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Q-Ensemble for Offline RL: Don't Scale the Ensemble, Scale the Batch Size

Large-batch optimization reduces training duration for Q-ensemble methods in deep offline RL by decreasing ensemble size, penalizing out-of-distribution actions, and improving convergence.

Year
2022
Venue
arXiv 2022
Authors
5
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arxiv.org/abs/2211.11092v2ARXIV-DEFAULT
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Abstract

Training large neural networks is known to be time-consuming, with the learning duration taking days or even weeks. To address this problem, large-batch optimization was introduced. This approach demonstrated that scaling mini-batch sizes with appropriate learning rate adjustments can speed up the training process by orders of magnitude. While long training time was not typically a major issue for model-free deep offline RL algorithms, recently introduced Q-ensemble methods achieving state-of-the-art performance made this issue more relevant, notably extending the training duration. In this work, we demonstrate how this class of methods can benefit from large-batch optimization, which is commonly overlooked by the deep offline RL community. We show that scaling the mini-batch size and naively adjusting the learning rate allows for (1) a reduced size of the Q-ensemble, (2) stronger penalization of out-of-distribution actions, and (3) improved convergence time, effectively shortening training duration by 3-4x times on average.

Authors

5