smallest ΔR 10 11 10
muuminΔR Mass of the combination of the two untagged jets with the smallest ΔR 11 9 2
Aplanb-jet 1.5λ2, where λ2 is the second eigenvalue of the momentum tensor [93] built with only b-tagged jets 12 8
N40jet Number of jets with pT40GeV 1 3
mbjminΔR Mass of the combination of a b-tagged jet and any jet with the smallest ΔR 5
mjjmaxpT Mass of the combination of any two jets with the largest vector sum pT 6
HThad Scalar sum of jet pT 7
mjjminΔR Mass of the combination of any two jets with the smallest ΔR 9
mbbmaxpT Mass of the combination of the two b-tagged jets with the largest vector sum pT 1
pT,uuminΔR Scalar sum of the pT of the pair of untagged jets with the smallest ΔR 3
mbbmaxm Mass of the combination of the two b-tagged jets with the largest invariant mass 5
ΔRuuminΔR Minimum ΔR between the two untagged jets 6
mjjj Mass of the jet triplet with the largest vector sum pT 7

Table 2.

Dilepton channel: the definitions and rankings of the variables considered in each of the regions where an NN is used

Variable Definition NN rank
4j,4b 4j,3b 3j,3b
ΔηjjmaxΔη Maximum Δη between any two jets in the event 1 1 1
mbbminΔR Mass of the combination of the two b-tagged jets with the smallest ΔR 2 8
mbb¯ Mass of the two b-tagged jets from the Higgs candidate system 3
ΔRhlminΔR ΔR between the Higgs candidate and the closest lepton 4 5
N30Higgs Number of Higgs candidates within 30 GeV of the Higgs mass of 125  GeV  5 2 5
ΔRbbmaxpT ΔR between the two b-tagged jets with the largest vector sum pT 6 4 8
Aplanjet 1.5λ2, where λ2 is the second eigenvalue of the momentum tensor built with all jets 7 7
mjjminm Minimum dijet mass between any two jets 8 3 2
ΔRhlmaxΔR ΔR between the Higgs candidate and the furthest lepton 9
mjjclosest Dijet mass between any two jets closest to the Higgs mass of 125  GeV  10 10
HT Scalar sum of jet pT and lepton pT values 6 3
ΔRbbmaxm ΔR between the two b-tagged jets with the largest invariant mass 9
ΔRljminΔR Minimum ΔR between any lepton and jet 10
Centrality Sum of the pT divided by sum of the E for all jets and both leptons 7
mjjmaxpT Mass of the combination of any two jets with the largest vector sum pT 9
H4 Fifth Fox–Wolfram moment computed using all jets and both leptons 4
pTjet3 pT of the third leading jet 6

Figures 7 and 8 show the distribution of the NN discriminant for the tt¯H signal and background in the single-lepton and dilepton channels, respectively, in the signal-rich regions. In particular, Fig. 7a shows the separation between the tt¯+HF and tt¯+light-jet production achieved by a dedicated NN in the (5j,3b) region in the single-lepton channel. The distributions in the highest-ranked input variables from each of the NN regions are shown in Appendix C.

Fig. 7.

Fig. 7

Single-lepton channel: NN output for the different regions. In the (5j,3b) region (a), the tt¯+HF production is considered as signal and tt¯+light as background whereas in the (5j,4b) (b), (6j,3b) (c), and (6j,4b) (d) regions the NN output is for the tt¯H signal and total background. The distributions are normalised to unit area

Fig. 8.

Fig. 8

Dilepton channel: NN output for the tt¯H signal and total background in the a (3j,3b), b (4j,3b), and c (4j,4b) regions. The distributions are normalised to unit area

For all analysis regions considered in the fit, the tt¯H signal includes all Higgs decay modes. They are also included in the NN training.

The analysis regions have different contributions from various systematic uncertainties, allowing the combined fit to constrain them. The highly populated (4j,2b) and (2j,2b) regions in the single-lepton and dilepton channels, respectively, provide a powerful constraint on the overall normalisation of the tt¯ background. The (4j,2b), (5j,2b) and (6j,2b) regions in the single-lepton channel and the (2j,2b), (3j,2b) and (4j,2b) regions in the dilepton channel are almost pure in tt¯+light-jets background and provide an important constraint on tt¯ modelling uncertainties both in terms of normalisation and shape. Uncertainties on c-tagging are reduced by exploiting the large contribution of Wcs decays in the tt¯+light-jets background populating the (4j,3b) region in the single-lepton channel. Finally, the consideration of regions with exactly 3 and 4 b-jets in both channels, having different fractions of tt¯+bb¯ and tt¯+cc¯ backgrounds, provides the ability to constrain uncertainties on the tt¯+bb¯ and tt¯+cc¯ normalisations.

The matrix element method

The matrix element method [94] has been used by the D0 and CDF collaborations for precision measurements of the top quark mass [95, 96] and for the observations of single top quark production [97, 98]. Recently this technique has been used for the tt¯H search by the CMS experiment [99]. By directly linking theoretical calculations and observed quantities, it makes the most complete use of the kinematic information of a given event.

The method calculates the probability density function of an observed event to be consistent with physics process i described by a set of parameters α. This probability density function Pix|α is defined as

Pix|α=(2π)4σiexpαdpAdpBfpAfpBMiy|α2FWy|xdΦNy 1

and is obtained by numerical integration over the entire phase space of the initial- and final-state particles. In this equation, x and y represent the four-momentum vectors of all final-state particles at reconstruction and parton level, respectively. The flux factor F and the Lorentz-invariant phase space element dΦN describe the kinematics of the process. The transition matrix element Mi is defined by the Feynman diagrams of the hard process. The transfer functions Wy|x map the detector quantities x to the parton level quantities y. Finally, the cross section σiexp normalises Pi to unity taking acceptance and efficiency into account.

The assignment of reconstructed objects to final-state partons in the hard process contains multiple ambiguities. The process probability density is calculated for each allowed assignment permutation of the jets to the final-state quarks of the hard process. A process likelihood function can then be built by summing the process probabilities for the Np allowed assignment permutation,

Lix|α=p=1NpPipx|α. 2

The process probability densities are used to distinguish signal from background events by calculating the likelihood ratio of the signal and background processes contributing with fractions fbkg,

rsigx|α=Lsigx|αbkgfbkgLbkgx|α. 3

This ratio, according to the Neyman–Pearson lemma [100], is the most powerful discriminant between signal and background processes. In the analysis, this variable is used as input to the NN along with other kinematic variables.

Matrix element calculation methods are generated with Madgraph 5 in LO. The transfer functions are obtained from simulation following a similar procedure as described in Ref. [101]. For the modelling of the parton distribution functions the CTEQ6L1 set from the LHAPDF package [102] is used.

The integration is performed using VEGAS [103]. Due to the complexity and high dimensionality, adaptive MC techniques [104], simplifications and approximations are needed to obtain results within a reasonable computing time. In particular, only the numerically most significant contributing helicity states of a process hypothesis for a given event, identified at the start of each integration, are evaluated. This does not perceptibly decrease the separation power but reduces the calculation time by more than an order of magnitude. Furthermore, several approximations are made to improve the VEGAS convergence rate. Firstly, the dimensionality of integration is reduced by assuming that the final-state object directions in η and ϕ as well as charged lepton momenta are well measured, and therefore the corresponding transfer functions are represented by δ functions. The total momentum conservation and a negligible transverse momentum of the initial-state partons allow for further reduction. Secondly, kinematic transformations are utilised to optimise the integration over the remaining phase space by aligning the peaks of the integrand with the integration dimensions. The narrow-width approximation is applied to the leptonically decaying W boson. This leaves three b-quark energies, one light-quark energy, the hadronically decaying W boson mass and the invariant mass of the two b-quarks originating from either the Higgs boson for the signal or a gluon for the background as the remaining parameters which define the integration phase space. The total integration volume is restricted based upon the observed values and the width of the transfer functions and of the propagator peaks in the matrix elements. Finally, the likelihood contributions of all allowed assignment permutations are coarsely integrated, and only for the leading twelve assignment permutations is the full integration performed, with a required precision decreasing according to their relative contributions.

The signal hypothesis is defined as a SM Higgs boson produced in association with a top-quark pair as shown in Fig. 1a, b. Hence no coupling of the Higgs boson to the W boson is accounted for in |Mi|2 to allow for a consistent treatment when performing the kinematic transformation. The Higgs boson is required to decay into a pair of b-quarks, while the top-quark pair decays into the single-lepton channel. For the background hypothesis, only the diagrams of the irreducible tt¯+bb¯ background are considered. Since it dominates the most signal-rich analysis regions, inclusion of other processes does not improve the separation between signal and background. No gluon radiation from the final-state quarks is allowed, since these are kinematically suppressed and difficult to treat in any kinematic transformation aiming for phase-space alignment during the integration process. In the definition of the signal and background hypothesis the LO diagrams are required to have a top-quark pair as an intermediate state resulting in exactly four b-quarks, two light quarks, one charged lepton (electron or muon) and one neutrino in the final state. Assuming lepton universality and invariance under charge conjugation, diagrams of only one lepton flavour and of only negative charge (electron) are considered. The probability density function calculation of the signal and background is only performed in the (6j,3b) and (6j,4b) regions of the single-lepton channel. Only six reconstructed jets are considered in the calculation: the four jets with the highest value of the probability to be a b-jet returned by the b-tagging algorithm (i.e. the highest b-tagging weight) and two of the remaining jets with an invariant mass closest to the W boson mass of 80.4 GeV. If a jet is b-tagged it cannot be assigned to a light quark in the matrix element description. In the case of more than four b-tagged jets, only the four with the highest b-tagging weight are treated as b-tagged. Assignment permutations between the two light quarks of the hadronically decaying W boson and between the two b-quarks originating from the Higgs boson or gluon result in the same likelihood value and are thus not considered. As a result there are in total 12 and 36 assignment permutations in the (6j,4b) and (6j,3b) region, respectively, which need to be evaluated in the coarse integration phase.

Using the tt¯H process as the signal hypothesis and the tt¯+bb¯ process as the background hypothesis, a slightly modified version of Eq. (3) is used to define the likelihood ratio D1:

D1=Ltt¯HLtt¯H+α·Ltt¯+bb¯, 4

where α=0.23 is a relative normalisation factor chosen to optimise the performance of the discriminant given the finite bin sizes of the D1 distribution. In this definition, signal-like and background-like events have D1 values close to one and zero, respectively. The logarithm of the summed signal likelihoods defined by Eq. (2) and the ratio D1 are included in the NN training in both the (6j,3b) and (6j,4b) regions.

Systematic uncertainties

Several sources of systematic uncertainty are considered that can affect the normalisation of signal and background and/or the shape of their final discriminant distributions. Individual sources of systematic uncertainty are considered uncorrelated. Correlations of a given systematic effect are maintained across processes and channels. Table 3 presents a summary of the sources of systematic uncertainty considered in the analysis, indicating whether they are taken to be normalisation-only, shape-only, or to affect both shape and normalisation. In Appendix D, the normalisation impact of the systematic uncertainties are shown on the tt¯ background as well as on the tt¯H signal.

Table 3.

List of systematic uncertainties considered. An “N” means that the uncertainty is taken as normalisation-only for all processes and channels affected, whereas an “S” denotes systematic uncertainties that are considered shape-only in all processes and channels. An “SN” means that the uncertainty is taken on both shape and normalisation. Some of the systematic uncertainties are split into several components for a more accurate treatment. This is the number indicated in the column labelled as “Comp.”

