Huawen Hu, Enze Shi, Chenxi Yue, Shuocun Yang, Zihao Wu, Yiwei Li, Tianyang Zhong, Tuo Zhang, Tianming Liu, Shu Zhang
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引用次数: 0
摘要
人在环强化学习整合了人类的专业知识,以加速代理学习,并在复杂领域提供关键指导和反馈。然而,现有的许多方法侧重于单个代理任务,在训练过程中需要人类持续参与,这大大增加了人类的工作量,限制了可扩展性。在本文中,我们提出了HARP(Human-Assisted Regrouping with Permutation Invariant Critic),这是一种多代理强化学习框架,专为面向群体的任务而设计。HARP将自动代理重组与部署过程中的策略性人工辅助整合在一起,使非专业人员能够以最少的干预提供有效的指导。在训练过程中,代理会动态调整它们的分组,以优化协作任务的完成。在部署时,它们会主动寻求人类的帮助,并利用 "置换不变分组批判器"(Permutation Invariant GroupCritic)来评估和完善人类提出的分组,让非专业人员也能提出有价值的建议。在多种协作场景中,我们的方法能够利用非专家提供的有限指导并提高性能。该项目见 https://github.com/huawen-hu/HARP。
HARP: Human-Assisted Regrouping with Permutation Invariant Critic for Multi-Agent Reinforcement Learning
Human-in-the-loop reinforcement learning integrates human expertise to
accelerate agent learning and provide critical guidance and feedback in complex
fields. However, many existing approaches focus on single-agent tasks and
require continuous human involvement during the training process, significantly
increasing the human workload and limiting scalability. In this paper, we
propose HARP (Human-Assisted Regrouping with Permutation Invariant Critic), a
multi-agent reinforcement learning framework designed for group-oriented tasks.
HARP integrates automatic agent regrouping with strategic human assistance
during deployment, enabling and allowing non-experts to offer effective
guidance with minimal intervention. During training, agents dynamically adjust
their groupings to optimize collaborative task completion. When deployed, they
actively seek human assistance and utilize the Permutation Invariant Group
Critic to evaluate and refine human-proposed groupings, allowing non-expert
users to contribute valuable suggestions. In multiple collaboration scenarios,
our approach is able to leverage limited guidance from non-experts and enhance
performance. The project can be found at https://github.com/huawen-hu/HARP.