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Main Authors: Luo, Qin-Wen, Xie, Ming-Kun, Wang, Ye-Wen, Huang, Sheng-Jun
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2412.18855
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author Luo, Qin-Wen
Xie, Ming-Kun
Wang, Ye-Wen
Huang, Sheng-Jun
author_facet Luo, Qin-Wen
Xie, Ming-Kun
Wang, Ye-Wen
Huang, Sheng-Jun
contents Offline-to-online (O2O) reinforcement learning (RL) provides an effective means of leveraging an offline pre-trained policy as initialization to improve performance rapidly with limited online interactions. Recent studies often design fine-tuning strategies for a specific offline RL method and cannot perform general O2O learning from any offline method. To deal with this problem, we disclose that there are evaluation and improvement mismatches between the offline dataset and the online environment, which hinders the direct application of pre-trained policies to online fine-tuning. In this paper, we propose to handle these two mismatches simultaneously, which aims to achieve general O2O learning from any offline method to any online method. Before online fine-tuning, we re-evaluate the pessimistic critic trained on the offline dataset in an optimistic way and then calibrate the misaligned critic with the reliable offline actor to avoid erroneous update. After obtaining an optimistic and and aligned critic, we perform constrained fine-tuning to combat distribution shift during online learning. We show empirically that the proposed method can achieve stable and efficient performance improvement on multiple simulated tasks when compared to the state-of-the-art methods.
format Preprint
id arxiv_https___arxiv_org_abs_2412_18855
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Optimistic Critic Reconstruction and Constrained Fine-Tuning for General Offline-to-Online RL
Luo, Qin-Wen
Xie, Ming-Kun
Wang, Ye-Wen
Huang, Sheng-Jun
Machine Learning
Offline-to-online (O2O) reinforcement learning (RL) provides an effective means of leveraging an offline pre-trained policy as initialization to improve performance rapidly with limited online interactions. Recent studies often design fine-tuning strategies for a specific offline RL method and cannot perform general O2O learning from any offline method. To deal with this problem, we disclose that there are evaluation and improvement mismatches between the offline dataset and the online environment, which hinders the direct application of pre-trained policies to online fine-tuning. In this paper, we propose to handle these two mismatches simultaneously, which aims to achieve general O2O learning from any offline method to any online method. Before online fine-tuning, we re-evaluate the pessimistic critic trained on the offline dataset in an optimistic way and then calibrate the misaligned critic with the reliable offline actor to avoid erroneous update. After obtaining an optimistic and and aligned critic, we perform constrained fine-tuning to combat distribution shift during online learning. We show empirically that the proposed method can achieve stable and efficient performance improvement on multiple simulated tasks when compared to the state-of-the-art methods.
title Optimistic Critic Reconstruction and Constrained Fine-Tuning for General Offline-to-Online RL
topic Machine Learning
url https://arxiv.org/abs/2412.18855