Skip to main content
Data in Brief logoLink to Data in Brief
. 2020 Jun 23;31:105913. doi: 10.1016/j.dib.2020.105913

Dataset of ex-pat teachers in Southeast Asia's intention to leave due to the COVID-19 pandemic

Anh-Duc Hoang a,, Ngoc-Thuy Ta a, Yen-Chi Nguyen a, Cong-Kien Hoang b, Tien-Trung Nguyen c, Hiep-Hung Pham d, Linh-Chi Nguyen a, Phuong-Thuc Doan a, Quynh-Anh Dao a, Viet-Hung Dinh e
PMCID: PMC7309813  PMID: 32632376

Abstract

The COVID-19 pandemic exerted an adverse influence on the global education system, especially since starting school lockdown. The growth of teacher unemployment figures climbed double-digit and spawned these unexpected sequels. For instance, while native teachers seemed indisposed to leave the profession with the aim of seeking another more profited and seasonal jobs, many ex-pat teachers presented themselves with moving or stayed dilemma in the way the government salvaged their situation. In preference with the ex-pat teacher's case, we elucidated further throughout an e-survey in the International Baccalaureate community on Facebook from 4 to 11 April 2020 for 18,000 ex-pat teachers, who are teaching at Southeast Asia. This dataset includes 307 responses of ex-pat teachers who are staying in Singapore, Thailand, Vietnam, the Philippines, and Indonesia during the pandemic. The dataset comprises (i) Survey partakers' Demographics; (ii) Ex-pat teachers' perceptions in the relation of national, regional and school plans were afoot to the pandemic; (iii) The degree of attachment of ex-pat teacher to their current society, the ex-pat community, friends, and families during the pandemic time; (iv) Ex-pat teachers' embryo intention to reconsider their current teaching location.

Keywords: Teacher engagement, Teacher retention, COVID-19, Southeast Asia, International school, Ex-pat Teacher, Education Management


Specifications table

Subject Education, Education Management
Specific subject area Teacher retention, Teacher engagement
Type of data Raw data in excel file and analysed data
How data were acquired Data was gathered using an online survey and converted into the .xlsx format for formal analysis in SPSS v.20.
Data format Raw
Analyzed
Parameters for data collection This research focuses on ex-pat teachers who are teaching in several Southeast Asia countries: Singapore, Thailand, Vietnam, the Philippines, and Indonesia.
Description of data collection An online survey has been distributed throughout the International Baccalaureate community on Facebook (18,000 ex-pat teachers worldwide) and mainly ranged within ex-pat teachers who are working in Southeast Asia.
Data source location Information is collected from secondary student institutes in Vietnam (Latitude 16°0′N, Longitude 106°0′E), Indonesia (Latitude 5°00′N, Longitude 120°00′E), Thailand (Latitude 15°00′N, Longitude 100°00′E), Philippines (Latitude 13°00′N, Longitude 122°00′E), Singapore (Latitude 1°17′24.9702′'N, Longitude 103°51′7.0524′'E).
Data accessibility Repository name: Harvard Dataverse
Data identification number:
Direct URL to data: https://doi.org/10.7910/DVN/ZB2DNH, Harvard Dataverse, V1

Value of the data

  • The dataset heralds further research into these underlying reasons why ex-pat teachers no longer keep their teaching location stayed.

  • Policymakers, schools, or even business managers can utilize this dataset to address brain drain-related phenomenon.

  • This dataset can be accessed to more corrective courses of action, which bring teachers into perceiving the policy decision.

  • The dataset offers an additional contribution to publication reviews regarding the policy's influence extended towards teacher involvement.

  • The dataset produces a scale model exploring ex-pat teachers’ changing perceptions about their current working regions, especially when these national politics formulate different policies during the COVID-19 pandemic.

1. Data description

Teacher retention and teacher engagement are strong influencers in educational institutions, especially in terms of students’ academic achievement [1,2]. Due to the COVID-19 pandemic, schools around the world had to choose distance learning with many changes in ways of teaching and learning, thus native and ex-pat teachers were both affected [3,4]. In addition, this unexpected digital transformation creates many educational problems related to learning and teaching demand [5]. This dataset focuses on ex-pat teachers’ engagement and intention to leave, which is an expansion of our recent research about Vietnamese teachers’ perceptions and student's learning habits during the pandemic [6], [7]8].

This dataset contains two main parts, the first part is demographic information, and the second part reports on teachers’ perspective and intention. The former includes teachers’ gender, nationality, teaching country, teaching subject and grade, school type, teaching qualification and experience, and participants’ income. The later part concerns three main issues related to the pandemic: (i) Policy and regulation toward ex-pat teachers; (ii) Ex-pat teachers’ engagement with various communities; and (iii) Intention to leave of ex-pat teachers. The above variables can be used to study teacher retention, teacher engagement, impacts of policy, and teachers’ salary. Finally, the full survey, code, and measurement parameters for all variables can be found on Harvard Dataverse [9].

