cs.AI updates on arXiv.org 09月03日
强化学习优化模拟环境采样效率
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本文提出一种利用强化学习训练策略,高效采样模拟确定性环境的方法,并分析了不同采样策略的效果,为复杂模拟器上的代理辅助强化学习策略优化提供路径。

arXiv:2509.01285v1 Announce Type: cross Abstract: Sample efficiency in the face of computationally expensive simulations is a common concern in surrogate modeling. Current strategies to minimize the number of samples needed are not as effective in simulated environments with wide state spaces. As a response to this challenge, we propose a novel method to efficiently sample simulated deterministic environments by using policies trained by Reinforcement Learning. We provide an extensive analysis of these surrogate-building strategies with respect to Latin-Hypercube sampling or Active Learning and Kriging, cross-validating performances with all sampled datasets. The analysis shows that a mixed dataset that includes samples acquired by random agents, expert agents, and agents trained to explore the regions of maximum entropy of the state transition distribution provides the best scores through all datasets, which is crucial for a meaningful state space representation. We conclude that the proposed method improves the state-of-the-art and clears the path to enable the application of surrogate-aided Reinforcement Learning policy optimization strategies on complex simulators.

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强化学习 模拟环境 采样效率 代理辅助 策略优化
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