通过观察和建模单智能体性能来进行多智能体特别团队划分

Etkin Baris Ozgul, Somchaya Liemhetcharat, K. H. Low
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引用次数: 1

摘要

多智能体研究的重点是寻找任务的最佳团队。许多方法假设代理的性能是已知的先验。我们对临时团队感兴趣,其中代理的算法和性能最初是未知的。我们专注于通过在训练环境中观察单个智能体的性能来建模,并使用学习到的模型为多智能体团队划分新的环境。目标是尽量减少使用的代理数量,同时保持多代理团队的性能阈值。我们提出了一个新的模型,通过观察来学习智能体的性能,以及一个最小化团队规模的划分算法。我们在仿真中评估了我们的算法,并证明了我们的学习模型和划分算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-agent ad hoc team partitioning by observing and modeling single-agent performance
Multi-agent research has focused on finding the optimal team for a task. Many approaches assume that the performance of the agents are known a priori. We are interested in ad hoc teams, where the agents' algorithms and performance are initially unknown. We focus on the task of modeling the performance of single agents through observation in training environments, and using the learned models to partition a new environment for a multi-agent team. The goal is to minimize the number of agents used, while maintaining a performance threshold of the multi-agent team. We contribute a novel model to learn the agent's performance through observations, and a partitioning algorithm that minimizes the team size. We evaluate our algorithms in simulation, and show the efficacy of our learn model and partitioning algorithm.
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