2. Experimental design, materials, and methods

Firstly, four experts in K-12 international education and organizational behavior were asked to pretest the validity of the assessments. Then we implemented a pilot study including 50 observations, before distributing the survey online within a Facebook community named International Baccalaureate from 4th to 11th April 2020. We only collect data from ex-pats who were teaching in Southeast Asia and recorded 528 accesses on the survey link. Among those, teachers from Indonesia, Philippines, Singapore, Thailand, and Vietnam accounted for the majority; thus, 36 responses were deleted since they were from other countries. Finally, after cleaning the dataset, there were 307 observations valid for further analysis.

Table 1 is the descriptive statistics of participants’ demographics. Table 2 shows the relationship between ex-pat teachers’ intention to leave and various indicators. The differences between participants’ retention among demographic variables are examined and presented through ANOVA analysis. Specifically, Table 3 is the summary of ANOVA analysis's significance, Table 4 is the more detailed results of between and within groups, and Table 5 shows specific robust test’ results.

Table 1.

Descriptive Statistics of Participant's Demographics.

Intend N Mean Std. Deviation Std. Error 95% Confidence Interval for Mean
Lower Bound Upper Bound
Gender Male 131 2.735 0.890 0.078 2.581 2.889
Female 176 2.801 0.880 0.066 2.670 2.932
Current country of teaching Indonesia 34 3.441 0.700 0.120 3.197 3.685
Thailand 66 2.904 0.882 0.109 2.687 3.121
Philippines 51 3.157 0.823 0.115 2.925 3.388
Vietnam 121 2.413 0.859 0.078 2.259 2.568
Singapore 35 2.562 0.503 0.085 2.389 2.735
School type Public school 50 2.747 0.856 0.121 2.503 2.990
Private school 227 2.819 0.860 0.057 2.707 2.932
Extracurricular Edu Center 29 2.448 1.070 0.199 2.041 2.855
Nationality Australia and New Zealand 63 2.963 0.741 0.093 2.776 3.150
Europe 106 2.840 0.932 0.091 2.660 3.019
South Africa 11 2.091 0.870 0.262 1.506 2.676
US and Canada 107 2.732 0.888 0.086 2.562 2.902
Others 20 2.417 0.786 0.176 2.049 2.785
Grade level Kindergarten 14 2.286 0.714 0.191 1.873 2.698
Lower secondary school 111 2.775 0.841 0.080 2.617 2.933
Upper secondary school 74 2.685 0.846 0.098 2.489 2.881
Primary school 108 2.895 0.950 0.091 2.714 3.076
Degree BA in Education 180 2.928 0.787 0.059 2.812 3.044
MA in Education 78 2.628 0.912 0.103 2.423 2.834
Teaching certificate 49 2.435 1.044 0.149 2.136 2.735
Experience at the current country Less than a year 33 2.485 1.014 0.177 2.125 2.844
1 year 92 3.069 0.729 0.076 2.918 3.220
2 years 106 3.000 0.735 0.071 2.859 3.141
3 years 29 2.483 0.699 0.130 2.217 2.749
More than 3 years 47 2.064 0.987 0.144 1.774 2.354
Income before covid-19 Less than 1500 USD 15 2.311 0.636 0.164 1.959 2.663
1500∼1999 USD 28 2.512 1.389 0.263 1.973 3.051
2000∼2499 USD 46 2.696 0.913 0.135 2.425 2.967
2500∼2999 USD 110 3.245 0.663 0.063 3.120 3.371
3000∼3499 USD 81 2.646 0.661 0.073 2.500 2.792
3500∼3999 USD 16 1.917 0.627 0.157 1.583 2.251
More than 4000 USD 11 1.848 0.480 0.145 1.526 2.171
Income during covid-19 Less than 1500 USD 63 2.418 1.007 0.127 2.164 2.672
1500∼1999 USD 36 3.102 0.956 0.159 2.779 3.425
2000∼2499 USD 98 3.163 0.750 0.076 3.013 3.314
2500∼2999 USD 64 2.750 0.669 0.084 2.583 2.917
3000∼3499 USD 24 2.542 0.537 0.110 2.315 2.768
3500∼3999 USD 12 1.806 0.658 0.190 1.387 2.224
More than 4000 USD 10 1.867 0.502 0.159 1.508 2.226
Income after covid-19 Less than 1500 USD 23 2.406 0.899 0.187 2.017 2.794
1500∼1999 USD 28 2.607 1.264 0.239 2.117 3.097
2000∼2499 USD 30 2.433 0.889 0.162 2.101 2.765
2500∼2999 USD 106 3.302 0.638 0.062 3.179 3.425
3000∼3499 USD 87 2.655 0.658 0.071 2.515 2.795
3500∼3999 USD 19 1.982 0.662 0.152 1.663 2.301
More than 4000 USD 14 2.238 0.999 0.267 1.661 2.815
Total 307 2.773 0.883 0.050 2.674 2.872

Table 2.

