Ï€2vec\pi2\text{vec}: Policy Representations with Successor Features

Abstract

This paper describes π2vec\pi2\text{vec}, a method for representing behaviors of black box policies as feature vectors. The policy representations capture how the statistics of foundation model features change in response to the policy behavior in a task agnostic way, and can be trained from offline data, allowing them to be used in offline policy selection. This work provides a key piece of a recipe for fusing together three modern lines of research: Offline policy evaluation as a counterpart to offline RL, foundation models as generic and powerful state representations, and efficient policy selection in resource constrained environments.Comment: Accepted paper at ICLR202

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