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PLOS ONE logoLink to PLOS ONE
. 2016 Aug 23;11(8):e0159641. doi: 10.1371/journal.pone.0159641

Users Polarization on Facebook and Youtube

Alessandro Bessi 1,2, Fabiana Zollo 2, Michela Del Vicario 2, Michelangelo Puliga 2, Antonio Scala 2,3, Guido Caldarelli 2,3, Brian Uzzi 4, Walter Quattrociocchi 2,3,*
Editor: Tobias Preis5
PMCID: PMC4994967  PMID: 27551783

Abstract

Users online tend to select information that support and adhere their beliefs, and to form polarized groups sharing the same view—e.g. echo chambers. Algorithms for content promotion may favour this phenomenon, by accounting for users preferences and thus limiting the exposure to unsolicited contents. To shade light on this question, we perform a comparative study on how same contents (videos) are consumed on different online social media—i.e. Facebook and YouTube—over a sample of 12M of users. Our findings show that content drives the emergence of echo chambers on both platforms. Moreover, we show that the users’ commenting patterns are accurate predictors for the formation of echo-chambers.

Introduction

The diffusion of social media caused a shift of paradigm in the creation and consumption of information. We passed from a mediated (e.g., by journalists) to a more disintermediated selection process. Such a disintermediation elicits the tendencies of the users to a) select information adhering to their system of beliefs—i.e., confirmation bias—and b) to form groups of like minded people where they polarize their view—i.e. echo chambers [16]. Polarized communities emerge around diverse and heteorgeneous narratives often reflecting extreme disagreement with respect to the main stream news and recommended practices. The emergence of polarization in online environments might reduce viewpoint heterogeneity, which has long been viewed as an important component of democratic societies [7, 8].

Confirmation bias has been shown to play a pivotal role in the diffusion of rumors online [9]. However, on online social media, different algorithms foster personalized contents according to user tastes—i.e. they show users viewpoints that they already agree with. The role of these algorithms in influencing the emergence of echo chambers is still a matter of debate. Indeed, little is known about the factors affecting the algorithms’ outcomes. Facebook promotes posts according to the News Feed algorithm, that helps users to see more stories from friends they interact with the most, and the number of comments and likes a post receives and what kind of story it is—e.g. photo, video, status update—can also make a post more likely to appear [10]. Conversely, YouTube promotes videos through Watch Time, which prioritizes videos that lead to a longer overall viewing session over those that receive more clicks [11]. Not much is known about the role of cognitive factors in driving users to aggregate in echo chambers supporting their preferred narrative. Recent studies suggest confirmation bias as one of the driving forces of content selection, which eventually leads to the emergence of polarized communities where users acquire confirmatory information and ignore dissenting content [1217].

To shade light on the role of algorithms for content promotion in the emergence of echo chambers, we analyze the users behavior exposed to the same contents on different platforms—i.e. Youtube and Facebook. We focus on Facebook posts linking Youtube videos reported on Science and Conspiracy pages. We then compare the users interaction with these videos on both platforms.

We limit our analysis to Science and Conspiracy for two main reasons: a) scientific news and conspiracy-like news are two very distinct and conflicting narratives; b) scientific pages share the main mission to diffuse scientific knowledge and rational thinking, while the alternative ones resort to unsubstantiated rumors.

Indeed, conspiracy-like pages disseminate myth narratives and controversial information, usually lacking supporting evidence and most often contradictory of the official news. Moreover, the spreading of misinformation on online social media has become a widespread phenomenon to an extent that the World Economic Forum listed massive digital misinformation as one of the main threats for the modern society [16, 18].

In spite of different debunking strategies, unsubstantiated rumors—e.g. those supporting anti-vaccines claims, climate change denials, and alternative medicine myths—keep proliferating in polarized communities emerging on online environments [9, 14], leading to a climate of disengagement from mainstream society and recommended practices. A recent study [19] pointed out the inefficacy of debunking and the concrete risk of a backfire effect [20, 21] from the usual and most committed consumers of conspiracy-like narratives.

We believe that additional insights about cognitive factors and behavioral patterns driving the emergence of polarized environments are crucial to understand and develop strategies to mitigate the spreading of online misinformation.

In this paper, using a quantitative analysis on a massive dataset (12M of users), we compare consumption patterns of videos supporting scientific and conspiracy-like news on Facebook and Youtube. We extend our analysis by investigating the polarization dynamics—i.e. how users become polarized comment after comment. On both platforms, we observe that some users interact only with a specific kind of content since the beginning, whereas others start their commenting activity by switching between contents supporting different narratives. The vast majority of the latter—after the initial switching phase—starts consuming mainly one type of information, becoming polarized towards one of the two conflicting narratives. Finally, by means of a multinomial logistic model, we are able to predict with a good precision the probability of whether a user will become polarized towards a given narrative or she will continue to switch between information supporting competing narratives. The observed evolution of polarization is similar between Facebook and YouTube to an extent that the statistical learning model trained on Facebook is able to predict with a good precision the polarization of YouTube users, and vice versa. Our findings show that contents more than the algorithms lead to the aggregation of users in different echo chambers.

Results and Discussion

We start our analysis by focusing on the statistical signatures of content consumption on Facebook and Youtube videos. The focus is on all videos posted by conspiracy-like and scientific pages on Facebook. We compare the consumption patterns of the same video on both Facebook and Youtube. On Facebook a like stands for a positive feedback to the post; a share expresses the will to increase the visibility of a given information; and a comment is the way in which online collective debates take form around the topic promoted by posts. Similarly, on YouTube a like stands for a positive feedback to the video; and a comment is the way in which online collective debates grow around the topic promoted by videos.

Contents Consumption across Facebook and YouTube

As a preliminary analysis we measure the similarity of the users reaction to the same videos on both platforms. Focusing on the consumptions patterns of YouTube videos posted on Facebook pages, we compute the Spearman’s rank correlation coefficients between users’ actions on Facebook posts and the related YouTube videos (see Fig 1). We find strong correlations on how users like, comment and share videos on Facebook and Youtube. Despite the different algorithm for content promotion, information reverberate in a similar way.

