AI RESEARCH
Amortizing Causal Sensitivity Analysis via Prior Data-Fitted Networks
arXiv CS.LG
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ArXi:2605.10590v1 Announce Type: cross Causal sensitivity analysis aims to provide bounds for causal effect estimates in the presence of unobserved confounding. However, existing methods for causal sensitivity analysis are per-instance procedures, meaning that changes to the dataset, causal query, sensitivity level, or treatment require new computation. Here, we instead present an in-context learning approach. Specifically, we propose an amortized approach to causal sensitivity analysis based on prior-data fitted networks.