cs.AI updates on arXiv.org 10月10日 12:12
DEAS:离线强化学习新框架提升智能决策
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本文提出DEAS,一种利用动作序列进行价值学习的离线强化学习框架,通过半马尔可夫决策过程Q学习,有效降低有效规划范围,提升复杂、长时序任务表现。

arXiv:2510.07730v1 Announce Type: cross Abstract: Offline reinforcement learning (RL) presents an attractive paradigm for training intelligent agents without expensive online interactions. However, current approaches still struggle with complex, long-horizon sequential decision making. In this work, we introduce DEtached value learning with Action Sequence (DEAS), a simple yet effective offline RL framework that leverages action sequences for value learning. These temporally extended actions provide richer information than single-step actions and can be interpreted through the options framework via semi-Markov decision process Q-learning, enabling reduction of the effective planning horizon by considering longer sequences at once. However, directly adopting such sequences in actor-critic algorithms introduces excessive value overestimation, which we address through detached value learning that steers value estimates toward in-distribution actions that achieve high return in the offline dataset. We demonstrate that DEAS consistently outperforms baselines on complex, long-horizon tasks from OGBench and can be applied to enhance the performance of large-scale Vision-Language-Action models that predict action sequences, significantly boosting performance in both RoboCasa Kitchen simulation tasks and real-world manipulation tasks.

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离线强化学习 动作序列 价值学习 半马尔可夫决策过程 智能决策
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