cs.AI updates on arXiv.org 07月10日
Efficient Multi-Task Reinforcement Learning with Cross-Task Policy Guidance
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本文提出一种名为CTPG的跨任务策略指导框架,通过任务间的策略共享,加速技能获取,提高强化学习效率。CTPG能够根据不同任务的需要,选择合适的策略,并通过两个门控机制优化学习过程。

arXiv:2507.06615v1 Announce Type: cross Abstract: Multi-task reinforcement learning endeavors to efficiently leverage shared information across various tasks, facilitating the simultaneous learning of multiple tasks. Existing approaches primarily focus on parameter sharing with carefully designed network structures or tailored optimization procedures. However, they overlook a direct and complementary way to exploit cross-task similarities: the control policies of tasks already proficient in some skills can provide explicit guidance for unmastered tasks to accelerate skills acquisition. To this end, we present a novel framework called Cross-Task Policy Guidance (CTPG), which trains a guide policy for each task to select the behavior policy interacting with the environment from all tasks' control policies, generating better training trajectories. In addition, we propose two gating mechanisms to improve the learning efficiency of CTPG: one gate filters out control policies that are not beneficial for guidance, while the other gate blocks tasks that do not necessitate guidance. CTPG is a general framework adaptable to existing parameter sharing approaches. Empirical evaluations demonstrate that incorporating CTPG with these approaches significantly enhances performance in manipulation and locomotion benchmarks.

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跨任务学习 强化学习 策略指导 技能获取 CTPG
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