JMLR

Estimating Network-Mediated Causal Effects via Principal Components Network Regression

Authors
Alex Hayes Mark M. Fredrickson Keith Levin
Research Topics
Causal Inference Machine Learning
Paper Information
  • Journal:
    Journal of Machine Learning Research
  • Added to Tracker:
    Jul 15, 2025
Abstract

We develop a method to decompose causal effects on a social network into an indirect effect mediated by the network, and a direct effect independent of the social network. To handle the complexity of network structures, we assume that latent social groups act as causal mediators. We develop principal components network regression models to differentiate the social effect from the non-social effect. Fitting the regression models is as simple as principal components analysis followed by ordinary least squares estimation. We prove asymptotic theory for regression coefficients from this procedure and show that it is widely applicable, allowing for a variety of distributions on the regression errors and network edges. We carefully characterize the counterfactual assumptions necessary to use the regression models for causal inference, and show that current approaches to causal network regression may result in over-control bias. The method is very general, so that it is applicable to many types of structured data beyond social networks, such as text, areal data, psychometrics, images and omics.

Author Details
Alex Hayes
Author
Mark M. Fredrickson
Author
Keith Levin
Author
Research Topics & Keywords
Causal Inference
Research Area
Machine Learning
Research Area
Citation Information
APA Format
Alex Hayes , Mark M. Fredrickson & Keith Levin . Estimating Network-Mediated Causal Effects via Principal Components Network Regression. Journal of Machine Learning Research .
BibTeX Format
@article{JMLR:v26:23-1317,
  author  = {Alex Hayes and Mark M. Fredrickson and Keith Levin},
  title   = {Estimating Network-Mediated Causal Effects via Principal Components Network Regression},
  journal = {Journal of Machine Learning Research},
  year    = {2025},
  volume  = {26},
  number  = {13},
  pages   = {1--99},
  url     = {http://jmlr.org/papers/v26/23-1317.html}
}
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