AI RESEARCH
Density Ratio-Free Doubly Robust Proxy Causal Learning
arXiv CS.LG
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ArXi:2505.19807v2 Announce Type: replace We study the problem of causal function estimation in the Proxy Causal Learning (PCL) framework, where confounders are not observed but proxies for the confounders are available. Two main approaches have been proposed: outcome bridge-based and treatment bridge-based methods. In this work, we propose two kernel-based doubly robust estimators that combine the strengths of both approaches, and naturally handle continuous and high-dimensional variables.