Systematic uncertainty Type Comp.
Luminosity N 1
Physics objects
Electron SN 5
Muon SN 6
Jet energy scale SN 22
Jet vertex fraction SN 1
Jet energy resolution SN 1
Jet reconstruction SN 1
b-tagging efficiency SN 6
c-tagging efficiency SN 4
Light-jet tagging efficiency SN 12
High-pT tagging efficiency SN 1
Background model
tt¯ cross section N 1
tt¯ modelling: pT reweighting SN 9
tt¯ modelling: parton shower SN 3
tt¯+heavy-flavour: normalisation N 2
tt¯+cc¯: pT reweighting SN 2
tt¯+cc¯: generator SN 4
tt¯+bb¯: NLO Shape SN 8
W+jets normalisation N 3
W pT reweighting SN 1
Z+jets normalisation N 3
Z pT reweighting SN 1
Lepton misID normalisation N 3
Lepton misID shape S 3
Single top cross section N 1
Single top model SN 1
Diboson+jets normalisation N 3
tt¯+V cross section N 1
tt¯+V model SN 1
Signal model
tt¯H scale SN 2
tt¯H generator SN 1
tt¯H hadronisation SN 1
tt¯H PDF SN 1

In order to reduce the degradation of the sensitivity of the search due to systematic uncertainties, they are fitted to data in the statistical analysis, exploiting the constraining power from the background-dominated regions described in Sect. 4. Each systematic uncertainty is represented by an independent parameter, referred to as a “nuisance parameter”, and is fitted with a Gaussian prior for the shape differences and a log-normal distribution for the normalisation. They are centred around zero with a width that corresponds to the given uncertainty.

Luminosity

The uncertainty on the integrated luminosity for the data set used in this analysis is 2.8 %. It is derived following the same methodology as that detailed in Ref. [105]. This systematic uncertainty is applied to all contributions determined from the MC simulation.

Uncertainties on physics objects

Leptons

Uncertainties associated with the lepton selection arise from the trigger, reconstruction, identification, isolation and lepton momentum scale and resolution. In total, uncertainties associated with electrons (muons) include five (six) components.

Jets

Uncertainties associated with the jet selection arise from the jet energy scale (JES), jet vertex fraction requirement, jet energy resolution and jet reconstruction efficiency. Among these, the JES uncertainty has the largest impact on the analysis. The JES and its uncertainty are derived combining information from test-beam data, LHC collision data and simulation [35]. The jet energy scale uncertainty is split into 22 uncorrelated sources which can have different jet pT and η dependencies. In this analysis, the largest jet energy scale uncertainty arises from the η dependence of the JES calibration in the end-cap regions of the calorimeter. It is the second leading uncertainty.

Heavy- and light-flavour tagging

A total of six (four) independent sources of uncertainty affecting the b(c)-tagging efficiency are considered [37]. Each of these uncertainties corresponds to an eigenvector resulting from diagonalising the matrix containing the information about the total uncertainty per jet pT bin and the bin-to-bin correlations. An additional uncertainty is assigned due to the extrapolation of the b-tagging efficiency measurement to the high-pT region. Twelve uncertainties are considered for the light-jet tagging and they depend on jet pT and η. These systematic uncertainties are taken as uncorrelated between b-jets, c-jets, and light-flavour jets.

No additional systematic uncertainty is assigned due to the use of parameterisations of the b-tagging probabilities instead of applying the b-tagging algorithm directly since the difference between these two approaches is negligible compared to the other sources.

Uncertainties on background modelling

tt¯+jets modelling

An uncertainty of +6.5 %/–6 % is assumed for the inclusive tt¯ production cross section. It includes uncertainties from the top quark mass and choices of the PDF and αS. The PDF and αS uncertainties are calculated using the PDF4LHC prescription [106] with the MSTW2008 68 % CL NNLO, CT10 NNLO [107] and NNPDF2.3 5f FFN [108] PDF sets, and are added in quadrature to the scale uncertainty. Other systematic uncertainties affecting the modelling of tt¯+jets include uncertainties due to the choice of parton shower and hadronisation model, as well as several uncertainties related to the reweighting procedure applied to improve the tt¯ MC model. Additional uncertainties are assigned to account for limited knowledge of tt¯+HF jets production. They are described later in this section.

As discussed in Sect. 5, to improve the agreement between data and the tt¯ simulation a reweighting procedure is applied to tt¯ MC events based on the difference in the top quark pT and tt¯ system pT distributions between data and simulation at s=7TeV [57]. The nine largest uncertainties associated with the experimental measurement of top quark and tt¯ system pT, representing approximately 95 % of the total experimental uncertainty on the measurement, are considered as separate uncertainty sources in the reweighting applied to the MC prediction. The largest uncertainties on the measurement of the differential distributions include radiation modelling in tt¯ events, the choice of generator to simulate tt¯ production, uncertainties on the components of jet energy scale and resolution, and flavour tagging.

Because the measurement is performed for the inclusive tt¯ sample and the size of the uncertainties applicable to the tt¯+cc¯ component is not known, two additional uncorrelated uncertainties are assigned to tt¯+cc¯ events, consisting of the full difference between applying and not applying the reweightings of the tt¯ system pT and top quark pT, respectively.

An uncertainty due to the choice of parton shower and hadronisation model is derived by comparing events produced by Powheg interfaced with Pythia or Herwig. Effects on the shapes are compared, symmetrised and applied to the shapes predicted by the default model. Given that the change of the parton shower model leads to two separate effects – a change in the number of jets and a change of the heavy-flavour content – the parton shower uncertainty is represented by three parameters, one acting on the tt¯+light contribution and two others on the tt¯+cc¯ and tt¯+bb¯ contributions. These three parameters are treated as uncorrelated in the fit.

Detailed comparisons of tt¯+bb¯ production between Powheg+Pythia and an NLO prediction of tt¯+bb¯ production based on SherpaOL have shown that the cross sections agree within 50 % of each other. Therefore, a systematic uncertainty of 50 % is applied to the tt¯+bb¯ component of the tt¯+jets background obtained from the Powheg+Pythia MC simulation. In the absence of an NLO prediction for the tt¯+cc¯ background, the same 50 % systematic uncertainty is applied to the tt¯+cc¯ component, and the uncertainties on tt¯+bb¯ and tt¯+cc¯ are treated as uncorrelated. The large available data sample allows the determination of the tt¯+bb¯ and tt¯+cc¯ normalisations with much better precision, approximately 15 and 30 %, respectively (see Appendix D). Thus, the final result does not significantly depend on the exact value of the assumed prior uncertainty, as long as it is larger than the precision with which the data can constrain it. However, even after the reduction, the uncertainties on the tt¯+bb¯ and the tt¯+cc¯ background normalisation are still the leading and the third leading uncertainty in the analysis, respectively.

Four additional systematic uncertainties in the tt¯+cc¯ background estimate are derived from the simultaneous variation of factorisation and renormalisation scales, matching threshold and c-quark mass variations in the Madgraph+Pythiatt¯ simulation, and the difference between the tt¯+cc¯ simulation in Madgraph+Pythia and Powheg+Pythia since Madgraph+Pythia includes the tt¯+cc¯ process in the matrix element calculation while it is absent in Powheg+Pythia.

For the tt¯+bb¯ background, three scale uncertainties, including changing the functional form of the renormalisation scale to μR=(mtmbb¯)1/2, changing the functional form of the factorisation μF and resummation μQ scales to μF=μQ=i=t,t¯,b,b¯ET,i1/4 and varying the renormalisation scale μR by a factor of two up and down are evaluated. Additionally, the shower recoil model uncertainty and two uncertainties due to the PDF choice in the SherpaOL NLO calculation are quoted. The effect of these variations on the contribution of different tt¯+bb¯ event categories is shown in Fig. 9. The renormalisation scale choice and the shower recoil scheme have a large effect on the modelling of tt¯+bb¯. They provide large shape variations of the NN discriminants resulting in the fourth and sixth leading uncertainties in this analysis.

Fig. 9.

Fig. 9

Systematic uncertainties on the tt¯+bb¯ contribution based on a scale variations and b PDF choice and shower recoil model of the SherpaOL simulation. The effect of a given systematic uncertainty is shown across the different tt¯+bb¯ categories. The effect of migration between categories is covered by variations of these systematic uncertainties

Finally, two uncertainties due to tt¯+bb¯ production via multiparton interaction and final-state radiation which are not present in the SherpaOL NLO calculation are applied. Overall, the uncertainties on tt¯+bb¯ normalisation and modelling result in about a 55 % total uncertainty on the tt¯+bb¯ background contribution in the most sensitive (6j,4b) and (4j,4b) regions.

The W / Z+jets modelling

As discussed in Sect. 5, the W / Z+jets contributions are obtained from the simulation and normalised to the inclusive theoretical cross sections, and a reweighting is applied to improve the modelling of the W / Z boson pT spectrum. The full difference between applying and not applying the W / Z boson pT reweighting is taken as a systematic uncertainty, which is then assumed to be symmetric with respect to the central value. Additional uncertainties are assigned due to the extrapolation of the W / Z+jets estimate to high jet multiplicity.

Misidentified lepton background modelling

Systematic uncertainties on the misidentified lepton background estimated via the matrix method [38] in the single-lepton channel receive contributions from the limited number of data events, particularly at high jet and b-tag multiplicities, from the subtraction of the prompt-lepton contribution as well as from the uncertainty on the lepton misidentification rates, estimated in different control regions. The statistical uncertainty is uncorrelated among the different jet and b-tag multiplicity bins. An uncertainty of 50 % associated with the lepton misidentification rate measurements is assumed, which is taken as correlated across jet and b-tag multiplicity bins, but uncorrelated between electron and muon channels. Uncertainty on the shape of the misidentified lepton background arises from the prompt-lepton background subtraction and the misidentified lepton rate measurement.

In the dilepton channel, since the misidentified lepton background is estimated using both the simulation and same-sign dilepton events in data, a 50 % normalisation uncertainty is assigned to cover the maximum difference between the two methods. It is taken as correlated among the different jet and b-tag multiplicity bins. An additional uncertainty is applied to cover the difference in shape between the predictions derived from the simulation and from same-sign dilepton events in data.

Electroweak background modelling

Uncertainties of +5 %/–4 % and ±6.8 % are used for the theoretical cross sections of single top production in the single-lepton and dilepton channels [64, 65], respectively. The former corresponds to the weighted average of the theoretical uncertainties on s-, t- and Wt-channel production, while the latter corresponds to the theoretical uncertainty on Wt-channel production, the only single top process contributing to the dilepton final state.

The uncertainty on the diboson background rates includes an uncertainty on the inclusive diboson NLO cross section of ±5% [62] and uncertainties to account for the extrapolation to high jet multiplicity.

Finally, an uncertainty of ±30% is assumed for the theoretical cross sections of the tt¯+V [70, 71] background. An additional uncertainty on tt¯+V modelling arises from variations in the amount of initial-state radiation. The tt¯+Z background with Z boson decaying into a bb¯ pair is an irreducible background to the tt¯H, Hbb¯ signal, and as such, has kinematics and an NN discriminant shape similar to those of the signal. The uncertainty on the tt¯+V background normalisation is the fifth leading uncertainty in the analysis.

