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Main Authors: Zu, Lipeng, Zhou, Hansong, Zhang, Xiaonan
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2511.03695
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author Zu, Lipeng
Zhou, Hansong
Zhang, Xiaonan
author_facet Zu, Lipeng
Zhou, Hansong
Zhang, Xiaonan
contents Offline reinforcement learning (RL) enables training from fixed data without online interaction, but policies learned offline often struggle when deployed in dynamic environments due to distributional shift and unreliable value estimates on unseen state-action pairs. We introduce Behavior-Adaptive Q-Learning (BAQ), a framework designed to enable a smooth and reliable transition from offline to online RL. The key idea is to leverage an implicit behavioral model derived from offline data to provide a behavior-consistency signal during online fine-tuning. BAQ incorporates a dual-objective loss that (i) aligns the online policy toward the offline behavior when uncertainty is high, and (ii) gradually relaxes this constraint as more confident online experience is accumulated. This adaptive mechanism reduces error propagation from out-of-distribution estimates, stabilizes early online updates, and accelerates adaptation to new scenarios. Across standard benchmarks, BAQ consistently outperforms prior offline-to-online RL approaches, achieving faster recovery, improved robustness, and higher overall performance. Our results demonstrate that implicit behavior adaptation is a principled and practical solution for reliable real-world policy deployment.
format Preprint
id arxiv_https___arxiv_org_abs_2511_03695
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Behavior-Adaptive Q-Learning: A Unifying Framework for Offline-to-Online RL
Zu, Lipeng
Zhou, Hansong
Zhang, Xiaonan
Machine Learning
Offline reinforcement learning (RL) enables training from fixed data without online interaction, but policies learned offline often struggle when deployed in dynamic environments due to distributional shift and unreliable value estimates on unseen state-action pairs. We introduce Behavior-Adaptive Q-Learning (BAQ), a framework designed to enable a smooth and reliable transition from offline to online RL. The key idea is to leverage an implicit behavioral model derived from offline data to provide a behavior-consistency signal during online fine-tuning. BAQ incorporates a dual-objective loss that (i) aligns the online policy toward the offline behavior when uncertainty is high, and (ii) gradually relaxes this constraint as more confident online experience is accumulated. This adaptive mechanism reduces error propagation from out-of-distribution estimates, stabilizes early online updates, and accelerates adaptation to new scenarios. Across standard benchmarks, BAQ consistently outperforms prior offline-to-online RL approaches, achieving faster recovery, improved robustness, and higher overall performance. Our results demonstrate that implicit behavior adaptation is a principled and practical solution for reliable real-world policy deployment.
title Behavior-Adaptive Q-Learning: A Unifying Framework for Offline-to-Online RL
topic Machine Learning
url https://arxiv.org/abs/2511.03695