Causal Inferences from Digital Behavioral Data
Goethe University Frankfurt · Leipzig University · +1 more institution
Abstract
Abstract In recent years, digital behavioral data (DBD) have emerged as a powerful resource in social science research. Their ubiquity, granularity, complexity, and continuous collection provide new opportunities for examining social processes in great detail. However, because DBD are diverse in type and often constitute found data—not generated for research purposes—their potential for causal analysis is commonly underestimated. To address this issue, this paper outlines key considerations for developing a methodological framework for valid causal inference using DBD. The discussion focuses on how design limitations can be (i) ruled out a priori when generating designed DBD or (ii) compensated through…
Citation impact
- FWCI
- 118.70
- Percentile
- 100%
- References
- 184
Authors
2Topics & keywords
- Causal inference
- A priori and a posteriori
- Causal model
- Inference
- Key (lock)
- Data collection
- Causality (physics)
- Resource (disambiguation)