Uncertainties on signal modelling

Dedicated NLO PowHel samples are used to evaluate the impact of the choice of factorisation and renormalisation scales on the tt¯H signal kinematics. In these samples the default scale is varied by a factor of two up and down. The effect of the variations on tt¯H distributions was studied at particle level and the nominal PowHeltt¯H sample was reweighted to reproduce these variations. In a similar way, the nominal sample is reweighted to reproduce the effect of changing the functional form of the scale. Additional uncertainties on the tt¯H signal due to the choice of PDF, parton shower and fragmentation model and NLO generator are also considered. The effect of the PDF uncertainty on the tt¯H signal is evaluated following the recommendation of the PDF4LHC. The uncertainty in the parton shower and fragmentation is evaluated by comparing Powhel+Pythia8 and Powhel+Herwig samples, while the uncertainty due to a generator choice is evaluated by comparing Powhel+Pythia8 with Madgraph5_aMC@NLO [109] interfaced with Herwig++ [110, 111].

Statistical methods

The distributions of the discriminants from each of the channels and regions considered are combined to test for the presence of a signal, assuming a Higgs boson mass of mH=125GeV. The statistical analysis is based on a binned likelihood function L(μ,θ) constructed as a product of Poisson probability terms over all bins considered in the analysis. The likelihood function depends on the signal-strength parameter μ, defined as the ratio of the observed/expected cross section to the SM cross section, and θ, denoting the set of nuisance parameters that encode the effects of systematic uncertainties on the signal and background expectations. They are implemented in the likelihood function as Gaussian or log-normal priors. Therefore, the total number of expected events in a given bin depends on μ and θ. The nuisance parameters θ adjust the expectations for signal and background according to the corresponding systematic uncertainties, and their fitted values correspond to the amount that best fits the data. This procedure allows the impact of systematic uncertainties on the search sensitivity to be reduced by taking advantage of the highly populated background-dominated control regions included in the likelihood fit. It requires a good understanding of the systematic effects affecting the shapes of the discriminant distributions. The test statistic qμ is defined as the profile likelihood ratio: qμ=-2ln(L(μ,θ^^μ)/L(μ^,θ^)), where μ^ and θ^ are the values of the parameters that maximise the likelihood function (with the constraints 0μ^μ), and θ^^μ are the values of the nuisance parameters that maximise the likelihood function for a given value of μ. This test statistic is used to measure the compatibility of the observed data with the background-only hypothesis (i.e. for μ=0), and to make statistical inferences about μ, such as upper limits using the CLs method [112114] as implemented in the RooFit package [115, 116].

To obtain the final result, a simultaneous fit to the data is performed on the distributions of the discriminants in 15 regions: nine analysis regions in the single-lepton channel and six regions in the dilepton channel. Fits are performed under the signal-plus-background hypothesis, where the signal-strength parameter μ is the parameter of interest in the fit and is allowed to float freely, but is required to be the same in all 15 fit regions. The normalisation of each background is determined from the fit simultaneously with μ. Contributions from tt¯, W / Z+jets production, single top, diboson and tt¯V backgrounds are constrained by the uncertainties of the respective theoretical calculations, the uncertainty on the luminosity, and the data themselves. Statistical uncertainties in each bin of the discriminant distributions are taken into account by dedicated parameters in the fit. The performance of the fit is tested using simulated events by injecting tt¯H signal with a variable signal strength and comparing it to the fitted value. Good agreement between the injected and measured signal strength is observed.

Results

The results of the binned likelihood fit to data described in Sect. 9 are presented in this section. Figure 10 shows the yields after the fit in all analysis regions in the single-lepton and dilepton channels. The post-fit event yields and the corresponding S / B and S/B ratios are summarised in Appendix E.

Fig. 10.

Fig. 10

Event yields in all analysis regions in a the single-lepton channel and b the dilepton channel after the combined fit to data under the signal-plus-background hypothesis. The signal, normalised to the fitted μ, is shown both as a filled area stacked on the other backgrounds and separately as a dashed line. The hashed area represents the total uncertainty on the yields

Figures 11, 12, 13, 14 and 15 show a comparison of data and prediction for the discriminating variables (either HThad, HT, or NN discriminants) for each of the regions considered in the single-lepton and dilepton channels, respectively, both pre- and post-fit to data. The uncertainties decrease significantly in all regions due to constraints provided by data and correlations between different sources of uncertainty introduced by the fit to the data. In Appendix F, the most highly discriminating variables in the NN are shown post-fit compared to data.

Fig. 11.

Fig. 11

Single-lepton channel: comparison between data and prediction for the discriminant variable used in the (4j,2b) region a before the fit and b after the fit, in the (4j,2b) region c before the fit and d after the fit, in the (4j,4b) region e before the fit and f after the fit. The fit is performed on data under the signal-plus-background hypothesis. The last bin in all figures contains the overflow. The bottom panel displays the ratio of data to the total prediction. An arrow indicates that the point is off-scale. The hashed area represents the uncertainty on the background. The tt¯H signal yield (solid) is normalised to the SM cross section before the fit and to the fitted μ after the fit. In several regions, predominantly the control regions, the tt¯H signal yield is not visible on top of the large background

Fig. 12.

Fig. 12

Single-lepton channel: comparison of data and prediction for the discriminant variable used in the (5j,2b) region a before the fit and b after the fit, in the (5j,3b) region c before the fit and d after the fit, in the (5j,4b) region e before the fit and f after the fit. The fit is peformed on data under the signal-plus-background hypothesis. The last bin in all figures contains the overflow. The bottom panel displays the ratio of data to the total prediction. An arrow indicates that the point is off-scale. The hashed area represents the uncertainty on the background. The dashed line shows tt¯H signal distribution normalised to background yield. The tt¯H signal yield (solid) is normalised to the SM cross section before the fit and to the fitted μ after the fit. In several regions, predominantly the control regions, the tt¯H signal yield is not visible on top of the large background

Fig. 13.

Fig. 13

Single-lepton channel: comparison of data and prediction for the discriminant variable used in the (6j,2b) region a before the fit and b after the fit, in the (6j,3b) region c before the fit and d after the fit, in the (6j,4b) region e before the fit and f after the fit. The fit is performed on data under the signal-plus-background hypothesis. The last bin in all figures contains the overflow. The bottom panel displays the ratio of data to the total prediction. An arrow indicates that the point is off-scale. The hashed area represents the uncertainty on the background. The dashed line shows tt¯H signal distribution normalised to background yield. The tt¯H signal yield (solid) is normalised to the SM cross section before the fit and to the fitted μ after the fit. In several regions, predominantly the control regions, the tt¯H signal yield is not visible on top of the large background

Fig. 14.

Fig. 14

Dilepton channel: comparison of data and prediction for the discriminant variable used in the (2j,2b) region a before the fit and b after the fit, in the (3j,2b) region c before the fit and d after the fit, in the (3j,3b) region e before the fit and f after the fit. The fit is performed on data under the signal-plus-background hypothesis. The last bin in all figures contains the overflow. The bottom panel displays the ratio of data to the total prediction. An arrow indicates that the point is off-scale. The hashed area represents the uncertainty on the background. The dashed line shows tt¯H signal distribution normalised to background yield. The tt¯H signal yield (solid) is normalised to the SM cross section before the fit and to the fitted μ after the fit. In several regions, predominantly the control regions, the tt¯H signal yield is not visible on top of the large background

Fig. 15.

Fig. 15

Dilepton channel: comparison of data and prediction for the discriminant variable used in the (4j,2b) region a before the fit and b after the fit, in the (4j,3b) region c before the fit and d after the fit, in the (4j,4b) region e before the fit and f after the fit. The fit is performed on data under the signal-plus-background hypothesis. The last bin in all figures contains the overflow. The bottom panel displays the ratio of data to the total prediction. An arrow indicates that the point is off-scale. The hashed area represents the uncertainty on the background. The dashed line shows tt¯H signal distribution normalised to background yield. The tt¯H signal yield (solid) is normalised to the SM cross section before the fit and to the fitted μ after the fit. In several regions, predominantly the control regions, the tt¯H signal yield is not visible on top of the large background

Table 4 shows the observed μ values obtained from the individual fits in the single-lepton and dilepton channels, and their combination. The signal strength from the combined fit for mH=125GeV is:

μ(mH=125GeV)=1.5±1.1. 5

The expected uncertainty for the signal strength (μ=1) is ±1.1. The observed (expected) significance of the signal is 1.4 (1.1) standard deviations, which corresponds to an observed (expected) p-value of 8 % (15 %). The probability, p, to obtain a result at least as signal-like as observed if no signal is present is calculated using q0=-2ln(L(0,θμ^^)/L(μ^,θ^)) as a test statistic.

Table 4.

The fitted values of signal strength and their uncertainties for the individual channels as well as their combination, assuming mH=125GeV. Total uncertainties are shown

Signal strength μ Uncertainty
Single lepton 1.2 1.3
Dilepton 2.8 2.0
Combination 1.5 1.1

The fitted values of the signal strength and their uncertainties for the individual channels and their combination are shown in Fig. 16.

Fig. 16.

Fig. 16

The fitted values of the signal strength and their uncertainties for the individual channels and their combination. The green line shows the statistical uncertainty on the signal strength

The observed limits, those expected with and without assuming a SM Higgs boson with mH=125GeV, for each channel and their combination are shown in Fig. 17. A signal 3.4 times larger than predicted by the SM is excluded at 95 % CL using the CLs method. A signal 2.2 times larger than for the SM Higgs boson is expected to be excluded in the case of no SM Higgs boson, and 3.1 times larger in the case of a SM Higgs boson. This is also summarised in Table 5.

Fig. 17.

Fig. 17

95 % CL upper limits on σ(tt¯H) relative to the SM prediction, σ/σSM, for the individual channels as well as their combination. The observed limits (solid lines) are compared to the expected (median) limits under the background-only hypothesis and under the signal-plus-background hypothesis assuming the SM prediction for σ(tt¯H) and pre-fit prediction for the background. The surrounding shaded bands correspond to the 68 and 95 % confidence intervals around the expected limits under the background-only hypothesis, denoted by ±1σ and ±2σ, respectively

Table 5.

Observed and expected (median, for the background-only hypothesis) 95 % CL upper limits on σ(tt¯H) relative to the SM prediction, for the individual channels as well as their combination, assuming mH=125GeV. The 68 and 95 % confidence intervals around the expected limits under the background-only hypothesis are also provided, denoted by ±1σ and ±2σ, respectively. The expected (median) 95 % CL upper limits assuming the SM prediction for σ(tt¯H) are shown in the last column

95 % CL upper limit Observed -2σ -1σ Median +1σ +2σ Median (μ=1)
Single lepton 3.6 1.4 1.9 2.6 3.7 4.9 3.6
Dilepton 6.7 2.2 3.0 4.1 5.8 7.7 4.7
Combination 3.4 1.2 1.6 2.2 3.0 4.1 3.1

Figure 18 summarises post-fit event yields as a function of log10(S/B), for all bins of the distributions used in the combined fit of the single-lepton and dilepton channels. The value of log10(S/B) is calculated according to the post-fit yields in each bin of the fitted distributions, either HThad, HT, or NN. The total number of background and signal events is displayed in bins of log10(S/B). In particular, the last bin of Fig. 18 includes the two last bins from the most signal-rich region of the NN distribution in (6j,4b) and the two last bins from the most signal-rich region of the NN in (4j,4b) from the fit. The signal is normalised to the fitted value of the signal strength (μ=1.5) and the background is obtained from the global fit. A signal strength 3.4 times larger than predicted by the SM, which is excluded at 95 % CL by this analysis, is also shown.

