``Spatiotemporal causal inference with arbitrary spillover and carryover effects''

 

  Abstract

Micro-level data with granular spatial and temporal information are becoming increasingly available to social scientists. Most researchers aggregate such data into a convenient panel data format and apply standard causal inference methods. This approach, however, has two limitations. First, data aggregation results in the loss of detailed geo-location and temporal information, leading to potential biases. Second, most panel data methods either ignore spatial spillover and temporal carryover effects or impose restrictive assumptions on their structure. We introduce a general methodological framework for spatiotemporal causal inference with arbitrary spillover and carryover effects. Under this general framework, we demonstrate how to define and estimate causal quantities of interest, explore heterogeneous treatment effects, investigate causal mechanisms, and visualize the results to facilitate their interpretation. We illustrate the proposed methodology through an analysis of airstrikes and insurgent attacks in Iraq. The open-source software package geocausal implements all of our methods.

  Relevant Papers and Software

Papadogeorgou, Georgia, Kosuke Imai, Jason Lyall, and Fan Li. (2022). ``Causal Inference with Spatio-temporal Data: Estimating the Effects of Airstrikes on Insurgent Violence in Iraq.'' Journal of the Royal Statistical Society, Series B (Statistical Methodology), Vol. 84, No. 5 (November), pp. 1969-1999.
Zhou, Lingxiao, and Kosuke Imai, Jason Lyall, and Georgia Papadogeorgou. ``Estimating Heterogeneous Treatment Effects for Spatio-Temporal Causal Inference: How Economic Assistance Moderates the Effects of Airstrikes on Insurgent Violence.''
Mukaigawara, Mitsuru, Georgia Papadogeorgou, Jason Lyall, and Kosuke Imai. ``geocausal: Causal Inference with Spatio-Temporal Data.'' available through The Comprehensive R Archive Network and GitHub.

© Kosuke Imai
 Last modified: Mon Apr 7 11:45:35 BST 2025