Fig 1. Correlation Matrix.

Fig 1

Spearman’s rank correlation coefficients between users’ actions on Facebook posts and the related YouTube videos.

By means of the Mantel test [22] we find a statistically significant (simulated p-value <0.01, based on 104 Monte Carlo replicates), high, and positive (r = 0.987) correlation between the correlation matrices of Science and Conspiracy. In particular, we find positive and high correlations between users’ actions on YouTube videos for both Science and Conspiracy, indicating a similar strong monotone increasing relationship between views, likes, and comments. Furthermore, we observe positive and mild correlations between users’ actions on Facebook posts linking YouTube videos for both Science and Conspiracy, suggesting a monotone increasing relationship between likes, comments, and shares. Conversely, we find positive yet low correlations between users’ actions across YouTube videos and the Facebook posts linking the videos for both Science and Conspiracy, implying that the success—in terms of received attention—of videos posted on YouTube does not ensure a comparable success on Facebook, and vice versa. This evidence suggests that the social response to information is similar on different contents and platforms.

As a further analysis we focus on the volume of actions to each post. In Fig 2 we show the empirical Cumulative Complementary Distribution Functions (CCDFs) of the consumption patterns of videos supporting conflicting narratives—i.e. Science and Conspiracy—in terms of comments and likes on Facebook and YouTube. The double-log scale plots highlight the power law behavior of each distribution. Top right panel shows the CCDFs of the number of likes received by Science (xmin = 197 and θ = 1.96) and Conspiracy (xmin = 81 and θ = 1.91) on Facebook. Top left panel shows the CCDFs of the number of comments received by Science (xmin = 35 and θ = 2.37) and Conspiracy (xmin = 22 and θ = 2.23) on Facebook. Bottom right panel shows the CCDFs of the number of likes received by Science (xmin = 1,609 and θ = 1.65) and Conspiracy (xmin = 1,175 and θ = 1.75) on YouTube. Bottom left panel shows the CCDFs of the number of comments received by Science (xmin = 666 and θ = 1.70) and Conspiracy (xmin = 629 and θ = 1.77) on YouTube.

Fig 2. Consumption Patterns of Videos on Facebook and YouTube.

Fig 2

The empirical CCDFs, 1 − F(x), show the consumption patterns of videos supporting conflicting narratives—i.e. Science and Conspiracy—in terms of comments (A and C) and likes (B and D) on Facebook and YouTube.

Social response on different contents do not present a significant difference on Facebook and Youtube. Users’ response to content is similar on both platform and on both types of content. Science and Conspiracy videos receive the same amount of attention and reverberate in a similar way.

Polarized and Homogeneous Communities

As a secondary analysis we want to check whether the content has a polarizing effect on user. Hence, we focus on the users’ activity across the different type of contents. Fig 3 shows the Probability Density Functions (PDFs) of about 12M users’ and on how they distribute their comments on Science and Conspiracy posts (polarization) on both Facebook and YouTube. We observe sharply peaked bimodal distributions. Users concentrate their activity on one of the two narratives. To quantify the degree of polarization we use the Bimodality Coefficient (BC), and we find that the BC is very high for both Facebook and YouTube. In particular, BCFB = 0.964 and BCYT = 0.928. Moreover, we observe that the percentage of polarized users (users with ρ < 0.05 and ρ > 0.95) is 93.6% on Facebook and 87.8% on YouTube; therefore, two well separated communities support competing narratives in both online social networks.

Fig 3. Polarization on Facebook and YouTube.

Fig 3

The PDFs of the polarization ρ show that the vast majority of users is polarized towards one of the two conflicting narratives—i.e. Science and Conspiracy—on both Facebook and YouTube.

Content has a polarizing effect, indeed, users focus on specific types of content and aggregate in separated groups—echo chambers—independently of the platform and content promotion algorithm.

To further detail such a segregation, we analyze how polarized users—i.e., users having more than the 95% of their interactions with one narrative—behave with respect to their preferred content. Fig 4 shows the empirical CCDFs of the number of comments left by all polarized users on Facebook and YouTube (xminFB=8, θFB = 2.13 and xminYT=17, θYT = 2.29). We observe a very narrow difference (HDI90 = [−0.18,−0.13]) between the tail behavior of the two distributions. Moreover, Fig 5 shows the empirical CCDFs of the number of comments left by users polarized on either Science or Conspiracy on both Facebook (xminSci=5, θSci = 2.29 and xminCon=4, θCon = 2.31, with HDI90 = [−0.018,−0.009]) and YouTube (xminSci=2, θSci = 2.86 and xminCon=3, θCon = 2.41, with HDI90 = [0.44, 0.46]). Users supporting conflicting narratives behave similarly on Facebook, whereas on YouTube the power law distributions slightly differ in the scaling parameters.

Fig 4. Commenting Activity of Polarized Users.

Fig 4

The empirical CCDFs, 1 − F(x), of the number of comments left by polarized users on Facebook and YouTube.

Fig 5. Commenting Activity of Users Polarized towards Conflicting Narratives.

Fig 5

The empirical CCDFs, 1 − F(x), of the number of comments left by users polarized on scientific narratives and conspiracy theories on Facebook (A) and YouTube (B).

The aggregation of users around conflicting narratives lead to the emergence of echo chambers. Once inside such homogeneous and polarized communities, users supporting both narratives behave in a similar way, irrespective of the platform and content promotion algorithm.