Fig. 18.

Fig. 18

Event yields as a function of log10(S/B), where S (signal yield) and B (background yield) are taken from the HThad, HT, and NN output bin of each event. Events in all fitted regions are included. The predicted background is obtained from the global signal-plus-background fit. The tt¯H signal is shown both for the best fit value (μ=1.5) and for the upper limit at 95 % CL (μ=3.4)

Figure 19 demonstrates the effect of various systematic uncertainties on the fitted value of μ and the constraints provided by the data. The post-fit effect on μ is calculated by fixing the corresponding nuisance parameter at θ^±σθ, where θ^ is the fitted value of the nuisance parameter and σθ is its post-fit uncertainty, and performing the fit again. The difference between the default and the modified μ, Δμ, represents the effect on μ of this particular systematic uncertainty. The largest effect arises from the uncertainty in normalisation of the irreducible tt¯+bb¯ background. This uncertainty is reduced by more than one half from the initial 50 %. The tt¯+bb¯ background normalisation is pulled up by about 40 % in the fit, resulting in an increase in the observed tt¯+bb¯ yield with respect to the Powheg+Pythia prediction. Most of the reduction in uncertainty on the tt¯+bb¯ normalisation is the result of the significant number of data events in the signal-rich regions dominated by tt¯+bb¯ background. With no Gaussian prior considered on the tt¯+bb¯ normalisation, as described in Sect. 8, the fit still prefers an increase in the amount of tt¯+bb¯ background by about 40 %.

Fig. 19.

Fig. 19

The fitted values of the nuisance parameters with the largest impact on the measured signal strength. The points, which are drawn conforming to the scale of the bottom axis, show the deviation of each of the fitted nuisance parameters, θ^, from θ0, which is the nominal value of that nuisance parameter, in units of the pre-fit standard deviation Δθ. The error bars show the post-fit uncertainties, σθ, which are close to 1 if the data do not provide any further constraint on that uncertainty. Conversely, a value of σθ much smaller than 1 indicates a significant reduction with respect to the original uncertainty. The nuisance parameters are sorted according to the post-fit effect of each on μ (hashed blue area) conforming to the scale of the top axis, with those with the largest impact at the top

The tt¯+bb¯ modelling uncertainties affecting the shape of this background also have a significant effect on μ. These systematic uncertainties affect only the tt¯+bb¯ modelling and are not correlated with the other tt¯+jets backgrounds. The largest of the uncertainties is given by the renormalisation scale choice. The uncertainty drastically changes the shape of the NN for the tt¯+bb¯ background, making it appear more signal-like.

The tt¯+cc¯ normalisation uncertainty is ranked third (Fig. 19) and its pull is slightly negative, while the post-fit yields for tt¯+cc¯ increase significantly in the four- and five-jet regions in the single-lepton channel and in the two- and three-jet regions of the dilepton channel (see Tables 10, 11 of Appendix 1). It was verified that this effect is caused by the interplay between the tt¯+cc¯ normalisation uncertainty and several other systematic uncertainties affecting the tt¯+cc¯ background yield.

Table 10.

Dilepton channel: post-fit event yields under the signal-plus-background hypothesis for signal, backgrounds and data in each of the analysis regions. The quoted uncertainties are the sum in quadrature of statistical and systematic uncertainties on the yields, computed taking into account correlations among nuisance parameters and among processes

4 j, 2 b 4 j, 3 b 4 j, 4 b
tt¯H (125) 48 ± 35 20 ± 15 3.0 ± 2.2
tt¯+ light 78000 ± 1600 6300 ± 160 56 ± 5
tt¯+cc¯ 6400 ± 1800 850 ± 220 26 ± 7
tt¯+bb¯ 2500 ± 490 970 ± 150 63 ± 8
W+jets 3700 ± 1100 170 ± 51 4.0 ± 1.2
Z+jets 1100 ± 540 49 ± 25 1.1 ± 0.6
Single top 4700 ± 320 330 ± 28 6.8 ± 0.7
Diboson 220 ± 65 11 ± 4 0.3 ± 0.1
tt¯+V 120 ± 38 16 ± 5 0.9 ± 0.3
Lepton misID 1100 ± 370 78 ± 26 2.6 ± 1.0
Total 98000 ± 340 8800 ± 82 160 ± 6
Data 98049 8752 161
5 j, 2 b 5 j, 3 b 5 j, 4 b
tt¯H (125) 60 ± 44 34 ± 25 9.4 ± 6.9
tt¯+ light 38000 ± 1000 3600 ± 120 65 ± 6
tt¯+cc¯ 4800 ± 1200 930 ± 230 51 ± 12
tt¯+bb¯ 2400 ± 360 1300 ± 180 150 ± 20
W+jets 1200 ± 420 87 ± 31 4.0 ± 1.5
Z+jets 370 ± 200 28 ± 16 1.4 ± 0.8
Single top 1700 ± 150 190 ± 18 8.2 ± 0.7
Diboson 94 ± 35 8.0 ± 3.1 0.5 ± 0.2
tt¯+V 140 ± 43 26 ± 8 3.2 ± 1.0
Lepton misID 340 ± 110 44 ± 16 5.7 ± 2.2
Total 50000 ± 220 6200 ± 54 300 ± 10
Data 49699 6199 286
6 j, 2 b 6 j, 3 b 6 j, 4 b
tt¯H (125) 89 ± 65 57 ± 42 24 ± 17
tt¯+ light 19000 ± 700 2100 ± 87 58 ± 5
tt¯+cc¯ 3700 ± 890 890 ± 210 85 ± 21
tt¯+bb¯ 2000 ± 310 1400 ± 190 330 ± 37
W+jets 450 ± 170 51 ± 19 4.4 ± 1.9
Z+jets 150 ± 86 16 ± 9 1.2 ± 0.7
Single top 730 ± 83 110 ± 14 11 ± 2
Diboson 45 ± 20 5.6 ± 2.6 0.5 ± 0.2
tt¯+V 170 ± 52 42 ± 13 8.2 ± 2.5
Lepton misID 120 ± 41 14 ± 5 1.1 ± 0.5
Total 26000 ± 160 4600 ± 55 520 ± 18
Data 26185 4701 516

Table 11.

Single lepton channel: post-fit event yields under the signal-plus-background hypothesis for signal, backgrounds and data in each of the analysis regions. The quoted uncertainties are the sum in quadrature of statistical and systematic uncertainties on the yields, computed taking into account correlations among nuisance parameters and among processes

2 j, 2 b 3 j, 2 b 3 j, 3 b
tt¯H (125) 2.4 ± 1.8 8.1 ± 5.9 3.0 ± 2.2
tt¯+ light 14000 ± 160 8300 ± 170 84 ± 9.6
tt¯+cc¯ 400 ± 110 700 ± 160 92 ± 22
tt¯+bb¯ 190 ± 36 350 ± 49 140 ± 19
Z+jets 330 ± 22 200 ± 43 7.3 ± 2.4
Single top 430 ± 35 260 ± 21 7.6 ± 1.5
Diboson 6.8 ± 2.1 4.5 ± 1.4 0.1±0.1
tt¯+V 8.7 ± 2.7 21 ± 6 1.8 ± 0.6
Lepton misID 19 ± 10 30 ± 15 1.7 ± 0.4
Total 15000 ± 120 9900 ± 82 340 ± 14
Data 15296 9996 374
4 j, 2 b 4 j, 3 b 4 j, 4 b
tt¯H (125) 22 ± 16 11 ± 8 3.1 ± 2.3
tt¯+ light 4500 ± 150 100 ± 12 1.4 ± 0.3
tt¯+cc¯ 740 ± 170 140 ± 30 4.8 ± 1.1
tt¯+bb¯ 370 ± 59 230 ± 31 30 ± 4
Z+jets 100 ± 33 9.5 ± 3.1 0.4 ± 0.2
Single top 140 ± 23 11 ± 2 0.6 ± 0.1
Diboson 4.2 ± 1.3 0.3 ± 0.1 0.1 ± 0.1
tt¯+V 43 ± 13 7.0 ± 2.1 0.9 ± 0.3
Lepton misID 34 ± 18 3.5 ± 1.8 0.2 ± 0.1
Total 5900 ± 65 520 ± 18 42 ± 4
Data 6006 561 46

The noticeable effect of the light-jet tagging (mistag) systematic uncertainty is explained by the relatively large fraction of the tt¯+light background in the signal region with four b-jets in the single-lepton channel. The tt¯+light events enter the 4-b-tag region through a mistag as opposed to the 3-b-tag region where tagging a c-jet from a W boson decay is more likely. Since the amount of data in the 4-b-tag regions is not large this uncertainty cannot be constrained significantly.

The tt¯+Z background with Zbb¯ is an irreducible background to the tt¯H signal as it has the same number of b-jets in the final state and similar event kinematics. Its normalisation has a notable effect on μ (dμ/dσ(tt¯V)=0.3) and the uncertainty arising from the tt¯+V normalisation cannot be significantly constrained by the fit. Other leading uncertainties include b-tagging and some components of the JES uncertainty.

Uncertainties arising from jet energy resolution, jet vertex fraction, jet reconstruction and JES that affect primarily low pT jets as well as the tt¯+light-jet background modelling uncertainties are constrained mainly in the signal-depleted regions. These uncertainties do not have a significant effect on the fitted value of μ.

Summary

A search has been performed for the Standard Model Higgs boson produced in association with a top-quark pair (tt¯H) using 20.3 fb-1 of pp collision data at s=8TeV collected with the ATLAS detector during the first run of the Large Hadron Collider. The search focuses on Hbb¯ decays, and is performed in events with either one or two charged leptons.

To improve sensitivity, the search employs a likelihood fit to data in several jet and b-tagged jet multiplicity regions. Systematic uncertainties included in the fit are significantly constrained by the data. Discrimination between signal and background is obtained in both final states by employing neural networks in the signal-rich regions. In the single-lepton channel, discriminating variables are calculated using the matrix element technique. They are used in addition to kinematic variables as input to the neural network. No significant excess of events above the background expectation is found for a Standard Model Higgs boson with a mass of 125 GeV. An observed (expected) 95 % confidence-level upper limit of 3.4 (2.2) times the Standard Model cross section is obtained. By performing a fit under the signal-plus-background hypothesis, the ratio of the measured signal strength to the Standard Model expectation is found to be μ=1.5±1.1.

