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arxiv: 2106.08909 · v3 · pith:VKZO6B22new · submitted 2021-06-16 · 💻 cs.LG · stat.ML

Offline RL Without Off-Policy Evaluation

classification 💻 cs.LG stat.ML
keywords iterativeevaluationoff-policyone-stepperformancepolicyalgorithmalgorithms
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Most prior approaches to offline reinforcement learning (RL) have taken an iterative actor-critic approach involving off-policy evaluation. In this paper we show that simply doing one step of constrained/regularized policy improvement using an on-policy Q estimate of the behavior policy performs surprisingly well. This one-step algorithm beats the previously reported results of iterative algorithms on a large portion of the D4RL benchmark. The one-step baseline achieves this strong performance while being notably simpler and more robust to hyperparameters than previously proposed iterative algorithms. We argue that the relatively poor performance of iterative approaches is a result of the high variance inherent in doing off-policy evaluation and magnified by the repeated optimization of policies against those estimates. In addition, we hypothesize that the strong performance of the one-step algorithm is due to a combination of favorable structure in the environment and behavior policy.

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Cited by 1 Pith paper

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Offline Reinforcement Learning with Implicit Q-Learning

    cs.LG 2021-10 unverdicted novelty 8.0

    IQL achieves policy improvement in offline RL by implicitly estimating optimal action values through state-conditional upper expectiles of value functions, without querying Q-functions on out-of-distribution actions.