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Average-Reward Soft Actor-Critic
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本文提出一种平均奖励软演员-评论家算法,填补了深度强化学习在熵正则化平均奖励目标上的空白,通过标准RL基准测试,性能优于现有算法。

arXiv:2501.09080v2 Announce Type: replace-cross Abstract: The average-reward formulation of reinforcement learning (RL) has drawn increased interest in recent years for its ability to solve temporally-extended problems without relying on discounting. Meanwhile, in the discounted setting, algorithms with entropy regularization have been developed, leading to improvements over deterministic methods. Despite the distinct benefits of these approaches, deep RL algorithms for the entropy-regularized average-reward objective have not been developed. While policy-gradient based approaches have recently been presented for the average-reward literature, the corresponding actor-critic framework remains less explored. In this paper, we introduce an average-reward soft actor-critic algorithm to address these gaps in the field. We validate our method by comparing with existing average-reward algorithms on standard RL benchmarks, achieving superior performance for the average-reward criterion.

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强化学习 平均奖励 软演员-评论家算法 熵正则化 性能比较
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