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Dropout Q-Functions for Doubly Efficient Reinforcement Learning

DroQ improves computational efficiency in randomized ensembled double Q-learning without significantly compromising sample efficiency, outperforming both REDQ and SAC in terms of computational cost.

Year
2021
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dropout-q-functions-for-doubly-efficient-1
Authors
5
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arxiv.org/abs/2110.02034v2ARXIV-DEFAULT
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Abstract

Randomized ensembled double Q-learning (REDQ) (Chen et al., 2021b) has recently achieved state-of-the-art sample efficiency on continuous-action reinforcement learning benchmarks. This superior sample efficiency is made possible by using a large Q-function ensemble. However, REDQ is much less computationally efficient than non-ensemble counterparts such as Soft Actor-Critic (SAC) (Haarnoja et al., 2018a). To make REDQ more computationally efficient, we propose a method of improving computational efficiency called DroQ, which is a variant of REDQ that uses a small ensemble of dropout Q-functions. Our dropout Q-functions are simple Q-functions equipped with dropout connection and layer normalization. Despite its simplicity of implementation, our experimental results indicate that DroQ is doubly (sample and computationally) efficient. It achieved comparable sample efficiency with REDQ, much better computational efficiency than REDQ, and comparable computational efficiency with that of SAC.

Authors

5