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Behavior Acquisition Based on Multi-module Learning System in Multi-agent Environment

机译:基于多算法环境中多模块学习系统的行为采集

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The conventional reinforcement learning approaches have difficulties to handle the policy alternation of the opponents because it may cause dynamic changes of state transition probabilities of which stability is necessary for the learning to converge. This paper presents a method of multi-module reinforcement learning in a multiagent environment, by which the learning agent can adapt itself to the policy changes of the opponents. We show a preliminary result of a simple soccer situation in the context of RoboCup.
机译:传统的加强学习方法具有处理对手的政策交替的困难,因为它可能导致状态转换概率的动态变化,学习融合所需的稳定性。本文提出了一种多模块增强学习的方法,在多层环境中,学习代理可以适应对手的政策变化。我们在Robocup的背景下展示了简单的足球局​​面的初步结果。

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