cs.AI updates on arXiv.org 10月09日 12:09
双目标表征提升GCRL性能
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本文提出一种名为双目标表征的方法,用于提升目标条件强化学习(GCRL)的性能。该方法通过时间距离编码状态,具有环境内在动态依赖性和对原始状态表征的不变性。实验表明,该方法能显著提高GCRL在多个任务中的离线目标达成性能。

arXiv:2510.06714v1 Announce Type: cross Abstract: In this work, we introduce dual goal representations for goal-conditioned reinforcement learning (GCRL). A dual goal representation characterizes a state by "the set of temporal distances from all other states"; in other words, it encodes a state through its relations to every other state, measured by temporal distance. This representation provides several appealing theoretical properties. First, it depends only on the intrinsic dynamics of the environment and is invariant to the original state representation. Second, it contains provably sufficient information to recover an optimal goal-reaching policy, while being able to filter out exogenous noise. Based on this concept, we develop a practical goal representation learning method that can be combined with any existing GCRL algorithm. Through diverse experiments on the OGBench task suite, we empirically show that dual goal representations consistently improve offline goal-reaching performance across 20 state- and pixel-based tasks.

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目标条件强化学习 双目标表征 GCRL 离线性能 时间距离
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