JOURNAL ARTICLES
& Book Chapters
Asterisks indicate refereed publications; sole-authored unless otherwise indicated.
On the Category of ‘Religion’: A Taxonomic Analysis of a Large-Scale Database
M. Willis Monroe, Rachel Spicer, Gino Canlas, Travis Chilcott, Stephen Christopher, Megan Daniels, Andrew J. Danielson, Matthew Hamm, Caroline Arbuckle MacLeod, William Noseworthy, Ian Randall, Robyn Faith Walsh, Michael Muthukrishna, Edward Slingerland. “On the Category of ‘Religion’: A Taxonomic Analysis of a Large-Scale Database,” (PDF) Journal of the American Academy of Religion (in press)
Religion and Ecology: A Pilot Study Employing the Database of Religious History
Rachel Spicer, M. Willis Monroe, Matthew Hamm, Andrew Danielson, Gino Canlas, Ian Randall, Edward Slingerland. “Religion and Ecology: A Pilot Study Employing the Database of Religious History,” Current Research in Ecological and Social Psychology (Volume 3, 2022: 10073).
The Database of Religious History (DRH): Ontology, Coding Strategies and the Future of Cultural Evolutionary Analyses
Edward Slingerland, M. Willis Monroe and Michael Muthukrishna. “The Database of Religious History (DRH): Ontology, Coding Strategies and the Future of Cultural Evolutionary Analyses.” Religion, Brain and Behavior (published online May 28 2023).
The 3d Mind Model
Thornton, Mark, Sarah Wolf, Brian Reilly, Edward Slingerland and Diana Tamir. “The 3d Mind Model characterizes how people understand mental states across modern and historical cultures,” Affective Science 1-12 (January 22, 2022).
Treatment of missing data determines conclusions regarding moralizing gods
Beheim, Bret, Quentin Atkinson, Joseph Bulbulia, Will Gervais, Russell Gray, Joseph Henrich, Martin Lang, M. Willis Monroe, Michael Muthukrishna, Ara Norenzayan, Benjamin Purzycki, Azim Shariff, Edward Slingerland, Rachel Spicer, Aiyana Willard. 2021. “Treatment of missing data determines conclusions regarding moralizing gods,” (PDF) Nature 595: E29-34. *
This Matters Arising critiques a 2019 Nature article by Whitehouse, et al. (since retracted) that used the Seshat archaeo-historical databank to argue that beliefs in moralizing gods appear in world history only after the formation of complex “megasocieties” of around one million people. Inspection of the authors’ data shows that 61% of Seshat data points on moralizing gods are missing values, mostly from smaller populations below one million people, and during the analysis the authors re-coded these data points to signify the absence of moralizing gods beliefs. When we confine the analysis only to the extant data or use various standard imputation methods, the reported finding is reversed: moralizing gods precede increases in social complexity.
Coding Culture: Challenges and Recommendations for Comparative Cultural Databases
Slingerland, Edward, Quentin D. Atkinson, Carol Ember, Oliver Sheehan, Michael Muthukrishna, Joseph Bulbulia, and Russell D. Gray. 2020. “Coding Culture: Challenges and Recommendations for Comparative Cultural Databases,” Evolutionary Human Sciences 2: e29. *
Considerable progress in explaining cultural evolutionary dynamics has been made by applying rigorous models from the natural sciences to historical and ethnographic information collected and accessed using novel digital platforms. However, future progress requires recognition of the unique challenges posed by cultural data, such as recognising the critical role of theory, selecting appropriate units of analysis, data gathering and sampling strategies, winning expert buy-in, achieving reliability and reproducibility in coding, and ensuring interoperability and sustainability of the resulting databases. We conclude by proposing a set of practical guidelines to meet these challenges.
Supernatural agents and prosociality in historical China: micro-modeling the cultural evolution of gods and morality in textual corpora
Nichols, Ryan, Edward Slingerland, Kristoffer Neilbo, Peter Kirby and Carson Logan. 2021. “Supernatural agents and prosociality in historical China: micro-modeling the cultural evolution of gods and morality in textual corpora,” Religion Brain and Behavior 11: 46-64. *
Mining Past Minds: Data-Intensive Knowledge Discovery in the Study of Historical Textual Traditions
Nielbo, Kristoffer, Ryan Nichols and Edward Slingerland. “Mining Past Minds: Data-Intensive Knowledge Discovery in the Study of Historical Textual Traditions,” Journal of Cognitive Historiography 3:1-2: 93-118 (2018). *
Exploring the Challenges and Potentialities of the Database of Religious History for Cognitive Historiography
Brenton Sullivan, Michael Muthukrishna, Frederick Tappenden and Edward Slingerland, “Exploring the Challenges and Potentialities of the Database of Religious History for Cognitive Historiography,” (PDF) Journal of Cognitive Historiography 3:1-2: 12-31 (2018). *
Modeling the Contested Relationship between Analects, Mencius, and Xunzi: Preliminary Evidence from a Machine-Learning Approach
Nichols, Ryan, Edward Slingerland, Kristoffer Nielbo, and Uffe Bergeton. “Modeling the Contested Relationship Between Analects, Mencius, and Xunzi: Preliminary Evidence from a Machine- Learning Approach,” (PDF) Journal of Asian Studies 77.1: 19-57 (2018). *
The Distant Reading of Religious Texts: A “Big Data” Approach to Mind-Body Concepts in Early China
Slingerland, Edward, Ryan Nichols, Kristoffer Nielbo and Carson Logan. “The Distant Reading of Religious Texts: A “Big Data” Approach to Mind-Body Concepts in Early China,” (PDF) Journal of the American Academy of Religion 85.4: 985–1016 (2017). *