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Integrating content analysis and text mining in studying psychology of religion

Integrating content analysis and text mining in studying psychology of religion. Chong Ho Yu, Ph.D. Psychology Azusa Pacific University cyu@apu.edu Presented at Computer-assisted Qualitative Data Analysis Conference Marburg, Germany March 2013

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Integrating content analysis and text mining in studying psychology of religion

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  1. Integrating content analysis and text mining in studying psychology of religion Chong Ho Yu, Ph.D.PsychologyAzusa Pacific Universitycyu@apu.eduPresented at Computer-assisted Qualitative Data Analysis ConferenceMarburg, GermanyMarch 2013 (This presentation is based on partial data. Additional analysis is in progress.)

  2. Context • This project is a replicated and enhanced study of Jesse Bering’s research on perceptions of dead agents. • Utilizing the framework of cognitive psychology and evolutionary psychology, Bering hypothesized that humans have a natural tendency to perceive that cognitive systems continue to function after death, and this disposition might be the psychological foundation of religion.

  3. Context • Bering and his associates conducted a content analysis by extracting trait attributions from 496 obituaries published in the New York Times. The trait attributions were classified according to the categories in the Evaluation of Other Questionnaire (EOOQ).

  4. Context • Bering found that in those obituaries pro-social and morality-related attributes of the dead people appeared more frequently than other types of qualities, such as achievements. • Along with the findings form other similar studies, Bering and his colleagues asserted that this behavioral pattern might result from adaptions during the evolutionary process.

  5. Specifically, if dead agents were believed to be aware of what the living people said and did, it could strengthen our moral framework.

  6. Limitation of Bering’s study • Bering’s study has certain limitations. It is important to point out that 41% Americans attend church on a regular basis, and Christianity has major impacts on every aspect of people’s life. • A Gallup poll shows that 92% Americans believe in the existence of God. Thus, the wording patterns found in New York Times obituaries and the idea of afterlife among the Americans could be a cultural product, instead of a natural tendency.

  7. Purpose • Another sample is needed in order to further examine Bering’s notion. In contrast to the US, in the United Kingdom churchgoers are 10% of the entire population, and a survey indicates that only 44% of UK citizens believe in God. • It is generally agreed that the UK is a more secular society than the US. If the perception of active dead agents is really natural or a-cultural, then the trait attributions found in the US sample should also be observed in the UK. • In this project 400 obituaries were sourced from two UK newspapers, namely, Guardian and Independent.

  8. Methodology • Replicate the study using content analysis based on EOOQ and data-driven categories in MAXQDA • Triangulate data analysis using both Automap (freeware) and SPSS Text Analytics (Commercial product) • Content analysis relies on human coders whereas text mining is automated by natural language processing and computational linguistics. • This is a myth that text mining is more reliable for the algorithms can yield consistent results. Indeed, different text mining packages, which utilize different algorithms, may yield different results. • Coded variables were exported to JMP for quantitative analysis

  9. EOOQ • It is extremely rare to see negative attributes, such as “hypocritical” and “selfish” in those obituaries, and thus these categories are not useful.

  10. New categories driven by the data • Some new categories were created by the coders.

  11. Content analysis results • Among the top 16 most frequently recurring codes, the top three belong to achievement-relatedness. Two others are also from this category. • Three belong to kindness/morality • One belongs to social skills

  12. Accomplished tends to co-occur with inspiring, bravery, leadership, and talented

  13. Coded variables were exported to JMP for Chi-square analysis and visualization by Mosaic plot. The gender effect is ruled out.

  14. Coded variables were exported to JMP for Chi-square analysis and visualization by Mosaic plot. The source effect (Guardian vs. Independent) is also ruled out.

  15. Automap requires a lot of data cleaning and pre-processing

  16. Automap requires a lot of data cleaning and pre-processing

  17. Automap results

  18. SPSS Text Analytics does not require a lot of data cleaning or pre-processing. Usually the analyst can accept the default settings and proceed.

  19. SPSS results

  20. Conclusion • The study is triangulated by analyses performed in three software packages (MAXQDA, AutoMap, SPSS Text Analytics) in two different modes: content analysis by human coders and text mining by algorithms. • The initial analysis shows that in the UK sample achievement-oriented traits occurred more often than pro-social and morality-related traits. This finding suggests that the alleged perception of dead agents may be more cultural than natural.

  21. References • Bering, J. M., & Shackelford, T. K. (2005). Reasoning about dead agents reveals possible adaptive trends. Human Nature, 16, 360-381. • Shapiro, J. P. (1988). Relationships between dimensions of depressive experience and evaluative beliefs about people in general. Personality Social Psychological Bulletins, 14, 388-400. • Yu, C. H., Jannasch-Pennell, A., & DiGangi, S. (2011). Compatibility between text mining and qualitative research in the perspectives of grounded theory, content analysis, and reliability. Qualitative Report, 16, 730-744. Retrieved from http://www.nova.edu/ssss/QR/QR16-3/yu.pdf

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