Acknowledgments

We honour the memory of our colleague Richard St.Denis, who was a driving force of the work described here for a long time and died shortly before its completion. We thank CERN for the very successful operation of the LHC, as well as the support staff from our institutions without whom ATLAS could not be operated efficiently. We acknowledge the support of ANPCyT, Argentina; YerPhI, Armenia; ARC, Australia; BMWFW and FWF, Austria; ANAS, Azerbaijan; SSTC, Belarus; CNPq and FAPESP, Brazil; NSERC, NRC and CFI, Canada; CERN; CONICYT, Chile; CAS, MOST and NSFC, China; COLCIENCIAS, Colombia; MSMT CR, MPO CR and VSC CR, Czech Republic; DNRF, DNSRC and Lundbeck Foundation, Denmark; EPLANET, ERC and NSRF, European Union; IN2P3-CNRS, CEA-DSM/IRFU, France; GNSF, Georgia; BMBF, DFG, HGF, MPG and AvH Foundation, Germany; GSRT and NSRF, Greece; RGC, Hong Kong SAR, China; ISF, MINERVA, GIF, I-CORE and Benoziyo Center, Israel; INFN, Italy; MEXT and JSPS, Japan; CNRST, Morocco; FOM and NWO, Netherlands; BRF and RCN, Norway; MNiSW and NCN, Poland; GRICES and FCT, Portugal; MNE/IFA, Romania; MES of Russia and ROSATOM, Russian Federation; JINR; MSTD, Serbia; MSSR, Slovakia; ARRS and MIZŠ, Slovenia; DST/NRF, South Africa; MINECO, Spain; SRC and Wallenberg Foundation, Sweden; SER, SNSF and Cantons of Bern and Geneva, Switzerland; NSC, Taiwan; TAEK, Turkey; STFC, the Royal Society and Leverhulme Trust, United Kingdom; DOE and NSF, United States of America. The crucial computing support from all WLCG partners is acknowledged gratefully, in particular from CERN and the ATLAS Tier-1 facilities at TRIUMF (Canada), NDGF (Denmark, Norway, Sweden), CC-IN2P3 (France), KIT/GridKA (Germany), INFN-CNAF (Italy), NL-T1 (Netherlands), PIC (Spain), ASGC (Taiwan), RAL (UK) and BNL (USA) and in the Tier-2 facilities worldwide.

Appendix A: Higgs boson decay modes

Figure 20 shows the contributions of different Higgs boson decay modes in each of the analysis regions in the single-lepton and dilepton channels. The Hbb¯ decay is the dominant contribution in the signal-rich regions.

Appendix B: Event yields prior to the fit

The event yields prior to the fit for the combined e+jets and μ+jets samples for the different regions considered in the analysis are summarised in Table 6.

Table 6.

Single lepton channel: pre-fit event yields for signal, backgrounds and data in each of the analysis regions. The quoted uncertainties are the sum in quadrature of the statistical and systematic uncertainties on the yields

4 j, 2 b 4 j, 3 b 4 j, 4 b
tt¯H (125) 31 ± 3 13 ± 2 2.0 ± 0.3
tt¯+ light 77000 ± 7500 6200 ± 750 53 ± 12
tt¯+cc¯ 4900 ± 3000 680 ± 390 21 ± 12
tt¯+bb¯ 1800 ± 1100 680 ± 380 44 ± 25
W+jets 5100 ± 3000 220 ± 130 5.5 ± 3.3
Z+jets 1100 ± 600 50 ± 27 0.9 ± 0.6
Single top 4900 ± 640 340 ± 60 6.8 ± 1.6
Diboson 220 ± 71 11 ± 4.1 0.2 ± 0.1
tt¯+V 120 ± 40 15 ± 5.1 0.9 ± 0.3
Lepton misID 1600 ± 620 100 ± 37 3.5 ± 1.3
Total 96000 ± 9500 8300 ± 1100 140 ± 34
Data 98049 8752 161
S/B <0.001 0.002 0.014
S/B 0.099 0.141 0.167
5 j, 2 b 5 j, 3 b 5 j, 4 b
tt¯H (125) 41 ± 2 23 ± 2 6.2 ± 0.8
tt¯+ light 38000 ± 5500 3500 ± 520 61 ± 15
tt¯+cc¯ 4300 ± 2400 810 ± 460 43 ± 25
tt¯+bb¯ 1700 ± 880 890 ± 480 110 ± 63
W+jets 1900 ± 1200 140 ± 87 5.9 ± 3.9
Z+jets 410 ± 240 29 ± 17 1.5 ± 0.9
Single top 1900 ± 360 190 ± 41 8.3 ± 1.3
Diboson 97 ± 39 8.0 ± 3.4 0.4 ± 0.2
tt¯+V 150 ± 48 26 ± 9 3.1 ± 1.0
Lepton misID 460 ± 170 70 ± 28 8.3 ± 3.7
Total 49000 ± 7000 5700 ± 980 250 ± 75
Data 49699 6199 286
S/B 0.001 0.004 0.025
S/B 0.186 0.301 0.397
6 j, 2 b 6 j, 3 b 6 j, 4 b
tt¯H (125) 64 ± 5 40 ± 3 16 ± 2
tt¯+ light 19000 ± 4400 2000 ± 460 52 ± 17
tt¯+cc¯ 3700 ± 2100 850 ± 480 79 ± 46
tt¯+bb¯ 1400 ± 770 970 ± 530 250 ± 130
W+jets 910 ± 620 97 ± 66 8.6 ± 6.2
Z+jets 180 ± 120 19 ± 12 1.5 ± 1.0
Single top 840 ± 220 120 ± 35 12 ± 3.7
Diboson 50 ± 24 6.0 ± 3.0 0.5 ± 0.3
tt¯+V 180 ± 59 45 ± 14 8.5 ± 2.8
Lepton misID 180 ± 66 21 ± 8 1.1 ± 0.5
Total 26000 ± 5800 4200 ± 1000 430 ± 150
Data 26185 4701 516
S/B 0.002 0.01 0.04
S/B 0.393 0.63 0.815

The event yields prior to the fit for the combined ee+jets, μμ+jets and eμ+jets samples for the different regions considered in the dilepton channel are summarised in Table 7.

Table 7.

Dilepton channel: pre-fit event yields for signal, backgrounds and data in each of the analysis regions. The quoted uncertainties are the sum in quadrature of the statistical and systematic uncertainties on the yields

2 j, 2 b 3 j, 2 b 3 j, 3 b
tt¯H (125) 1.5 ± 0.2 5.3 ± 0.5 2.2 ± 0.3
tt¯+ light 14000 ± 1800 8100 ± 880 96 ± 21
tt¯+cc¯ 270 ± 170 600 ± 320 76 ± 44
tt¯+bb¯ 150 ± 87 260 ± 130 120 ± 65
Z+jets 330 ± 30 190 ± 49 8.2 ± 3.1
Single top 430 ± 71 270 ± 30 7.6 ± 3.5
Diboson 6.8 ± 2.2 4.2 ± 1.5 0.1±0.1
tt¯+V 8.4 ± 2.7 21 ± 6 1.9 ± 0.6
Lepton misID 21 ± 10 33 ± 17 0.8 ± 0.4
Total 15000 ± 1900 9500 ± 1000 310 ± 85
Data 15296 9996 374
S/B <0.001 0.001 0.006
S/B 0.012 0.053 0.114
4 j, 2 b 4 j, 3 b 4 j, 4 b
tt¯H (125) 15 ± 1 8.6 ± 0.6 2.7 ± 0.3
tt¯+ light 4400 ± 810 120 ± 31 1.9 ± 0.8
tt¯+cc¯ 710 ± 380 130 ± 74 5.0 ± 3.0
tt¯+bb¯ 290 ± 150 200 ± 100 31 ± 17
Z+jets 100 ± 39 10 ± 4 0.6 ± 0.2
Single top 140 ± 55 11 ± 5 0.8 ± 0.2
Diboson 4.0 ± 1.3 0.4 ± 0.1 0.1±0.1
tt¯+V 45 ± 14 7.8 ± 2.4 1.1 ± 0.4
Lepton misID 38 ± 19 4.3 ± 2.2 0.4 ± 0.2
Total 5800 ± 1000 490 ± 140 43 ± 18
Data 6006 561 46
S/B 0.003 0.015 0.059
S/B 0.197 0.365 0.401

Appendix C: Discrimination power of input variables

Figures 21, 22, 23, 24, 25, 26 and 27 show the discrimination between signal and background for the top four input variables in each region where NN is used in the single-lepton and dilepton channels, respectively. In Fig. 21, the NN is designed to separate tt¯+HF from tt¯+light.

Fig. 21.

Fig. 21

Single-lepton channel: comparison of tt¯+HF (dashed) and tt¯+light (solid) background for the four top-ranked input variables in the (5j,3b) region where the NN is designed to separate these two backgrounds. The plots include a mbbmaxpT, b muuminΔR, c pT,uuminΔR and d mbbminΔR

Fig. 22.

Fig. 22

Single-lepton channel: comparison of tt¯H signal (dashed) and background (solid) for the four top-ranked input variables in the (5j,4b) region. The plots include a Centrality, b H1, c N40jet and d mbbminΔR

Fig. 23.

Fig. 23

Single-lepton channel: comparison of tt¯H signal (dashed) and background (solid) for the four top-ranked input variables in the (6j,3b) region. The plots include a N40jet, b Centrality, c H1, and d SSLL

Fig. 24.

Fig. 24

Single-lepton channel: comparison of tt¯H signal (dashed) and background (solid) for the four top-ranked input variables in the (6j,4b) region. The plots include a D1, b Centrality, c pTjet5, and d H1

Fig. 25.

Fig. 25

Dilepton channel: comparison of tt¯H signal (dashed) and background (solid) for the four top-ranked input variables in the (3j,3b) region. The plots include a ΔηjjmaxΔη, b mjjminm, c HT, and d H4

Fig. 26.

Fig. 26

Dilepton channel: comparison of tt¯H signal (dashed) and background (solid) for the four top-ranked input variables in the (4j,3b) region. The plots include a ΔηjjmaxΔη, b N30Higgs, c mjjminm, and d ΔRbbmaxpT

Fig. 27.

Fig. 27

Dilepton channel: comparison of tt¯H signal (dashed) and background (solid) for the four top-ranked input variables in the (4j,4b) region. The plots include a ΔηjjmaxΔη, b mbbminΔR, c mbb¯, and d ΔRhlminΔR

Appendix D: Tables of systematic uncertainties in the signal region

Tables 8 and 9 show pre-fit and post-fit contributions of the different categories of uncertainties (expressed in  %) for the tt¯H signal and main background processes in the (6j,4b) region of the single-lepton channel and the (4j,4b) region of the dilepton channel, respectively.

Table 8.

Single lepton channel: normalisation uncertainties (expressed in %) on signal and main background processes for the systematic uncertainties considered, before and after the fit to data in (6j,4b) region of the single lepton channel. The total uncertainty can be different from the sum in quadrature of individual sources due to the anti-correlations between them

Pre-fit Post-fit
tt¯H (125) tt¯ + light tt¯+cc¯ tt¯+bb¯ tt¯H (125) tt¯ + light tt¯+cc¯ tt¯+bb¯
6 j, 4 b
   Luminosity ±2.8 ±2.8 ±2.8 ±2.8 ±2.6 ±2.6 ±2.6 ±2.6
   Lepton efficiencies ±1.4 ±1.4 ±1.4 ±1.5 ±1.3 ±1.3 ±1.3 ±1.3
   Jet energy scale ±6.4 ±13 ±11 ±9.2 ±2.3 ±5.3 ±4.7 ±3.6
   Jet efficiencies ±1.7 ±5.2 ±2.7 ±2.5 ±0.7 ±2.3 ±1.2 ±1.1
   Jet energy resolution ±0.1 ±4.4 ±2.5 ±1.6 ±0.1 ±2.3 ±1.3 ±0.8
   b-tagging efficiency ±9.2 ±5.6 ±5.1 ±9.3 ±5.0 ±3.1 ±2.9 ±5.0
   c-tagging efficiency ±1.7 ±6.0 ±12 ±2.4 ±1.4 ±5.1 ±10 ±2.1
   l-tagging efficiency ±1.0 ±19 ±5.2 ±2.1 ±0.6 ±11 ±3.0 ±1.1
   High pT tagging efficiency ±0.6 ±0.7 ±0.6 ±0.3 ±0.4 ±0.3
   tt¯: pT reweighting ±5.4 ±6.1 ±4.7 ±5.4
   tt¯: parton shower ±13 ±16 ±11 ±3.6 ±10 ±6.0
   tt¯ + HF: normalisation ±50 ±50 ±28 ±14
   tt¯ + HF: modelling ±11 ±16 ±8.3 ±3.6 ±9.1 ±7.1
   Theoretical cross sections ±6.3 ±6.3 ±6.3 ±4.1 ±4.1 ±4.1
   tt¯H modelling ±2.7 ±2.6
   Total ±12 ±32 ±59 ±54 ±6.9 ±9.2 ±23 ±12

Table 9.

