LGOct 27, 2023

State-Action Similarity-Based Representations for Off-Policy Evaluation

arXiv:2310.18409v14 citationsh-index: 22Has Code
Originality Incremental advance
AI Analysis

This work addresses data-efficiency issues in reinforcement learning for off-policy evaluation, which is incremental as it enhances an existing method (FQE) with a tailored representation learning approach.

The paper tackles the problem of data-efficiency in off-policy evaluation (OPE) by introducing a learned encoder based on a state-action behavioral similarity metric to transform datasets before using fitted q-evaluation (FQE), resulting in boosted data-efficiency and lower OPE error on challenging tasks.

In reinforcement learning, off-policy evaluation (OPE) is the problem of estimating the expected return of an evaluation policy given a fixed dataset that was collected by running one or more different policies. One of the more empirically successful algorithms for OPE has been the fitted q-evaluation (FQE) algorithm that uses temporal difference updates to learn an action-value function, which is then used to estimate the expected return of the evaluation policy. Typically, the original fixed dataset is fed directly into FQE to learn the action-value function of the evaluation policy. Instead, in this paper, we seek to enhance the data-efficiency of FQE by first transforming the fixed dataset using a learned encoder, and then feeding the transformed dataset into FQE. To learn such an encoder, we introduce an OPE-tailored state-action behavioral similarity metric, and use this metric and the fixed dataset to learn an encoder that models this metric. Theoretically, we show that this metric allows us to bound the error in the resulting OPE estimate. Empirically, we show that other state-action similarity metrics lead to representations that cannot represent the action-value function of the evaluation policy, and that our state-action representation method boosts the data-efficiency of FQE and lowers OPE error relative to other OPE-based representation learning methods on challenging OPE tasks. We also empirically show that the learned representations significantly mitigate divergence of FQE under varying distribution shifts. Our code is available here: https://github.com/Badger-RL/ROPE.

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