Prediction of Users Polarization

Now we want to characterize how the content attract users,—i.e. how users’ polarization evolves comment after comment. We consider random samples of 400 users who left at least 100 comments, and we compute the mobility of a user across different contents along time. On both Facebook and YouTube, we observe that some users interact with a specific kind of content, whereas others start their commenting activity by switching between contents supporting different narratives. The latter—after an initial switching phase—starts focusing only on one type of information, becoming polarized towards one of the two conflicting narratives. We exploit such a regularity to derive a data-driven model to forecast users’ polarizations. Indeed, by means of a multinomial logistic model, we are able to predict the probability of whether a user will become polarized towards a given narrative or she will continue to switch between information supporting competing narratives. In particular, we consider the users’ polarization after n comments, ρn with n = 1, …, 100, as a predictor to classify users in three different classes: Polarized in Science (N = 400), Not Polarized (N = 400), Polarized in Conspiracy (N = 400).

Fig 6 shows precision, recall, and accuracy of the classification tasks on Facebook and YouTube as a function of n. On both online social networks, we find that the model’s performances monotonically increase as a function of n for each class. Focusing on accuracy, significant results (greater than 0.70) are obtained for low values of n. A suitable compromise between classification performances and required number of comments seems to be n = 50, which provides an accuracy greater than 0.80 for each class on both YouTube and Facebook. To assess how the results generalize to independent datasets and to limit problems like overfitting, we split YouTube and Facebook users datasets in training sets (N = 1000) and test sets (N = 200), and we perform Monte Carlo cross validations with 103 iterations. Results of Monte Carlo validations are shown in Table 1 and confirm the goodness of the model.

Fig 6. Performance measures the classification task.

Fig 6

Precision, recall, and accuracy of the classification task for users Polarized in Conspiracy, Not Polarized, Polarized in Science on Facebook and YouTube as a function of n. On both online social networks, we find that the model’s performance measures monotonically increase as a function of n. Focusing on the accuracy, significant results (greater than 0.70) are obtained for low values of n.

Table 1. Monte Carlo Cross Validation.

Mean and standard deviation (obtained averaging results of 103 iterations) of precision, recall, and accuracy of the classification task for users Polarized in Conspiracy, Not Polarized, Polarized in Science.

YouTube Facebook
Precision Recall Accuracy Precision Recall Accuracy
Polarized in Conspiracy 0.80 ± 0.04 0.93 ± 0.03 0.90 ± 0.02 0.89 ± 0.03 0.98 ± 0.02 0.95 ± 0.01
Not Polarized 0.85 ± 0.05 0.65 ± 0.06 0.85 ± 0.02 0.90 ± 0.04 0.70 ± 0.05 0.87 ± 0.02
Polarized in Science 0.89 ± 0.04 0.96 ± 0.02 0.95 ± 0.01 0.84 ± 0.04 0.94 ± 0.03 0.92 ± 0.02

We conclude that the early interaction of users with contents is an accurate predictor for the preferential attachment to a community and thus for the emergence of echo chambers. Moreover, in Table 2, we show that the evolution of the polarization on Facebook and YouTube is so alike that the same model (with n = 50), when trained with Facebook users (N = 1200) to classify YouTube users (N = 1200), leads to an accuracy in the classification task greater than 0.80 for each class. Similarly, using YouTube users as training set to classify Facebook users leads to similar performances.

Table 2. Performance measures of classification.

Precision, recall, and accuracy of the classification task for users Polarized in Conspiracy, Not Polarized, Polarized in Science when YouTube users are used as training set to classify Facebook users (top table), and when Facebook users are used as training set to classify YouTube users (bottom table).

Training YouTube—Test Facebook
Precision Recall Accuracy
Polarized in Conspiracy 0.90 0.95 0.95
Not Polarized 0.90 0.41 0.79
Polarized in Science 0.68 1.00 0.84
Training Facebook—Test YouTube
Polarized in Conspiracy 0.77 0.96 0.89
Not Polarized 0.72 0.69 0.81
Polarized in Science 0.97 0.77 0.91

Conclusions

Algorithms for content promotion are supposed to be the main determinants of the polarization effect arising out of online social media. Still, not much is known about the role of cognitive factors in driving users to aggregate in echo chambers supporting their favorite narrative. Recent studies suggest confirmation bias as one of the driving forces of content selection, which eventually leads to the emergence of polarized communities [1215].

Our findings show that conflicting narratives lead to the aggregation of users in homogeneous echo chambers, irrespective of the online social network and the algorithm of content promotion.

Indeed, in this work, we characterize the behavioral patterns of users dealing with the same contents, but different mechanisms of content promotion. In particular, we investigate whether different mechanisms regulating content promotion in Facebook and Youtube lead to the emergence of homogeneous echo chambers.

We study how users interact with two very distinct and conflicting narratives—i.e. conspiracy-like and scientific news—on Facebook and YouTube. Using extensive quantitative analysis, we find the emergence of polarized and homogeneous communities supporting competing narratives that behave similarly on both online social networks. Moreover, we analyze the evolution of polarization, i.e. how users become polarized towards a narrative. Still, we observe strong similarities between behavioral patterns of users supporting conflicting narratives on different online social networks.

Such a common behavior allows us to derive a statistical learning model to predict with a good precision whether a user will become polarized towards a certain narrative or she will continue to switch between contents supporting different narratives. Finally, we observe that the behavioral patterns are so similar in Facebook and YouTube that we are able to predict with a good precision the polarization of Facebook users by training the model with YouTube users, and vice versa.

Methods

Ethics Statement

The entire data collection process has been carried out exclusively through the Facebook Graph API [23] and the YouTube Data API [24], which are both publicly available, and for the analysis we used only public available data (users with privacy restrictions are not included in the dataset). The pages from which we download data are public Facebook and YouTube entities. User content contributing to such entities is also public unless the user’s privacy settings specify otherwise and in that case it is not available to us. We abided by the terms, conditions, and privacy policies of the websites (Facebook/Youtube)

Data Collection

The Facebook dataset is composed of 413 US public pages divided to Conspiracy and Science news. The first category (Conspiracy) includes pages diffusing alternative information sources and myth narratives—pages which disseminate controversial information, usually lacking supporting evidence and most often contradictory of the official news. The second category (Science) includes scientific institutions and scientific press having the main mission of diffusing scientific knowledge. Such a space of investigation is defined with the same approach as in [19], with the support of different Facebook groups very active in monitoring the conspiracy narratives. Pages were accurately selected and verified according to their self description. For both the categories of pages we downloaded all the posts (and their respective users interactions) in a timespan of 5 years (Jan 2010 to Dec 2014). To our knowledge, the final dataset is the complete set of all scientific and conspiracy-like information sources active in the US Facebook scenario up to date.

