Offline Reinforcement Learning at Multiple Frequencies

July 26, 2022 ยท Declared Dead ยท ๐Ÿ› Conference on Robot Learning

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Authors Kaylee Burns, Tianhe Yu, Chelsea Finn, Karol Hausman arXiv ID 2207.13082 Category cs.LG: Machine Learning Cross-listed cs.AI, cs.RO Citations 6 Venue Conference on Robot Learning Last Checked 4 months ago
Abstract
Leveraging many sources of offline robot data requires grappling with the heterogeneity of such data. In this paper, we focus on one particular aspect of heterogeneity: learning from offline data collected at different control frequencies. Across labs, the discretization of controllers, sampling rates of sensors, and demands of a task of interest may differ, giving rise to a mixture of frequencies in an aggregated dataset. We study how well offline reinforcement learning (RL) algorithms can accommodate data with a mixture of frequencies during training. We observe that the $Q$-value propagates at different rates for different discretizations, leading to a number of learning challenges for off-the-shelf offline RL. We present a simple yet effective solution that enforces consistency in the rate of $Q$-value updates to stabilize learning. By scaling the value of $N$ in $N$-step returns with the discretization size, we effectively balance $Q$-value propagation, leading to more stable convergence. On three simulated robotic control problems, we empirically find that this simple approach outperforms naรฏve mixing by 50% on average.
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