AI RESEARCH
Estimating Heterogeneous Causal Effect on Networks via Orthogonal Learning
arXiv CS.LG
•
ArXi:2509.18484v2 Announce Type: replace-cross Estimating causal effects on networks is challenging because treatments may affect both treated units and their neighbors, while network homophily induces dependence and confounding. These challenges are amplified when causal effects are heterogeneous across units and edges. We propose a two-stage orthogonal learning framework for estimating heterogeneous direct and spillover effects on networks. The first stage uses graph neural networks to estimate nuisance components that capture complex dependence on covariates and network structure.