Correlations between variables and ex-pat teacher's intention to leave the current country.

Sum of Squares df Mean Square F
Gender .325 1 .325 .416 .520
Current country of teaching 41.050 4 10.262 15.677 .000***
School type 3.581 2 1.790 2.307 .101
Nationality 10.580 4 2.645 3.501 .008**
Grade level 5.511 3 1.837 2.386 .069*
Degree 11.533 2 5.766 7.715 .002***
Experience at the current country 42.334 4 10.584 16.273 .000***
Income before covid-19 52.377 6 8.730 14.052 .000***
Income during covid-19 47.523 6 7.921 12.426 .000***
Income after covid-19 54.071 6 9.012 14.639 .000***

* Correlation is significant at the 0.05 level; ** Correlation is significant at the 0.01 level; *** Correlation is significant at the 0.001 level.

Table 3.

Significant of ANOVA analyses.

Variable Sig of Homogeneity test Sig of ANOVA test Sig of Robust Tests of Equality of Means
Nationality .377 .008
Current country of teaching .024 .000
Teaching qualification .038 .002
Experience at current country .120 .000
Income before COVID-19 .000 .000
Income during COVID-19 .003 .000
Income after COVID-19 .000 .000

Table 4.

Differences in Teachers’ Intention of Leaving during the COVID-19 Pandemic among Different Demographics (ANOVA analysis).

Sum of Squares df Mean Square F Sig.
Nationality Between Groups 10.580 4 2.645 3.501 .008
Within Groups 228.166 302 .756
Total 238.746 306
Current country of teaching Between Groups 41.050 4 10.262 15.677 .000
Within Groups 197.697 302 .655
Total 238.746 306
Degree Between Groups 11.533 2 5.766 7.715 .001
Within Groups 227.213 304 .747
Total 238.746 306
Experience at the current country Between Groups 42.334 4 10.584 16.273 .000
Within Groups 196.412 302 .650
Total 238.746 306
Income before covid-19 Between Groups 52.377 6 8.730 14.052 .000
Within Groups 186.369 300 .621
Total 238.746 306
Income during covid-19 Between Groups 47.523 6 7.921 12.426 .000
Within Groups 191.223 300 .637
Total 238.746 306
Income after covid-19 Between Groups 54.071 6 9.012 14.639 .000
Within Groups 184.675 300 .616
Total 238.746 306

Table 5.

Robust Tests of Equality of Means toward Teacher's Intention of Leaving.

Welch Statistic df1 df2 Sig.
Current country of teaching 17.438 4 116.594 .000
Degree 6.681 2 105.788 .002
Income before covid-19 21.872 6 59.158 .000
Income during covid-19 15.884 6 61.172 .000
Income after covid-19 17.776 6 67.821 .000

This dataset uses mainly five-point Likert scale to examine the impacts of various factors on ex-pat teachers’ retention. Based on this dataset, some research can be carried out to study the relationships between teacher engagement and external policy on teachers’ intention to leave (INTEND). First, teacher engagement (ENGAGE) is considered to have long-term influence over schools and societies [10]. This relationship becomes even more substantial and more complicated, especially in this era of globalization, when ex-pat teachers frequently face multiculturalism [11]. In this dataset, teacher engagement can be indicated by activities and communication among inter-related stakeholders [12], such as local communities (ENGAGE_LOCAL), ex-pat communities (ENGAGE_EXPAT) and families and friends at home (ENGAGE_HOME). Consequently, the relationship between teacher engagement and teacher retention can be found by using the regression model (1). Similarly, the impact of policy on teacher retention should also be investigated [13,14], 1985) as in model (2). In the questionnaire, the policy and regulation (POLICY) under examination are national policy (POLI_NATION), regional policy (POLI_REGION), and school policy (POLI_SCHOOL). Finally, model (3) can also lead to significant results. However, as policies can affect teacher engagement [15], researchers may consider using instrumental variables.