Dilepton channel: normalisation uncertainties (expressed in % ) on signal and main background processes for the systematic uncertainties considered, before and after the fit to data in (4j,4b) region of the dilepton channel. The total uncertainty can be different from the sum in quadrature of individual sources due to the anti-correlations between them

Pre-fit Post-fit
tt¯H (125) tt¯ + light tt¯+cc¯ tt¯+bb¯ tt¯H (125) tt¯ + light tt¯+cc¯ tt¯+bb¯
4 j, 4 b
   Luminosity ±2.8 ±2.8 ±2.8 ±2.8 ±2.6 ±2.6 ±2.6 ±2.6
   Lepton efficiencies ±2.5 ±2.5 ±2.5 ±2.5 ±1.8 ±1.8 ±1.8 ±1.8
   Jet energy scale ±4.5 ±12 ±9.4 ±7.0 ±2.0 ±5.5 ±4.5 ±3.3
   Jet efficiencies ±5.9 ±1.6 ±0.9 ±2.6 ±0.7 ±0.4
   Jet energy resolution ±0.1 ±4.5 ±1.1 ±0.1 ±2.3 ±0.6
   b-tagging efficiency ±10 ±5.5 ±5.4 ±11 ±5.6 ±3.1 ±3.0 ±5.8
   c-tagging efficiency ±0.5 ±12 ±0.6 ±0.3 ±10 ±0.3
   l-tagging efficiency ±0.7 ±34 ±7.0 ±1.6 ±0.4 ±21 ±4.2 ±0.9
   High pT tagging efficiency ±0.6 ±0.3
   tt¯: pT reweighting ±5.8 ±6.2 ±5.0 ±5.4
   tt¯: parton shower ±14 ±18 ±14 ±4.8 ±11 ±8.1
   tt¯ + HF: normalisation ±50 ±50 ±28 ±14
   tt¯ + HF: modelling ±11 ±16 ±12 ±3.8 ±10 ±10
   Theoretical cross sections ±6.3 ±6.3 ±6.2 ±4.1 ±4.1 ±4.1
   tt¯H modelling ±1.9 ±1.8
   Total ±12 ±40 ±59 ±55 ±6.7 ±22 ±22 ±13

The “Lepton efficiency” category includes systematic uncertainties on electrons and muons listed in Table 3. The “Jet efficiency” category includes uncertainties on the jet vertex fraction and jet reconstruction. The “tt¯ heavy-flavour modelling” category includes uncertainties on the tt¯+bb¯ NLO shape and on the tt¯+cl¯pT reweighting and generator. The “Theoretical cross sections” category includes uncertainties on the single top, diboson, V+jets and tt¯+V theoretical cross sections. The “tt¯H modelling” category includes contributions from tt¯H scale, generator, hadronisation model and PDF choice. The details of the evaluation of the uncertainties can be found in Sect. 8.

Appendix E: Post-fit event yields

The post-fit event yields for the combined single-lepton channel for the different regions considered in the analysis are summarised in Table 10. Similarly, the post-fit event yields for the combined dilepton channels for the different regions are summarised in Table 11.

Appendix F: Post-fit input variables

Figures 28, 29, 30, 31, 32, 33 and 34 show a comparison of data and prediction for the top four input variables in each region with a neural network in the single-lepton channel and dilepton channel, respectively. All of the plots are made using post-fit predictions.

Fig. 28.

Fig. 28

Single-lepton channel: post-fit comparison of data and prediction for the four top-ranked input variables in the (5j,3b) region. The plots include a mbbmaxpT, b muuminΔR, c pT,uuminΔR and d mbbminΔR. The first and last bins in all figures contain the underflow and overflow, respectively. The bottom panel displays the ratio of data to the total prediction. An arrow indicates that the point is off-scale. The hashed area represents the uncertainty on the background

Fig. 29.

Fig. 29

Single-lepton channel: post-fit comparison of data and prediction for the four top-ranked input variables in the (5j,4b) region. The plots include a Centrality, b H1, c N40jet and d mbbminΔR. The first and last bins in all figures contain the underflow and overflow, respectively. The bottom panel displays the ratio of data to the total prediction. An arrow indicates that the point is off-scale. The hashed area represents the uncertainty on the background. The dashed line shows tt¯H signal distribution normalised to background yield. The tt¯H signal yield (solid) is normalised to the fitted μ

Fig. 30.

Fig. 30

Single-lepton channel: post-fit comparison of data and prediction for the four top-ranked input variables in (6j,3b) region. The plots include a N40jet, b Centrality, c H1, and d SSLL. The first and last bins in all figures contain the underflow and overflow, respectively. The bottom panel displays the ratio of data to the total prediction. An arrow indicates that the point is off-scale. The hashed area represents the uncertainty on the background. The dashed line shows tt¯H signal distribution normalised to background yield. The tt¯H signal yield (solid) is normalised to the fitted μ

Fig. 31.

Fig. 31

Single-lepton channel: post-fit comparison of data and prediction for the four top-ranked input variables in (6j,4b) region. The plots include a D1, b Centrality, c pTjet5, and d H1. The first and last bins in all figures contain the underflow and overflow, respectively. The bottom panel displays the ratio of data to the total prediction. An arrow indicates that the point is off-scale. The hashed area represents the uncertainty on the background. The dashed line shows tt¯H signal distribution normalised to background yield. The tt¯H signal yield (solid) is normalised to the fitted μ

Fig. 32.

Fig. 32

Dilepton channel: post-fit comparison of data and prediction for the four top-ranked input variables in the (3j,3b) region. The plots include a ΔηjjmaxΔη, b mjjminm, c HT, and d H4. The first and last bins in all figures contain the underflow and overflow, respectively. The bottom panel displays the ratio of data to the total prediction. An arrow indicates that the point is off-scale. The hashed area represents the uncertainty on the background. The dashed line shows tt¯H signal distribution normalised to background yield. The tt¯H signal yield (solid) is normalised to the fitted μ

Fig. 33.

Fig. 33

Dilepton channel: post-fit comparison of data and prediction for the four top-ranked input variables in the (4j,3b) region. The plots include a ΔηjjmaxΔη, b N30Higgs, c mjjminm, and d ΔRbbmaxpT. The first and last bins in all figures contain the underflow and overflow, respectively. The bottom panel displays the ratio of data to the total prediction. An arrow indicates that the point is off-scale. The hashed area represents the uncertainty on the background. The dashed line shows tt¯H signal distribution normalised to background yield. The tt¯H signal yield (solid) is normalised to the fitted μ

Fig. 34.

Fig. 34

Dilepton channel: post-fit comparison of data and prediction for the four top-ranked input variables in the (4j,4b) region. The plots include a ΔηjjmaxΔη, b mbbminΔR, c mbb¯, and d ΔRhlminΔR. The first and last bins in all figures contain the underflow and overflow, respectively. The bottom panel displays the ratio of data to the total prediction. An arrow indicates that the point is off-scale. The hashed area represents the uncertainty on the background. The dashed line shows tt¯H signal distribution normalised to background yield. The tt¯H signal yield (solid) is normalised to the fitted μ

Footnotes

1

ATLAS uses a right-handed coordinate system with its origin at the nominal interaction point (IP) in the centre of the detector and the z-axis coinciding with the axis of the beam pipe. The x-axis points from the IP to the centre of the LHC ring, and the y-axis points upward. Cylindrical coordinates (r, ϕ) are used in the transverse plane, ϕ being the azimuthal angle around the beam pipe. The pseudorapidity is defined in terms of the polar angle θ as η=-lntan(θ/2). Transverse momentum and energy are defined as pT=psinθ and ET=Esinθ, respectively.

