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arxiv: 2606.07399 · v1 · pith:U4UALB5Inew · submitted 2026-06-05 · 📊 stat.ML · cs.LG

Automatic, Debiased, and Invariant Counterfactual Generation under General Interventions

classification 📊 stat.ML cs.LG
keywords interventionsundercounterfactualadigengeneralinvariantnuisanceacross
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Generative models for counterfactual outcomes have great potential to support decision-making under complex interventions, but existing approaches are limited by unstable estimation, poor generalization across environments, and bias from nuisance model misspecification. We introduce ADIGen, a framework for automatic, debiased, and invariant counterfactual generation under general interventions, including high-dimensional interventions and outcomes. ADIGen combines Riesz regression to avoid unstable density-ratio estimation, causal invariance to improve generalization under distribution shift, and orthogonal statistical learning to obtain doubly robust guarantees against nuisance model misspecification. We provide excess-risk bounds showing that ADIGen controls counterfactual risk under general interventions, with a product-bias nuisance remainder and an invariant risk bound across environments.

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