学习如何在多智能体联盟中规划和实例化计划

Xin Li, Leen-Kiat Soh
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引用次数: 6

摘要

我们提出了一种创新的两步学习方法,用于动态、不确定、实时和噪声环境下多智能体联盟形成的规划实例化。第一步是了解联盟的规划,以提高其质量,适应实时和环境要求。第二步学习计划的实例化以改进形成过程,考虑到同伴代理的不确定性和动态行为。将该方法分解为两个步骤,可以实现学习的模块化和灵活性:学习如何规划联盟是战略性的,而学习如何实例化计划是战术性的。我们的方法采用基于案例的强化学习(CBRL)框架。
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Learning how to plan and instantiate a plan in multi-agent coalition
We propose an innovative two-step learning approach to planning-instantiation for multi-agent coalition formation in dynamic, uncertain, real-time, and noisy environments. The first step learns about the planning of a coalition to improve its quality, adapting to the real-time and environmental requirements. The second step learns about the instantiation of the plan to improve the formation process, taking into account uncertain and dynamic behaviors of the peer agents. Decomposing the approach into two steps allows for modularity and flexibility in learning: learning how to plan a coalition is strategic while learning how to instantiate a plan is tactical. Our approach employs a case-based reinforcement learning (CBRL) framework.
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