References

  • 1.Glashow SL. Partial symmetries of weak interactions. Nucl. Phys. 1961;22:579. doi: 10.1016/0029-5582(61)90469-2. [DOI] [Google Scholar]
  • 2.Weinberg S. A model of leptons. Phys. Rev. Lett. 1967;19:1264–1266. doi: 10.1103/PhysRevLett.19.1264. [DOI] [Google Scholar]
  • 3.A. Salam, Weak and electromagnetic interactions. In: Proceedings of the 8th Nobel Symposium, vol. 367 (1969)
  • 4.Englert F, Brout R. Broken symmetry and the mass of Gauge vector mesons. Phys. Rev. Lett. 1964;13:321. doi: 10.1103/PhysRevLett.13.321. [DOI] [Google Scholar]
  • 5.Higgs PW. Broken Symmetries and the Masses of Gauge Bosons. Phys. Rev. Lett. 1964;13:508. doi: 10.1103/PhysRevLett.13.508. [DOI] [Google Scholar]
  • 6.Higgs PW. Broken symmetries, massless particles and Gauge fields. Phys. Lett. 1964;12:132. doi: 10.1016/0031-9163(64)91136-9. [DOI] [Google Scholar]
  • 7.Guralnik G, Hagen C, Kibble T. Global conservation laws and mass-less particles. Phys. Rev. Lett. 1964;13:585. doi: 10.1103/PhysRevLett.13.585. [DOI] [Google Scholar]
  • 8.ATLAS Collaboration, Observation of a new particle in the search for the standard model Higgs boson with the ATLAS detector at the LHC. Phys. Lett. B 716, 1 (2012). arXiv:1207.7214 [hep-ex]
  • 9.CMS Collaboration, Observation of a new boson at a mass of 125 GeV with the CMS experiment at the LHC. Phys. Lett. B 716, 30 (2012). arXiv:1207.7235 [hep-ex]
  • 10.ATLAS Collaboration, Measurements of Higgs boson production and couplings in diboson final states with the ATLAS detector at the LHC. Phys. Lett. B 726, 88 (2013). arXiv:1307.1427 [hep-ex]
  • 11.ATLAS Collaboration, Evidence for the spin-0 nature of the Higgs boson using ATLAS data. Phys. Lett. B 726, 120 (2013). arXiv:1307.1432 [hep-ex]
  • 12.ATLAS Collaboration, Evidence for the Higgs-boson Yukawa coupling to tau leptons with the ATLAS detector. arXiv:1501.04943 [hep-ex]
  • 13.CMS Collaboration, Precise determination of the mass of the Higgs boson and tests of compatibility of its couplings with the standard model predictions using proton collisions at 7 and 8 Tev. arXiv:1412.8662 [hep-ex] [DOI] [PMC free article] [PubMed]
  • 14.CMS Collaboration, Evidence for the direct decay of the 125 GeV Higgs boson to fermions. Nature Phys. 10, 557 (2014). arXiv:1401.6527 [hep-ex]
  • 15.CMS Collaboration, Constraints on the spin-parity and anomalous HVV couplings of the Higgs boson in proton collisions at 7 and 8 Tev. arXiv:1411.3441 [hep-ex]
  • 16.Ng JN, Zakarauskas P. QCD-parton calculation of conjoined production of Higgs bosons and heavy flavors in p anti-p collisions. Phys. Rev. D. 1984;29:876. doi: 10.1103/PhysRevD.29.876. [DOI] [Google Scholar]
  • 17.Kunszt Z. Associated production of heavy Higgs boson with top quarks. Nucl. Phys. B. 1984;29:876. [Google Scholar]
  • 18.Dawson S, Orr LH, Reina L, Wackeroth D. Associated top quark Higgs boson production the LHC. Phys. Rev. D. 2003;67:071503. doi: 10.1103/PhysRevD.67.071503. [DOI] [Google Scholar]
  • 19.Beenakker W, et al. Higgs radiation off top quarks at the tevatron and the LHC. Phys. Rev. Lett. 2001;87:201805. doi: 10.1103/PhysRevLett.87.201805. [DOI] [PubMed] [Google Scholar]
  • 20.F. Bezrukov, M. Shaposhnikov, Why should we care about the top quark Yukawa coupling? arXiv:1411.1923 [hep-ph]
  • 21.ATLAS Collaboration, Search for the bb decay of the Standard Model Higgs boson in associated (W/Z)H production with the ATLAS detector. JHEP 01, 069 (2015). arXiv:1409.6212 [hep-ex]
  • 22.Collaboration CMS. Search for the standard model Higgs boson produced in association with a W or a Z boson and decaying to bottom quarks. Phys. Rev. D. 2014;89:012003. doi: 10.1103/PhysRevD.89.012003. [DOI] [Google Scholar]
  • 23.CDF and D0 Collaboration, T. Aaltonen et al., Evidence for a particle produced in association with weak bosons and decaying to a bottom–antibottom quark pair in higgs boson searches at the tevatron. Phys. Rev. Lett. 109, 071804 (2012). arXiv:1207.6436 [hep-ex] [DOI] [PubMed]
  • 24.CMS Collaboration, Search for the associated production of the Higgs boson with a top-quark pair. JHEP 09, 087 (2014). arXiv:1408.1682 [hep-ex]
  • 25.ATLAS Collaboration, The ATLAS experiment at the CERN large hadron collider. JINST 3, S08003 (2008)
  • 26.ATLAS Collaboration, Electron reconstruction and identification efficiency measurements with the ATLAS detector using the 2011 LHC proton-proton collision data. Eur. Phys. J. C 74, 2941 (2014). arXiv:1404.2240 [hep-ex] [DOI] [PMC free article] [PubMed]
  • 27.ATLAS Collaboration, Electron efficiency measurements with the ATLAS detector using the 2012 LHC proton–proton collision data. ATLAS-CONF-2014-032 (2014). http://cds.cern.ch/record/1706245 [DOI] [PMC free article] [PubMed]
  • 28.ATLAS Collaboration, Measurement of the muon reconstruction performance of the ATLAS detector using 2011 and 2012 LHC proton–proton collision data. Eur. Phys. J. C 74, 3130 (2014). arXiv:1407.3935 [hep-ex] [DOI] [PMC free article] [PubMed]
  • 29.ATLAS Collaboration, Jet energy measurement with the ATLAS detector in proton–proton collisions at s=7Tev. Eur. Phys. J. C 73, 2304 (2013). arXiv:1112.6426 [hep-ex]
  • 30.Cacciari M, Salam GP, Soyez G. The anti-kt jet clustering algorithm. JHEP. 2008;04:063. doi: 10.1088/1126-6708/2008/04/063. [DOI] [Google Scholar]
  • 31.Cacciari M, Salam GP. Dispelling the N3 myth for the kt jet-finder. Phys. Lett. B. 2006;641:57. doi: 10.1016/j.physletb.2006.08.037. [DOI] [Google Scholar]
  • 32.M. Cacciari, G.P. Salam, G. Soyez, FastJet User Manual. Eur. Phys. J. C 72, 1896 (2012). http://fastjet.fr/. arXiv:1111.6097 [hep-ph]
  • 33.C. Cojocaru et al., Hadronic calibration of the ATLAS liquid argon end-cap calorimeter in the pseudorapidity region 1.6|η|1.8 in beam tests. Nucl. Instr. Meth. A 531, 481 (2004). arXiv:physics/0407009
  • 34.T. Barillari et al., Local hadronic calibration. ATL-LARG-PUB-2009-001 (2009). http://cds.cern.ch/record/1112035
  • 35.ATLAS Collaboration, Jet energy measurement and its systematic uncertainty in proton–proton collisions at s=7 Tev with the ATLAS detector. Eur. Phys. J. C 75, 17 (2015). arXiv:1406.0076 [hep-ph] [DOI] [PMC free article] [PubMed]
  • 36.ATLAS Collaboration, Calibration of the performance of b-tagging for c and light-flavour jets in the 2012 ATLAS data. ATLAS-CONF-2014-046 (2014). http://cds.cern.ch/record/1741020
  • 37.ATLAS Collaboration, Calibration of b-tagging using dileptonic top pair events in a combinatorial likelihood approach with the ATLAS experiment. ATLAS-CONF-2014-004 (2014). http://cds.cern.ch/record/1664335
  • 38.ATLAS Collaboration, Measurement of the top quark-pair production cross section with ATLAS in pp collisions at s=7Tev. Eur. Phys. J. C 71, 1577 (2011). arXiv:1012.1792 [hep-ex]
  • 39.Nason P. A new method for combining NLO QCD with shower Monte Carlo algorithms. JHEP. 2004;11:040. doi: 10.1088/1126-6708/2004/11/040. [DOI] [Google Scholar]
  • 40.S. Frixione, P. Nason, C. Oleari, Matching NLO QCD computations with Parton Shower simulations: the POWHEG method. arXiv:0709.2092 [hep-ph]
  • 41.Alioli S, Nason P, Oleari C, Re E. A general framework for implementing NLO calculations in shower Monte Carlo programs: the POWHEG BOX. JHEP. 2010;06:040. [Google Scholar]
  • 42.Lai H-L, et al. New parton distributions for collider physics. Phys. Rev. D. 2010;82:074024. doi: 10.1103/PhysRevD.82.074024. [DOI] [Google Scholar]
  • 43.T. Sjöstrand, S. Mrenna, P. Skands, Pythia 6.4 physics and manual. JHEP 05, 026 (2006). arXiv:hep-ph/0603175
  • 44.Nadolsky PM, et al. Implications of CTEQ global analysis for collider observables. Phys. Rev. D. 2008;78:013004. doi: 10.1103/PhysRevD.78.013004. [DOI] [Google Scholar]
  • 45.Skands PZ. Tuning Monte Carlo generators: the Perugia tunes. Phys. Rev. D. 2010;82:074018. doi: 10.1103/PhysRevD.82.074018. [DOI] [Google Scholar]
  • 46.Czakon M, Mitov A. Top++: a program for the calculation of the top-pair cross-section at hadron colliders. Comput. Phys. Commun. 2014;185:2930. doi: 10.1016/j.cpc.2014.06.021. [DOI] [Google Scholar]
  • 47.Cacciari M, Czakon M, Mangano M, Mitov A, Nason P. Top-pair production at hadron colliders with next-to-next-to-leading logarithmic soft-gluon resummation. Phys. Lett. B. 2012;710:612. doi: 10.1016/j.physletb.2012.03.013. [DOI] [Google Scholar]
  • 48.Bärnreuther P, Czakon M, Mitov A. Percent level precision physics at the tevatron: first genuine NNLO QCD corrections to qq¯tt¯. Phys. Rev. Lett. 2012;109:132001. doi: 10.1103/PhysRevLett.109.132001. [DOI] [PubMed] [Google Scholar]
  • 49.Czakon M, Mitov A. NNLO corrections to top-pair production at hadron colliders: the all-fermionic scattering channels. JHEP. 2012;1212:054. doi: 10.1007/JHEP12(2012)054. [DOI] [Google Scholar]
  • 50.Czakon M, Mitov A. NNLO corrections to top-pair production at hadron colliders: the quark–gluon reaction. JHEP. 2013;1301:080. doi: 10.1007/JHEP01(2013)080. [DOI] [Google Scholar]
  • 51.Czakon M, Fiedler P, Mitov A. The total top quark pair production cross-section at hadron colliders through O(αS4) Phys. Rev. Lett. 2013;110:252004. doi: 10.1103/PhysRevLett.110.252004. [DOI] [PubMed] [Google Scholar]
  • 52.Alwall J, Herquet M, Maltoni F, Mattelaer O, Stelzer T. MadGraph 5: going beyond. JHEP. 2011;1106:128. doi: 10.1007/JHEP06(2011)128. [DOI] [Google Scholar]
  • 53.Mangano ML, Moretti M, Pittau R. Multijet matrix elements and shower evolution in hadronic collisions: Wbb¯+n jets as a case study. Nucl. Phys. B. 2002;632:343. doi: 10.1016/S0550-3213(02)00249-3. [DOI] [Google Scholar]
  • 54.Cascioli F, Maierhöfer P, Moretti N, Pozzorini S, Siegert F. NLO matching for ttbb production with massive b-quarks. Phys. Lett. B. 2014;734:210. doi: 10.1016/j.physletb.2014.05.040. [DOI] [Google Scholar]
  • 55.T. Gleisberg et al., Event generation with SHERPA 1.1. JHEP 0902, 007 (2009). arXiv:0811.4622 [hep-ph]
  • 56.Cascioli F, Maierhöfer P, Pozzorini S. Scattering amplitudes with open loops. Phys. Rev. Lett. 2012;108:111601. doi: 10.1103/PhysRevLett.108.111601. [DOI] [PubMed] [Google Scholar]
  • 57.ATLAS collaboration, Measurements of normalized differential cross sections for tt¯ production in pp collisions at s=7 TeV using the ATLAS detector. Phys. Rev. D 90, 072004 (2014). arXiv:1407.0371 [hep-ex]