We pick all posts on Facebook linking a video on Youtube and then through the API we downloaded the videos related metadata. To build the Youtube database of video we downloaded likes, comments and descriptions of each video cited/shared in Facebook posts using the Youtube Data API [25]. Each video link in Facebook contains an unique id that identify the resource in a unique way on both Facebook and Youtube. The comments thread in Youtube, with its time sequence, is the equivalent of the feed timeline in a Facebook page. The techniques used to analyse Facebook data can be then used in Youtube data with minimum modifications. The YouTube dataset is composed of about 17K videos linked by Facebook posts supporting Science or Conspiracy news. Videos linked by posts in Science pages are considered as videos disseminating scientific knowledge, whereas videos linked by posts in Conspiracy pages are considered as videos diffusing controversial information and supporting myth and conspiracy-like theories. Such a categorization is validated by all the authors and Facebook groups very active in monitoring conspiracy narratives. The exact breakdown of the data is shown in Tables 3, 4, 5 and 6. Summarizing, the dataset is composed of all public videos posted by the Facebook pages listed in the Page List section and their related instances on Youtube.

Table 3. Breakdown of the dataset.

Facebook
Science Conspiracy Total
Posts 4,388 16,689 21,077
Likes 925K 1M 1.9M
Comments 86K 127K 213K
Shares 312K 493K 805K
YouTube
Science Conspiracy Total
Videos 3,803 13,649 17,452
Likes 13.5M 31M 44.5M
Comments 5.6M 11.2M 16.8M
Views 2.1M 6.33M 8.41M

Table 4. Conspiracy Pages.