INTENDβ0+β1*ENGAGE+u (1)
INTENDβ0+β1*POLICY+u (2)
INTENDβ0+β1*ENGAGE+β2*POLICY+u (3)

Declaration of Competing Interest

The authors declare that they have no known competing financial interests or personal relationships which have, or could be perceived to have, influenced the work reported in this article.

Acknowledgments

A great thanks to all teachers who participated in this study, school leaders and instructional coach, who contributed to elevating the data collection process.

Footnotes

Supplementary material associated with this article can be found, in the online version, at doi:10.1016/j.dib.2020.105913.

Appendix. Supplementary materials

mmc1.xml (1.2KB, xml)
mmc2.xls (82.5KB, xls)
mmc3.docx (16.3KB, docx)

References

  • 1.McLaurin S.E., Smith W., Smillie A. Teacher Retention: problems and Solutions. Online Sub. 2009 [Google Scholar]
  • 2.Guthrie J.T., Dreher M.J., Baker Linda. Why teacher engagement is important to student achievement. Engaging Young Readers. 2000:309–320. [Google Scholar]
  • 3.Nguyen, L. (2020). Nghỉ học để phòng dịch Covid-19: học trực tuyến có đóng phí? [School closure due to COVID-19: do parents have to pay tuition for online learning?]. Youth Newspaper. https://thanhnien.vn/giao-duc/nghi-hoc-de-phong-dich-covid-19-hoc-truc-tuyen-co-dong-phi-1197352.html
  • 4.Nguyen, T., (2020). 150 cơ sở giáo dục tư thục 'cầu cứu' vì đóng cửa do dịch Covid -19. [150 private educational institutions ask for help because of the closure due to Covid -19]. Youth Newspaper. https://thanhnien.vn/giao-duc/150-co-so-giao-duc-tu-thuc-cau-cuu-vi-dong-cua-do-dich-covid-19-1191469.html
  • 5.Hodges, C., Moore, S., Lockee, B., Trust, T., & Bond, A. (2020). The difference between emergency remote teaching and online learning. EDUCAUSE Review. https://er.educause.edu/articles/2020/3/the-difference-between-emergency-remote-teachingand-online-learning.
  • 6.Tran T., Hoang A.D., Nguyen T.T., Dinh V.H., Nguyen Y.C., Pham H.H. Dataset of Vietnamese student's learning habits during COVID-19. Data Brief. 2020;30 doi: 10.1016/j.dib.2020.105682. https://doi.org/ [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 7.Tran T., Hoang A.D., Nguyen Y.C., Nguyen L.C., Ta N.T., Pham Q.H., Pham C.X., Le Q.A., Dinh V.H., Nguyen T.T. Toward sustainable learning during school suspension: socioeconomic, occupational aspirations, and learning behavior of Vietnamese Students during COVID-19. Sustainability. 2020;12(10):4195. doi: 10.3390/su12104195. https://doi.org/ [DOI] [Google Scholar]
  • 8.Le Q.A.T., Dinh V.H., Nguyen M.T., Than V.Q., Hoang A.D., Vu C.T., Nguyen Y.C. Dataset of Vietnamese teachers’ perspectives and perceived support during the COVID-19 pandemic. Data in Brief. 2020;31 doi: 10.1016/j.dib.2020.105788. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 9.Hoang, Anh-Duc, 2020, "Survey on ex-pat teachers' intention to leave due to COVID-19″, https://doi.org/10.7910/DVN/ZB2DNH, Harvard Dataverse, V1.
  • 10.Louis K.S., Smith B. Restructuring, teacher engagement and school culture: perspectives on school reform and the improvement of teacher's work. School Effect. School Improve. 1991;2(1):34–52. [Google Scholar]
  • 11.Pekerti A.A., Vuong Q.H., Napier N.K. Double edge experiences of ex-patriate acculturation. J. Glob. Mob. 2017 [Google Scholar]
  • 12.Cropanzano R., Mitchell M.S. Social exchange theory: an interdisciplinary review. J. Manage. 2005;31(6):874–900. [Google Scholar]
  • 13.Ajzen I. Action Control. Springer; Berlin, Heidelberg: 1985. From intentions to actions: a theory of planned behavior; pp. 11–39. [Google Scholar]
  • 14.Cochran-Smith M. Stayers, leavers, lovers, and dreamers: insights about teacher retention. J. Inedx. Metric. 2004 [Google Scholar]
  • 15.Tripney, J., Gough, D., Sharples, J., Lester, S., & Bristow, D. (2018). Promoting teacher engagement with research evidence.

Associated Data

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

Supplementary Materials

mmc1.xml (1.2KB, xml)
mmc2.xls (82.5KB, xls)
mmc3.docx (16.3KB, docx)

Articles from Data in Brief are provided here courtesy of Elsevier

RESOURCES