Author
Listed:
- Drew H. Bailey
(University of California, Irvine)
- Alexander J. Jung
(University of Tübingen)
- Adriene M. Beltz
(University of Michigan)
- Markus I. Eronen
(University of Groningen)
- Christian Gische
(Humboldt-Universität zu Berlin)
- Ellen L. Hamaker
(Utrecht University)
- Konrad P. Kording
(University of Pennsylvania
University of Pennsylvania)
- Catherine Lebel
(Alberta Children’s Hospital Research Institute
University of Calgary)
- Martin A. Lindquist
(Johns Hopkins University)
- Julia Moeller
(Leipzig University)
- Adeel Razi
(Monash University
Monash University
University College London
CIFAR)
- Julia M. Rohrer
(Leipzig University)
- Baobao Zhang
(Syracuse University)
- Kou Murayama
(University of Tübingen
Kochi University of Technology)
Abstract
Making causal inferences regarding human behaviour is difficult given the complex interplay between countless contributors to behaviour, including factors in the external world and our internal states. We provide a non-technical conceptual overview of challenges and opportunities for causal inference on human behaviour. The challenges include our ambiguous causal language and thinking, statistical under- or over-control, effect heterogeneity, interference, timescales of effects and complex treatments. We explain how methods optimized for addressing one of these challenges frequently exacerbate other problems. We thus argue that clearly specified research questions are key to improving causal inference from data. We suggest a triangulation approach that compares causal estimates from (quasi-)experimental research with causal estimates generated from observational data and theoretical assumptions. This approach allows a systematic investigation of theoretical and methodological factors that might lead estimates to converge or diverge across studies.
Suggested Citation
Drew H. Bailey & Alexander J. Jung & Adriene M. Beltz & Markus I. Eronen & Christian Gische & Ellen L. Hamaker & Konrad P. Kording & Catherine Lebel & Martin A. Lindquist & Julia Moeller & Adeel Razi , 2024.
"Causal inference on human behaviour,"
Nature Human Behaviour, Nature, vol. 8(8), pages 1448-1459, August.
Handle:
RePEc:nat:nathum:v:8:y:2024:i:8:d:10.1038_s41562-024-01939-z
DOI: 10.1038/s41562-024-01939-z
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