cs.AI updates on arXiv.org 10月31日 12:07
改进强化学习应对随机和非平稳环境
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本文通过修改经典强化学习算法,使其在稀疏、随机和非平稳环境中高效运行。研究包括分层算法、多目标学习以及位置记忆的集成等。结果表明,改进的蒙特卡洛方法显著优于传统Q学习,展示了其在复杂环境中的潜力。

arXiv:2510.26347v1 Announce Type: cross Abstract: Reinforcement learning (RL) algorithms are designed to optimize problem-solving by learning actions that maximize rewards, a task that becomes particularly challenging in random and nonstationary environments. Even advanced RL algorithms are often limited in their ability to solve problems in these conditions. In applications such as searching for underwater pollution clouds with autonomous underwater vehicles (AUVs), RL algorithms must navigate reward-sparse environments, where actions frequently result in a zero reward. This paper aims to address these challenges by revisiting and modifying classical RL approaches to efficiently operate in sparse, randomized, and nonstationary environments. We systematically study a large number of modifications, including hierarchical algorithm changes, multigoal learning, and the integration of a location memory as an external output filter to prevent state revisits. Our results demonstrate that a modified Monte Carlo-based approach significantly outperforms traditional Q-learning and two exhaustive search patterns, illustrating its potential in adapting RL to complex environments. These findings suggest that reinforcement learning approaches can be effectively adapted for use in random, nonstationary, and reward-sparse environments.

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强化学习 随机环境 非平稳环境 蒙特卡洛方法 Q学习
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