Page Name Facebook ID
1 Spirit Science and Metaphysics 171274739679432
2 Spirit Science 210238862349944
3 The Conspiracy Archives 262849270399655
4 iReleaseEndorphins 297719273575542
5 World of Lucid Dreaming 98584674825
6 The Science of Spirit 345684712212932
7 Esoteric Philosophy 141347145919527
8 9/11 Truth Movement 259930617384687
9 Great Health The Natural Way 177320665694370
10 New World Order News 111156025645268
11 Freedom Isn’t Free on FB 634692139880441
12 Skeptic Society 224391964369022
13 The Spiritualist 197053767098051
14 Anonymous World Wide 494931210527903
15 The Life Beyond Earth 152806824765696
16 Illuminati Exposed 298088266957281
17 Illuminating Souls 38466722555
18 Alternative Way 119695318182956
19 Paranormal Conspiracies 455572884515474
20 CANNABIS CURES CANCERS! 115759665126597
21 Natural Cures Not Medicine 1104995126306864
22 CTA Conspiracy Theorists’ Association 515416211855967
23 Illuminati Killers 478715722175123
24 Conspiracy 2012 & Beyond 116676015097888
25 GMO Dangers 182443691771352
26 The Truthers Awareness 576279865724651
27 Exposing the truth about America 385979414829070
28 Occupy Bilderberg 231170273608124
29 Speak the Revolution 422518854486140
30 I Don’t Trust The Government 380911408658563
31 Sky Watch Map 417198734990619
32 | truthaholics 201546203216539
33 UFO Phenomenon 419069998168962
34 Conspiracy Theories & The Illuminati 117611941738491
35 Lets Change The World 625843777452057
36 Makaveli The Prince Killuminati 827000284010733
37 It’s A New Day 116492031738006
38 New world outlawz—killuminati soldiers 422048874529740
39 The Government’s bullshit. Your argument is invalid. 173884216111509
40 America Awakened 620954014584248
41 The truth behold 466578896732948
42 Alien Ufo And News 334372653327841
43 Anti-Bilderberg Resistance Movement 161284443959494
44 The Truth Unleashed 431558836898020
45 Anti GMO Foods and Fluoride Water 366658260094302
46 STOP Controlling Nature 168168276654316
47 9/11 Blogger 109918092364301
48 9/11 Studies and Outreach Club at ASU 507983502576368
49 9/11 Truth News 120603014657906
50 Abolish the FDA 198124706875206
51 AboveTopSecret.com 141621602544762
52 Activist Post 128407570539436
53 Alliance for Natural Health USA 243777274534
54 All Natural & Organic. Say No To Toxic Chemicals. 323383287739269
55 Alternative Medicine 219403238093061
56 Alternative World News Network 154779684564904
57 AltHealthWORKS 318639724882355
58 American Academy of Environmental Medicine 61115567111
59 American Association of Naturopathic Physicians 14848224715
60 Ancient Alien Theory 147986808591048
61 Ancient Aliens 100140296694563
62 Ancient Astronaut Theory 73808938369
63 The Anti-Media 156720204453023
64 Anti Sodium Fluoride Movement 143932698972116
65 Architects & Engineers for 9/11 Truth 59185411268
66 Association of Accredited Naturopathic Medical Colleges (AANMC) 60708531146
67 Autism Media Channel 129733027101435
68 Babes Against Biotech 327002374043204
69 Bawell Alkaline Water Ionizer Health Benefits 447465781968559
70 CancerTruth 348939748204
71 Chemtrails Awareness 12282631069
72 Collective Evolution 131929868907
73 Conspiracy Theory With Jesse Ventura 122021024620821
74 The Daily Sheeple 114637491995485
75 Dr. Bronner’s Magic Soaps 33699882778
76 Dr. Joseph Mercola 114205065589
77 Dr. Ronald Hoffman 110231295707464
78 Earth. We are one. 149658285050501
79 Educate Inspire Change 467083626712253
80 Energise for Life: The Alkaline Diet Experts! 99263884780
81 Exposing The Truth 175868780941
82 The Farmacy 482134055140366
83 Fluoride Action Network 109230302473419
84 Food Babe 132535093447877
85 Global Research (Centre for Research on Globalization) 200870816591393
86 GMO Inside 478981558808326
87 GMO Just Say No 1390244744536466
88 GreenMedInfo.com 111877548489
89 Healthy Holistic Living 134953239880777
90 I Fucking Love Truth 445723122122920
91 InfoWars 80256732576
92 Institute for Responsible Technology 355853721234
93 I Want To Be 100% Organic 431825520263804
94 Knowledge of Today 307551552600363
95 La Healthy Living 251131238330504
96 March Against Monsanto 566004240084767
97 Millions Against Monsanto by OrganicConsumers.org 289934516904
98 The Mind Unleashed 432632306793920
99 Moms Across America 111116155721597
100 Moms for Clean Air/Stop Jet Aerosol Spraying 1550135768532988
101 Natural Society 191822234195749
102 Non-GMO Project 55972693514
103 Occupy Corporatism 227213404014035
104 The Open Mind 782036978473504
105 Organic Consumers Association 13341879933
106 Organic Health 637019016358534
107 The Organic Prepper 435427356522981
108 PreventDisease.com 199701427498
109 Raw For Beauty 280583218719915
110 REALfarmacy.com 457765807639814
111 ReThink911 581078305246370
112 Sacred Geometry and Ancient Knowledge 363116270489862
113 Stop OC Smart Meters 164620026961366
114 The Top Information Post 505941169465529
115 The Truth About Vaccines 133579170019140
116 Truth Teller 278837732170258
117 Veterans Today 170917822620
118 What Doctors Don’t Tell You 157620297591924
119 Wheat Belly 209766919069873
120 Why don’t you try this? 202719226544269
121 WND 119984188013847
122 WorldTruth.TV 114896831960040
123 Zeitgeist 32985985640
124 Ancient Origins 530869733620642
125 Astrology Answers 413145432131383
126 Astrology News Service 196416677051124
127 Autism Action Network 162315170489749
128 Awakening America 406363186091465
129 Awakening People 204136819599624
130 Cannabinoids Cure Diseases & The Endocannabinoid System Makes It Possible. 322971327723145
131 Celestial Healing Wellness Center 123165847709982
132 Chico Sky Watch 149772398420200
133 A Conscious awakening 539906446080416
134 Conspiracy Syndrome 138267619575029
135 Conspiracy Theory: Truth Hidden in Plain Sight, and Army of SATAN 124113537743088
136 Cosmic Intelligence-Agency 164324963624932
137 C4ST 371347602949295
138 Deepak Chopra 184133190664
139 Dr. Mehmet Oz 35541499994
140 Earth Patriot 373323356902
141 Electromagnetic Radiation Safety 465980443450930
142 EMF Safety Network 199793306742863
143 End Time Headlines 135010313189665
144 Young Living Essential Oils 29796911981
145 Exposing Bilderberg 2012 300498383360728
146 Exposing The Illuminati 196087297165394
147 Exposing Satanic World Government 529736240478567
148 FEMA Camps Exposed 285257418255898
149 Fight Against Illuminati And New World Order 195559810501401
150 FitLife.tv 148518475178805
151 GMO Free USA 402058139834655
152 Holistic Health 105497186147476
153 The Illuminati 543854275628660
154 Illuminati Mind Control 499866223357022
155 Intelwars 130166550361356
156 Natural Solutions Foundation 234136166735798
157 NWO Truth Radio 135090269995781
158 Occupy Bilderberg 2012 227692450670795
159 Operation: Awakening- The Global Revolution 287772794657070
160 The Paradigm Shift 221341527884801
161 PositiveMed 177648308949017
162 Press TV 145097112198751
163 The Resistance 394604877344757
164 Rima E. Laibow, M.D.—Save My Life Dr. Rima 107527312740569
165 RT America 137767151365
166 Ruble’s Wonderings—Forbidden Archeology & Science 265422293590870
167 Seekers Of Truth 736499966368634
