2023
DOI: 10.48550/arxiv.2302.12780
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VIPeR: Provably Efficient Algorithm for Offline RL with Neural Function Approximation

Abstract: We propose a novel algorithm for offline reinforcement learning called Value Iteration with Perturbed Rewards (VIPeR), which amalgamates the pessimism principle with random perturbations of the value function. Most current offline RL algorithms explicitly construct statistical confidence regions to obtain pessimism via lower confidence bounds (LCB), which cannot easily scale to complex problems where a neural network is used to estimate the value functions. Instead, VIPeR implicitly obtains pessimism by simply… Show more

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