Off-Policy Evaluation via the Regularized Lagrangian

7 Jul 2020Mengjiao YangOfir NachumBo DaiLihong LiDale Schuurmans

The recently proposed distribution correction estimation (DICE) family of estimators has advanced the state of the art in off-policy evaluation from behavior-agnostic data. While these estimators all perform some form of stationary distribution correction, they arise from different derivations and objective functions... (read more)

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