168 Spiritual Ecology 261982733906722
169 Spiritualer.com 531950866874307
170 Take Back Your Power 269179579827247
171 There is a cure for Cancer, but it is not FDA approved. Phoenix Tears work! 395190597537
172 True Activist 129370207168068
173 Truth Exposed Radio 173823575962481
174 Truth Movement 161389033958012
175 Truth Network 271701606246002
176 Wake up call 276404442375280
177 We Should Ban GMOs 516524895097781
178 vactruth.com 287991907988
179 Veterans Today Truth Warriors 645478795537771
180 4 Foot Farm Blueprint 1377091479178258
181 Dawning Golden Crystal Age 127815003927694
182 Occupy Your Mind 393849780700637
183 We do not Forgive. We do not Forget. We are Anonymous. Expect Us. 134030470016833
184 Health Impact News 469121526459635
185 NaturalNews.com 35590531315
186 World for 9/11 Truth 38411749990
187 Beware of Disinformation 558882824140805
188 Citizens For Legitimate Government 93486533659
189 Cureyourowncancer.org 535679936458252
190 Juicing Vegetables 172567162798498
191 Quantum Prophecies 323520924404870
192 AIM Integrative Medicine 137141869763519
193 Autism Nutrition Research Center 1508552969368252
194 The Canary Party 220071664686886
195 Chemtrail Research 247681531931261
196 Chemtrail Watchers 77065926441
197 Children’s Medical Safety Research Institute 790296257666848
198 Contaminated Vaccines 686182981422650
199 Dane Wigington 680418385353616
200 David Icke 147823328841
201 David Icke Books Limited 191364871070270
202 David Icke—Headlines 1421025651509652
203 Disinformation Directory 258624097663749
204 The Drs. Wolfson 1428115297409777
205 Educate, Inspire & Change. The Truth Is Out There, Just Open Your Eyes 111415972358133
206 Focus for Health Foundation 456051981200997
207 Generation Rescue 162566388038
208 Geoengineering Watch 448281071877305
209 Global Skywatch 128141750715760
210 The Greater Good 145865008809119
211 The Health Freedom Express 450411098403289
212 Homegrown Health 190048467776279
213 Intellihub 439119036166643
214 The Liberty Beacon 222092971257181
215 International Medical Council on Vaccination 121591387888250
216 International Medical Council on Vaccination—Maine Chapter 149150225097217
217 Medical Jane 156904131109730
218 Mississippi Parents for Vaccine Rights 141170989357307
219 My parents didn’t put me in time-out, they whooped my ass! 275738084532
220 National Vaccine Information Center 143745137930
221 The Raw Feed Live 441287025913792
222 Rinf.com 154434341237962
223 SANEVAX 139881632707155
224 Things pro-vaxers say 770620782980490
225 Unvaccinated America 384030984975351
226 Vaccine Injury Law Project 295977950440133
227 Vermont Coalition for Vaccine Choice 380959335251497
228 9/11: The BIGGEST LIE 129496843915554
229 Agent Orange Activists 644062532320637
230 Age of Autism 183383325034032
231 AutismOne 199957646696501
232 Awakened Citizen 481936318539426
233 Best Chinese Medicines 153901834710826
234 Black Salve 224002417695782
235 Bought Movie 144198595771434
236 Children Of Vietnam Veterans Health Alliance 222449644516926
237 Collective-Evolution Shift 277160669144420
238 Doctors Are Dangerous 292077004229528
239 Dr. Tenpenny on Vaccines 171964245890
240 Dr Wakefield’s work must continue 84956903164
241 EndoRIOT 168746323267370
242 Enenews 126572280756448
243 Expanded Consciousness 372843136091545
244 Exposing the truths of the Illuminati II 157896884221277
245 Family Health Freedom Network 157276081149274
246 Fearless Parent 327609184049041
247 Food Integrity Now 336641393949
248 Four Winds 10 233310423466959
249 Fukushima Explosion What You Do Not Know 1448402432051510
250 The Golden Secrets 250112083847
251 Health Without Medicine & Food Without Chemicals 304937512905083
252 Higher Perspective 488353241197000
253 livingmaxwell 109584749954
254 JFK Truth 1426437510917392
255 New World Order Library | NWO Library 194994541179
256 No Fluoride 117837414684
257 Open Minds Magazine 139382669461984
258 Organic Seed Alliance 111220277149
259 Organic Seed Growers and Trade Association 124679267607065
260 RadChick Radiation Research & Mitigation 260610960640885
261 The REAL Institute—Max Bliss 328240720622120
262 Realities Watch 647751428644641
263 StormCloudsGathering 152920038142341
264 Tenpenny Integrative Medical Centers (TIMC) 144578885593545
265 Vaccine Epidemic 190754844273581
266 VaccineImpact 783513531728629
267 Weston A. Price Foundation 58956225915
268 What On Earth Is Happening 735263086566914
269 The World According to Monsanto 70550557294
270 Truth Theory 175719755481
271 Csglobe 403588786403016
272 Free Energy Truth 192446108025
273 Smart Meter Education Network 630418936987737
274 The Mountain Astrologer magazine 112278112664
275 Alberta Chemtrail Crusaders 1453419071541217
276 Alkaline Us 430099307105773
277 Americas Freedom Fighters 568982666502934
278 Anti-Masonic Party Founded 1828 610426282420191
279 Cannabidiol OIL 241449942632203
280 Cancer Compass An Alternate Route 464410856902927
281 Collective Evolution Lifestyle 1412660665693795
282 Conscious Life News 148270801883880
283 Disclosure Project 112617022158085
284 Dr. Russell Blaylock, MD 123113281055091
285 Dumbing Down People into Sheeple 123846131099156
286 Expand Your Consciousness 351484988331613
287 Fluoride: Poison on Tap 1391282847818928
288 Gaiam TV 182073298490036
289 Gary Null & Associates 141821219197583
290 Genesis II Church of Health & Healing (Official) 115744595234934
291 Genetic Crimes Unit 286464338091839
292 Global Healing Center 49262013645
293 Gluten Free Society 156656676820
294 GMO Free Oregon 352284908147199
295 GMO Journal 113999915313056
296 GMO OMG 525732617477488
297 GreenMedTV 1441106586124552
298 Healing The Symptoms Known As Autism 475607685847989
299 Health Conspiracy Radio 225749987558859
300 Health and Happiness 463582507091863
301 Jesse Ventura 138233432870955
302 Jim Humble 252310611483446
303 Kid Against Chemo 742946279111241
304 Kids Right To Know Club 622586431101931
305 The Master Mineral Solution of the 3rd Millennium 527697750598681
306 Millions Against Monsanto Maui 278949835538988
307 Millions Against Monsanto World Food Day 2011 116087401827626
308 Newsmax Health 139852149523097
309 Non GMO journal 303024523153829
310 Nurses Against ALL Vaccines 751472191586573
311 Oath Keepers 182483688451972
312 Oath Keepers of America 1476304325928788
313 The Organic & Non-GMO Report 98397470347
314 Oregon Coast Holographic Skies Informants 185456364957528
315 Paranormal Research Project 1408287352721685
316 Politically incorrect America 340862132747401
317 (Pure Energy Systems) PES Network, Inc. 183247495049420
318 Save Hawaii from Monsanto 486359274757546
319 Sayer Ji 205672406261058
320 SecretSpaceProgram 126070004103888
321 SPM Southern Patriots MIlitia 284567008366903
322 Thrive 204987926185574
323 Truth Connections 717024228355607
324 Truth Frequency 396012345346
325 Truthstream Media.com 193175867500745
326 VT Right To Know GMOs 259010264170581
327 We Are Change 86518833689
328 Wisdom Tribe 7 Walking in Wisdom. 625899837467523
329 World Association for Vaccine Education 1485654141655627
330 X Tribune 1516605761946273

