基于规则的提前喊出体系结构的混合合作行为学习方法

Sanjeev Paskaradevan, J. Denzinger
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引用次数: 9

摘要

我们提出了一种智能体架构和混合行为学习方法,该方法允许使用其他智能体的交流意图来创建能够与其他智能体的各种配置合作完成任务的智能体。我们的大喊大叫架构基于两个规则集,一个是在没有沟通意图的情况下做出决定,另一个是在有这些意图的情况下做出决定。强化学习用于确定在特定情况下哪一组负责最终决策。进化学习是用来学习这些规则的。我们将这种方法应用于电脑游戏中单位的学习行为,结果表明,与不使用喊出相比,使用喊出大大提高了学习行为的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hybrid Cooperative Behavior Learning Method for a Rule-Based Shout-Ahead Architecture
We present an agent architecture and a hybrid behavior learning method for it that allows the use of communicated intentions of other agents to create agents that are able to cooperate with various configurations of other agents in fulfilling a task. Our shout-ahead architecture is based on two rule sets, one making decisions without communicated intentions and one with these intentions. Reinforcement learning is used to determine in a particular situation which set is responsible for the final decision. Evolutionary learning is used to learn these rules. Our application of this approach to learning behaviors for units in a computer game shows that the use of shout-ahead substantially improves the quality of the learned behavior compared to agents not using shout-ahead.
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