Exploring the Use of Machine Learning to Automate the Qualitative Coding of Church-related Tweets

Authors

  • Anthony-Paul Cooper Durham University
  • Emmanuel Awuni Kolog University of Ghana Business School
  • Erkki Sutinen University of Turku

DOI:

https://doi.org/10.1558/firn.40610

Keywords:

digital theology, machine learning, sociology of religion, social media research

Abstract

This article builds on previous research around the exploration of the content of church-related tweets. It does so by exploring whether the qualitative thematic coding of such tweets can, in part, be automated by the use of machine learning. It compares three supervised machine learning algorithms to understand how useful each algorithm is at a classification task, based on a dataset of human-coded church-related tweets. The study finds that one such algorithm, Naïve-Bayes, performs better than the other algorithms considered, returning Precision, Recall and F-measure values which each exceed an acceptable threshold of 70%. This has far-reaching consequences at a time where the high volume of social media data, in this case, Twitter data, means that the resource-intensity of manual coding approaches can act as a barrier to understanding how the online community interacts with, and talks about, church. The findings presented in this article offer a way forward for scholars of digital theology to better understand the content of online church discourse.

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Author Biographies

  • Anthony-Paul Cooper, Durham University

    Anthony-Paul Cooper is co-director of the Centre for Church Growth Research at Cranmer Hall, Durham University. Anthony-Paul has a background in social research, with previous research topics including new church use of “secular” and “sacred” space and the use of social media data to better understand church attendance and church growth.

  • Emmanuel Awuni Kolog, University of Ghana Business School

    Emmanuel Awuni Kolog is a faculty member at the Department of Operations and Management Information Systems of the University of Ghana Business School. Emmanuel’s research interest is multidisciplinary which spans the fields of text mining, affect detection, learner analytics, machine learning applications and business intelligence.

  • Erkki Sutinen, University of Turku

    Erkki Sutinen is Professor of Computer Science at the University of Turku and an ordained priest. Erkki’s research interests include educational technology, computing education, ICT4D, co-design and digital theology. He has supervised circa 30 PhDs and co-authored around 300 papers. Erkki is currently based in Windhoek, Namibia, having recently set up the first overseas campus of the University of Turku.

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Published

2020-03-31

Issue

Section

Articles

How to Cite

Cooper, A.-P., Kolog, E. A., & Sutinen, E. (2020). Exploring the Use of Machine Learning to Automate the Qualitative Coding of Church-related Tweets. Fieldwork in Religion, 14(2), 140-159. https://doi.org/10.1558/firn.40610