Table 5. Science Pages.

Page Name Facebook ID
1 AAAS—The American Association for the Advancement of Science 19192438096
2 AAAS Dialogue on Science, Ethics and Religion 183292605082365
3 Armed with Science 228662449288
4 AsapSCIENCE 162558843875154
5 Bridge to Science 185160951530768
6 EurekAlert! 178218971326
7 Food Science 165396023578703
8 Food Science and Nutrition 117931493622
9 I fucking love science 367116489976035
10 LiveScience 30478646760
11 Medical Laboratory Science 122670427760880
12 National Geographic Magazine 72996268335
13 National Science Foundation (NSF) 30037047899
14 Nature 6115848166
15 Nature Education 109424643283
16 Nature Reviews 328116510545096
17 News from Science 100864590107
18 Popular Science 60342206410
19 RealClearScience 122453341144402
20 Science 96191425588
21 Science and Mathematics 149102251852371
22 Science Channel 14391502916
23 Science Friday 10862798402
24 Science News Magazine 35695491869
25 Science-Based Medicine 354768227983392
26 Science-fact 167184886633926
27 Science, Critical Thinking and Skepticism 274760745963769
28 Science: The Magic of Reality 253023781481792
29 ScienceDaily 60510727180
30 ScienceDump 111815475513565
31 ScienceInsider 160971773939586
32 Scientific American magazine 22297920245
33 Scientific Reports 143076299093134
34 Sense About Science 182689751780179
35 Skeptical Science 317015763334
36 The Beauty of Science & Reality. 215021375271374
37 The Flame Challenge 299969013403575
38 The New York Times—Science 105307012882667
39 Wired Science 6607338526
40 All Science, All the Time 247817072005099
41 Life’s Little Mysteries 373856446287
42 Reason Magazine 17548474116
43 Nature News and Comment 139267936143724
44 Astronomy Magazine 108218329601
45 CERN 169005736520113
46 Citizen Science 200725956684695
47 Cosmos 143870639031920
48 Discover Magazine 9045517075
49 Discovery News 107124643386
50 Genetics and Genomics 459858430718215
51 Genetic Research Group 193134710731208
52 Medical Daily 189874081082249
53 MIT Technology Review 17043549797
54 NASA—National Aeronautics and Space Administration 54971236771
55 New Scientist 235877164588
56 Science Babe 492861780850602
57 ScienceBlogs 256321580087
58 Science, History, Exploration 174143646109353
59 Science News for Students 136673493023607
60 The Skeptics Society & Skeptic Magazine 23479859352
61 Compound Interest 1426695400897512
62 Kevin M. Folta 712124122199236
63 Southern Fried Science 411969035092
64 ThatsNonsense.com 107149055980624
65 Science & Reason 159797170698491
66 ScienceAlert 7557552517
67 Discovery 6002238585
68 Critical Thinker Academy 175658485789832
69 Critical Thinking and Logic Courses in US Core Public School Curriculum 171842589538247
70 Cultural Cognition Project 287319338042474
71 Foundation for Critical Thinking 56761578230
72 Immunization Action Coalition 456742707709399
73 James Randi Educational Foundation 340406508527
74 NCSE: The National Center for Science Education 185362080579
75 Neil deGrasse Tyson 7720276612
76 Science, Mother Fucker. Science 228620660672248
77 The Immunization Partnership 218891728752
78 Farm Babe 1491945694421203
79 Phys.org 47849178041
80 Technology Org 218038858333420
81 Biology Fortified, Inc. 179017932138240
82 The Annenberg Public Policy Center of the University of Pennsylvania 123413357705549
83 Best Food Facts 200562936624790

Table 6. Debunking Pages.

Page Name Facebook ID
1 Refutations to Anti-Vaccine Memes 414643305272351
2 Boycott Organic 1415898565330025
3 Contrails and Chemtrails:The truth behind the myth 391450627601206
4 Contrail Science 339553572770902
5 Contrail Science and Facts—Stop the Fear Campaign 344100572354341
6 Debunking Denialism 321539551292979
7 The Farmer’s Daughter 350270581699871
8 GMO Answers 477352609019085
9 The Hawaii Farmer’s Daughter 660617173949316
10 People for factual GMO truths (pro-GMO) 255945427857439
11 The Questionist 415335941857289
12 Scientific skepticism 570668942967053
13 The Skeptic’s Dictionary 195265446870
14 Stop the Anti-Science Movement 1402181230021857
15 The Thinking Person’s Guide to Autism 119870308054305
16 Antiviral 326412844183079
17 Center for Inquiry 5945034772
18 The Committee for Skeptical Inquiry 50659619036
19 Doubtful News 283777734966177
20 Hoax-Slayer 69502133435
21 I fucking hate pseudoscience 163735987107605
22 The Genetic Literacy Project 126936247426054
23 Making Sense of Fluoride 549091551795860
24 Metabunk 178975622126946
25 Point of Inquiry 32152655601
26 Quackwatch 220319368131898
27 Rationalwiki 226614404019306
28 Science-Based Pharmacy 141250142707983
29 Skeptical Inquirer 55675557620
30 Skeptic North 141205274247
31 The Skeptics’ Guide to the Universe 16599501604
32 Society for Science-Based Medicine 552269441534959
33 Things anti-vaxers say 656716804343725
34 This Week in Pseudoscience 485501288225656
35 Violent metaphors 537355189645145
36 wafflesatnoon.com 155026824528163
37 We Love GMOs and Vaccines 1380693538867364
38 California Immunization Coalition 273110136291
39 Exposing PseudoAstronomy 218172464933868
40 CSICOP 157877444419
41 The Panic Virus 102263206510736
42 The Quackometer 331993286821644
43 Phil Plait 251070648641
44 Science For The Open Minded 274363899399265
45 Skeptic’s Toolbox 142131352492158
46 Vaccine Nation 1453445781556645
47 Vaximom 340286212731675
48 Voices for Vaccines 279714615481820
49 Big Organic 652647568145937
50 Chemtrails are NOT real, idiots are. 235745389878867
51 Sluts for Monsanto 326598190839084
52 Stop Homeopathy Plus 182042075247396
53 They Blinded Me with Pseudoscience 791793554212187
54 Pro-Vaccine Shills for Big Pharma, the Illumanati, Reptilians, and the NWO 709431502441281
55 Pilots explain Contrails—and the Chemtrail Hoax 367930929968504
56 The Skeptical Beard 325381847652490
57 The Alliance For Food and Farming 401665083177817
58 Skeptical Raptor 522616064482036
59 Anti-Anti-Vaccine Campaign 334891353257708
60 Informed Citizens Against Vaccination Misinformation 144023769075631
61 Museum of Scientifically Proven Supernatural and Paranormal Phenomena 221030544679341
62 Emergent 375919272559739
63 Green State TV 128813933807183
64 Kavin Senapathy 1488134174787224
65 vactruth.com Exposed 1526700274269631
66 snopes.com 241061082705085

