Smooth Multi-Policy Causal Effect Estimation in Longitudinal Settings
For researchers and practitioners evaluating multiple dynamic treatment policies in healthcare and policy, this work reduces estimation variance, improving reliability of comparative effectiveness studies.
Existing longitudinal causal inference methods estimate each dynamic treatment policy in isolation, causing inflated variance. The proposed PEQ-Net uses a shared policy encoder with kernel mean embeddings to jointly estimate policies, achieving substantial RMSE reductions, especially for closely related policies.
Comparative evaluation of multiple dynamic treatment policies is essential for healthcare and policy decisions, yet conventional longitudinal causal inference methods estimate each in isolation, preventing information sharing across counterfactuals. We demonstrate that this separate estimation paradigm induces a structurally uncontrolled second-order bias, inflating finite-sample variance even after standard debiasing with longitudinal targeted maximum likelihood estimation(LTMLE). To address this, we propose a policy-aware reparameterization of Iterative Conditional Expectation (ICE) Q-functions that enables joint estimation through shared representations. We implement this approach in the Policy-Encoded Q Network (PEQ-Net), an architecture centered on a shared policy encoder. The encoder is trained using kernel mean embeddings, ensuring that the learned representation space reflects population-level policy dissimilarities. After applying an LTMLE correction step, we prove this design imposes a structural constraint on the second-order remainder, thereby stabilizing finite-sample variance. Experiments on semi-synthetic datasets demonstrate that PEQ-Net consistently outperforms existing ICE-based methods, achieving substantial reductions in root-mean-square error, particularly when evaluating closely related policies.