集体学习动作序列

Gerhard Weiss
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引用次数: 3

摘要

多智能体系统学习是分布式人工智能研究的一个新领域。作者研究了反应性多智能体系统中延迟强化学习的一种面向行动的方法,并重点研究了智能体如何学习协调其行动的问题。介绍了对合适的动作序列进行集体学习的两种基本算法——ACE算法和AGE算法(ACE和AGE分别代表动作估计和动作组估计)。这两种算法都明确考虑到(i)每个智能体通常只知道其环境的一小部分,(ii)智能体通常必须合作解决任务,以及(iii)智能体执行的动作可能不兼容。所描述的实验说明了这些算法及其学习能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collective learning of action sequences
Learning in multiagent systems is a new research field in distributed artificial intelligence. The author investigates an action-oriented approach to delayed reinforcement learning in reactive multiagent systems and focuses on the question of how the agents can learn to coordinate their actions. Two basic algorithms, the ACE algorithm and the AGE algorithm (ACE and AGE stand for Action Estimation and Action Group Estimation, respectively), for the collective learning of appropriate action sequences are introduced. Both algorithms explicitly take into consideration that (i) each agent typically knows only a fraction of its environment, (ii) the agents typically have to cooperate in solving tasks, and (iii) actions carried out by the agents can be incompatible. The experiments described illustrate these algorithms and their learning capacities.<>
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