Preliminaries and Definitions

Polarization of Users

Polarization of users, ρu ∈ [0, 1], is defined as the fraction of comments that a user u left on posts (videos) supporting conspiracy-like narratives on Facebook (YouTube). In mathematical terms, given su, the number of comments left on Science posts by user u, and cu, the number of comments left on Conspiracy posts by user u, the polarization of u is defined as

ρu=cusu+cu.

We then consider users with ρu > 0.95 as users polarized towards Conspiracy, and users with ρu < 0.05 as users polarized towards Science.

Bimodality Coefficient

The Bimodality Coefficient (BC) [26] is defined as

BC=μ32+1μ4+3(n-1)2(n-2)(n-3),

with μ3 referring to the skewness of the distribution and μ4 referring to its excess kurtosis, with both moments being corrected for sample bias using the sample size n.

The BC of a given empirical distribution is then compared to a benchmark value of BCcrit = 5/9 ≈ 0.555 that would be expected for a uniform distribution; higher values point towards bimodality, whereas lower values point toward unimodality.

Multinomial Logistic Model

Multinomial logistic regression is a classification method that generalizes logistic regression to multi-class problems, i.e. with more than two possible discrete outcomes [27]. Such a model is used to predict the probabilities of the different possible outcomes of a categorically distributed dependent variable, given a set of independent variables. In the multinomial logistic model we assume that the log-odds of each response follow a linear model

ηij=logπijπiJ=αj+xiTβj,

where αj is a constant and βj is a vector of regression coefficients, for j = 1, 2, …, J − 1. Such a model is analogous to a logistic regression model, except that the probability distribution of the response is multinomial instead of binomial, and we have J − 1 equations instead of one. The J − 1 multinomial logistic equations contrast each of categories j = 1, 2, …, J − 1 with the baseline category J. If J = 2 the multinomial logistic model reduces to the simple logistic regression model.

The multinomial logistic model may also be written in terms of the original probabilities πij rather than the log-odds. Indeed, assuming that ηiJ = 0, we can write

πij=exp(ηij)k=1Jexp(ηik).

Classification Performance Measures

To assess the goodness of our model we use three different measures of classification performance: precision, recall, and accuracy. For each class i, we compute the number of true positive cases TPi, true negative cases TNi, false positive cases FPi, and false negative cases FNi. Then, for each class i the precision of the classification is defined as

precisioni=TPiTPi+FPi,

the recall is defined as

recalli=TPiTPi+FNi,

and the accuracy is defined as

accuracyi=TPi+TNiTPi+TNi+FPi+FNi.

Power law distributions

Scaling exponents of power law distributions are estimated via maximum likelihood (ML) as shown in [28]. To provide a full probabilistic assessment about whether two distributions are similar, we estimate the posterior distribution of the difference between the scaling exponents through an Empirical Bayes method.

Suppose we have two samples of observations, A and B, following power law distributions. For the sample A, we use the ML estimate of the scaling parameter, θ^AML, as location hyper-parameter of a Normal distribution with scale hyper-parameter σ^AML. Such a Normal distribution represents the prior distribution, p(θA)N(θ^AML,σ^AML), of the scaling exponent θA. Then, according to the Bayesian paradigm, the prior distribution, p(θA), is updated into a posterior distribution, p(θA|xA):

p(θA|xA)=p(xA|θA)p(θA)p(xA),

where p(xA|θA) is the likelihood. The posterior distribution is obtained via Metropolis-Hastings algorithm, i.e. a Markov Chain Monte Carlo (MCMC) method used to obtain a sequence of random samples from a probability distribution for which direct sampling is difficult [2931]. To obtain reliable posterior distributions, we run 50,000 iterations (5,000 burned), which proved to ensure the convergence of the MCMC algorithm.

The posterior distribution of θB can be computed following the same steps. Once both posterior distributions, p(θA|xA) and p(θB|xB), are derived, we compute the distribution of the difference between the scaling exponents by subtracting the posteriors, i.e.

p(θA-θB|xA,xB)=p(θA|xA)-p(θB|xB).

Then, by observing the 90% High Density Interval (HDI90) of p(θAθB), we can draw a full probabilistic assessment of the similarity between the two distributions.

Acknowledgments

Funding for this work was provided by EU FET project MULTIPLEX nr. 317532, SIMPOL nr. 610704, DOLFINS nr. 640772, SOBIGDATA nr. 654024. The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript. We want to thank Geoff Hall and “Skepti Forum” for providing fundamental support in defining the atlas of conspiracy news sources in the US Facebook.

Data Availability

The entire data collection process has been carried out exclusively through the Facebook Graph API and the YouTube Data API. The collection methods are relayed in the Data Collection section.

Funding Statement

Funding for this work was provided by EU FET project MULTIPLEX nr. 317532, SIMPOL nr. 610704, DOLFINS nr. 640772, SOBIGDATA nr. 654024. The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.

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Associated Data

This section collects any data citations, data availability statements, or supplementary materials included in this article.

Data Availability Statement

The entire data collection process has been carried out exclusively through the Facebook Graph API and the YouTube Data API. The collection methods are relayed in the Data Collection section.


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