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Towards Hyperparameter-free Policy Selection for Offline Reinforcement Learning

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arxiv 2110.14000 v3 pith:LIAE3VMO submitted 2021-10-26 cs.LG cs.AIstat.ML

Towards Hyperparameter-free Policy Selection for Offline Reinforcement Learning

classification cs.LG cs.AIstat.ML
keywords selectionalgorithmsbvfthyperparameter-freelearningofflinepolicyreinforcement
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How to select between policies and value functions produced by different training algorithms in offline reinforcement learning (RL) -- which is crucial for hyperpa-rameter tuning -- is an important open question. Existing approaches based on off-policy evaluation (OPE) often require additional function approximation and hence hyperparameters, creating a chicken-and-egg situation. In this paper, we design hyperparameter-free algorithms for policy selection based on BVFT [XJ21], a recent theoretical advance in value-function selection, and demonstrate their effectiveness in discrete-action benchmarks such as Atari. To address performance degradation due to poor critics in continuous-action domains, we further combine BVFT with OPE to get the best of both worlds, and obtain a hyperparameter-tuning method for Q-function based OPE with theoretical guarantees as a side product.

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