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Main Authors: Yang, Yu-Wei, Chan, Yun-Ming, Hung, Wei, Liu, Xi, Hsieh, Ping-Chun
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2502.11480
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author Yang, Yu-Wei
Chan, Yun-Ming
Hung, Wei
Liu, Xi
Hsieh, Ping-Chun
author_facet Yang, Yu-Wei
Chan, Yun-Ming
Hung, Wei
Liu, Xi
Hsieh, Ping-Chun
contents Offline model-based reinforcement learning (MBRL) serves as a competitive framework that can learn well-performing policies solely from pre-collected data with the help of learned dynamics models. To fully unleash the power of offline MBRL, model selection plays a pivotal role in determining the dynamics model utilized for downstream policy learning. However, offline MBRL conventionally relies on validation or off-policy evaluation, which are rather inaccurate due to the inherent distribution shift in offline RL. To tackle this, we propose BOMS, an active model selection framework that enhances model selection in offline MBRL with only a small online interaction budget, through the lens of Bayesian optimization (BO). Specifically, we recast model selection as BO and enable probabilistic inference in BOMS by proposing a novel model-induced kernel, which is theoretically grounded and computationally efficient. Through extensive experiments, we show that BOMS improves over the baseline methods with a small amount of online interaction comparable to only $1\%$-$2.5\%$ of offline training data on various RL tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2502_11480
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Enhancing Offline Model-Based RL via Active Model Selection: A Bayesian Optimization Perspective
Yang, Yu-Wei
Chan, Yun-Ming
Hung, Wei
Liu, Xi
Hsieh, Ping-Chun
Machine Learning
Offline model-based reinforcement learning (MBRL) serves as a competitive framework that can learn well-performing policies solely from pre-collected data with the help of learned dynamics models. To fully unleash the power of offline MBRL, model selection plays a pivotal role in determining the dynamics model utilized for downstream policy learning. However, offline MBRL conventionally relies on validation or off-policy evaluation, which are rather inaccurate due to the inherent distribution shift in offline RL. To tackle this, we propose BOMS, an active model selection framework that enhances model selection in offline MBRL with only a small online interaction budget, through the lens of Bayesian optimization (BO). Specifically, we recast model selection as BO and enable probabilistic inference in BOMS by proposing a novel model-induced kernel, which is theoretically grounded and computationally efficient. Through extensive experiments, we show that BOMS improves over the baseline methods with a small amount of online interaction comparable to only $1\%$-$2.5\%$ of offline training data on various RL tasks.
title Enhancing Offline Model-Based RL via Active Model Selection: A Bayesian Optimization Perspective
topic Machine Learning
url https://arxiv.org/abs/2502.11480