  • 58.ATLAS Collaboration, Measurement of the production cross section of jets in association with a Z boson in pp collisions at 7 TeV using the ATLAS detector. JHEP 07, 32 (2013). arXiv:1304.7098 [hep-ex]
  • 59.Mangano M, Moretti M, Piccinini F, Pittau R, Polosa A. ALPGEN, a generator for hard multiparton processes in hadronic collisions. JHEP. 2003;07:001. doi: 10.1088/1126-6708/2003/07/001. [DOI] [Google Scholar]
  • 60.Corcella G, et al. HERWIG 6: an event generator for hadron emission reactions with interfering gluons (including supersymmetric processes) JHEP. 2001;01:010. doi: 10.1088/1126-6708/2001/01/010. [DOI] [Google Scholar]
  • 61.Melnikov K, Petriello F. Electroweak gauge boson production at hadron colliders through O(αs2) Phys. Rev. D. 2006;74:114017. doi: 10.1103/PhysRevD.74.114017. [DOI] [Google Scholar]
  • 62.Campbell J, Ellis R. An update on vector boson pair production at hadron colliders. Phys. Rev. D. 1999;60:113006. doi: 10.1103/PhysRevD.60.113006. [DOI] [Google Scholar]
  • 63.Frixione S, Laenen E, Motylinski P, White C, Webber BR. Single-top hadroproduction in association with a W boson. JHEP. 2008;07:029. doi: 10.1088/1126-6708/2008/07/029. [DOI] [Google Scholar]
  • 64.Kidonakis N. Next-to-next-to-leading-order collinear and soft gluon corrections for t-channel single top quark production. Phys. Rev. D. 2011;83:091503. doi: 10.1103/PhysRevD.83.091503. [DOI] [Google Scholar]
  • 65.Kidonakis N. Next-to-next-to-leading logarithm resummation for s-channel single top quark production. Phys. Rev. D. 2010;81:054028. doi: 10.1103/PhysRevD.81.054028. [DOI] [PubMed] [Google Scholar]
  • 66.Kidonakis N. Two-loop soft anomalous dimensions for single top quark associated production with a W- or H- Phys. Rev. D. 2010;82:054018. doi: 10.1103/PhysRevD.82.054018. [DOI] [Google Scholar]
  • 67.Martin A, Stirling W, Thorne R, Watt G. Parton distributions for the LHC. Eur. Phys. J. C. 2009;63:189. doi: 10.1140/epjc/s10052-009-1072-5. [DOI] [Google Scholar]
  • 68.Martin A, Stirling W, Thorne R, Watt G. Uncertainties on αS in global PDF analyses and implications for predicted hadronic cross sections. Eur. Phys. J. C. 2009;64:653. doi: 10.1140/epjc/s10052-009-1164-2. [DOI] [Google Scholar]
  • 69.ATLAS Collaboration, New ATLAS event generator tunes to 2010 data. ATL-PHYS-PUB-2011-009 (2011). http://cds.cern.ch/record/1345343
  • 70.Campbell JM, Ellis RK. tt¯W production and decay at NLO. JHEP. 2012;1207:052. doi: 10.1007/JHEP07(2012)052. [DOI] [Google Scholar]
  • 71.Garzelli MV, Kardos A, Papadopoulos CG, Trocsanyi Z. tt¯W and tt¯Z hadroproduction at NLO accuracy in QCD with parton shower and hadronization effects. JHEP. 2012;1211:056. doi: 10.1007/JHEP11(2012)056. [DOI] [Google Scholar]
  • 72.Bevilacqua G, et al. HELAC-NLO. Comput. Phys. Commun. 2013;184:986. doi: 10.1016/j.cpc.2012.10.033. [DOI] [Google Scholar]
  • 73.Garzelli M, Kardos A, Papadopoulos C, Trocsanyi Z. Standard model Higgs boson production in association with a top anti-top pair at NLO with parton showering. EPL. 2011;96:11001. doi: 10.1209/0295-5075/96/11001. [DOI] [Google Scholar]
  • 74.T. Sjöstrand, S. Mrenna, P. Skands, A brief introduction to Pythia 8.1. arXiv:0710.3820 [hep-ph]
  • 75.ATLAS Collaboration, Summary of ATLAS Pythia 8 tunes. ATL-PHYS-PUB-2012-003 (2012). http://cds.cern.ch/record/1474107
  • 76.S. Dawson, C. Jackson, L. Orr, L. Reina, D. Wackeroth, Associated Higgs production with top quarks at the large hadron collider: NLO QCD corrections. Phys. Rev. D 68, 034022 (2003). arXiv:hep-ph/0305087
  • 77.L. Reina, S. Dawson, Next-to-leading order results for tt¯H production at the tevatron. Phys. Rev. Lett. 87, 201804 (2001). arXiv:hep-ph/0107101 [DOI] [PubMed]
  • 78.W. Beenakker et al., NLO QCD corrections to tt¯H production in hadron collisions. Nucl. Phys. B 653, 151–203 (2003). arXiv:hep-ph/0211352
  • 79.A. Djouadi, J. Kalinowski, M. Spira, HDECAY: a program for Higgs boson decays in the standard model and its supersymmetric extension. Comput. Phys. Commun. 108, 56–74 (1998). arXiv:hep-ph/9704448
  • 80.A. Bredenstein, A. Denner, S. Dittmaier, M. Weber, Precise predictions for the Higgs-boson decay HWW/ZZ4 leptons. Phys. Rev. D 74, 013004 (2006). arXiv:hep-ph/0604011
  • 81.Actis S, Passarino G, Sturm C, Uccirati S. NNLO computational techniques: the cases Hγγ and Hgg. Nucl. Phys. B. 2009;811:182–273. doi: 10.1016/j.nuclphysb.2008.11.024. [DOI] [Google Scholar]
  • 82.Denner A, Heinemeyer S, Puljak I, Rebuzzi D, Spira M. Standard model Higgs-boson branching ratios with uncertainties. Eur. Phys. J. C. 2011;71:1753. doi: 10.1140/epjc/s10052-011-1753-8. [DOI] [Google Scholar]
  • 83.LHC Higgs Cross Section Working Group Collaboration, S. Dittmaier et al., Handbook of LHC Higgs Cross Sections: 1. Inclusive Observables. arXiv:1101.0593 [hep-ph]
  • 84.J. Butterworth, J. Forshaw, M. Seymour, Multiparton interactions in photoproduction at HERA. Z. Phys. C 72, 637 (1996). arXiv:hep-ph/9601371
  • 85.P. Golonka, Z. Wa̧s, PHOTOS Monte Carlo: a precision tool for QED corrections in Z and W decays. Eur. Phys. J. C 45, 97 (2006). arXiv:hep-ph/0506026
  • 86.Jadach S. TAUOLA—a library of Monte Carlo programs to simulate decays of polarized τ leptons. Comput. Phys. Commun. 1991;64:275. doi: 10.1016/0010-4655(91)90038-M. [DOI] [Google Scholar]
  • 87.ATLAS Collaboration, ATLAS tunes of PYTHIA6 and PYTHIA8 for MC11. ATL-PHYS-PUB-2011-008 (2011). http://cds.cern.ch/record/1363300
  • 88.ATLAS Collaboration, The ATLAS simulation infrastructure. Eur. Phys. J. C 70, 823 (2010). arXiv:1005.4568 [physics.ins-det]
  • 89.Agostinelli S, et al. Geant4: a simulation toolkit. Nucl. Instr. Meth. A. 2003;506(3):250. doi: 10.1016/S0168-9002(03)01368-8. [DOI] [Google Scholar]
  • 90.ATLAS Collaboration, The simulation principle and performance of the ATLAS fast calorimeter simulation FastCaloSim. ATL-PHYS-PUB-2010-013 (2010). http://cds.cern.ch/record/1300517
  • 91.D0 Collaboration, V.M. Abazov et al., Measurement of the tt¯ production cross section in pp collisions at sqrts=1.96 TeV using secondary vertex b-tagging. Phys. Rev. D 74, 112004 (2006). arXiv:hep-ex/0611002 [DOI] [PubMed]
  • 92.Feindt M, Kerzel U. The NeuroBayes neural network package. NIM. 2006;A559:190. doi: 10.1016/j.nima.2005.11.166. [DOI] [Google Scholar]
  • 93.Barger V, Ohnemus J, Phillips R. Event shape criteria for single lepton top signals. Phys. Rev. D. 1993;48:3953. doi: 10.1103/PhysRevD.48.R3953. [DOI] [PubMed] [Google Scholar]
  • 94.K. Kondo, Dynamical likelihood method for reconstruction of events with missing momentum. 1: method and Toy models. J. Phys. Soc. Jpn. 57, 4126–4140 (1988)
  • 95.D0 Collaboration, V.M. Abazov et al., A precision measurement of the mass of the top quark. Nature 429, 638–642 (2004). arXiv:hep-ex/0406031 [DOI] [PubMed]
  • 96.Collaboration CDF, Abulencia A, et al. Precision measurement of the top-quark mass from dilepton events at CDF II. Phys. Rev. D. 2007;75:031105. doi: 10.1103/PhysRevD.75.031105. [DOI] [Google Scholar]
  • 97.D0 Collaboration, V.M. Abazov et al., Observation of single top-quark production. Phys. Rev. Lett. 103, 092001 (2009). arXiv:0903.0850 [hep-ex] [DOI] [PubMed]
  • 98.Collaboration CDF, Aaltonen T, et al. First observation of electroweak single top quark production. Phys. Rev. Lett. 2009;103:092002. doi: 10.1103/PhysRevLett.103.092002. [DOI] [PubMed] [Google Scholar]
  • 99.CMS Collaboration, Search for a standard model Higgs boson produced in association with a top-quark pair and decaying to bottom quarks using a matrix element method. arXiv:1502.02485 [hep-ex] [DOI] [PMC free article] [PubMed]
  • 100.J. Neyman, E. Pearson, Phil. Trans. R. Soc. Lond. A 231, 694–706, 289–337 (1933)
  • 101.Erdmann J, et al. A likelihood-based reconstruction algorithm for top-quark pairs and the KLFitter framework. Nucl. Instr. Meth. A. 2013;748:18. doi: 10.1016/j.nima.2014.02.029. [DOI] [Google Scholar]
  • 102.M.R. Whalley, D. Bourilkov, R.C. Group, The Les Houches accord PDFs (LHAPDF) and LHAGLUE. arXiv:hep-ex/0508110
  • 103.Lepage GP. A new algorithm for adaptive multidimensional integration. J. Comput. Phys. 1978;27:192. doi: 10.1016/0021-9991(78)90004-9. [DOI] [Google Scholar]
  • 104.M. Galassi et al., GNU scientific library reference manual. 3rd ed. ISBN: 0954612078 (2009)
  • 105.ATLAS Collaboration, Improved luminosity determination in pp collisions at s=7Tev using the ATLAS detector at the LHC. Eur. Phys. J. C 73, 2518 (2013). arXiv:1302.4393 [hep-ex] [DOI] [PMC free article] [PubMed]
  • 106.M. Botje et al., The PDF4LHC Working Group Interim Recommendations. arXiv:1101.0538 [hep-ph]
  • 107.Gao J, et al. The CT10 NNLO global analysis of QCD. Phys. Rev. D. 2014;89:033009. doi: 10.1103/PhysRevD.89.033009. [DOI] [Google Scholar]
  • 108.Ball RD, et al. Parton distributions with LHC data. Nucl. Phys. B. 2013;867:244. doi: 10.1016/j.nuclphysb.2012.10.003. [DOI] [Google Scholar]
  • 109.Alwall J, et al. The automated computation of tree-level and next-to-leading order differential cross sections, and their matching to parton shower simulations. JHEP. 2014;1407:079. doi: 10.1007/JHEP07(2014)079. [DOI] [Google Scholar]
  • 110.Bähr M, et al. Herwig++ physics and manual. Eur. Phys. J. C. 2008;58:639. doi: 10.1140/epjc/s10052-008-0798-9. [DOI] [Google Scholar]
  • 111.J. Bellm et al., Herwig++ 2.7 Release Note. arXiv:1310.6877 [hep-ph]
  • 112.Junk T. Confidence level computation for combining searches with small statistics. Nucl. Instr. Meth. A. 1999;434:435. doi: 10.1016/S0168-9002(99)00498-2. [DOI] [Google Scholar]
  • 113.Read AL. Presentation of search results: the CLs technique. J. Phys. G. 2002;28:2693. doi: 10.1088/0954-3899/28/10/313. [DOI] [Google Scholar]
  • 114.Cowan G, Cranmer K, Gross E, Vitells O. Asymptotic formulae for likelihood-based tests of new physics. Eur. Phys. J. C. 2011;71:1554. doi: 10.1140/epjc/s10052-011-1554-0. [DOI] [Google Scholar]
  • 115.W. Verkerke, D. Kirkby, The RooFit toolkit for data modeling. arXiv:physics/0306116
  • 116.W. Verkerke, D. Kirkby, RooFit users manual. http://roofit.sourceforge.net/

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