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RELATIONAL SEQUENCE BASED CLASSIFICATION IN MULTI-AGENT SYSTEMS

机译:基于关系序列的多代理系统分类

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In multiagent adversarial environments, the adversary consists of a team of opponents that may interfere with the achievement of goals. In this domain agents must be able to quickly adapt to the environment and infer knowledge from other agents' deportment to identify the future behaviors of opponents. We present a relational model to characterize adversary teams based on its behavior. A team's deportment is represent by a set of relational sequences of basic actions extracted from their observed behaviors. Based on this, we present a similarity measure to classify the teams' behavior. The sequence extraction and classification are implemented in the domain of simulated robotic soccer, and experimental results are presented.
机译:在多层对抗环境中,对手包括一支可能会干扰实现目标的对手团队。在这个域名代理商必须能够快速适应环境和从其他代理商的举报的环境,以确定对手的未来行为。我们提出了一个关系模型,以根据其行为来表征对手球队。团队的驱逐出于从其观察到的行为中提取的一组关系序列。基于此,我们提出了一个相似度措施来对团队的行为进行分类。序列提取和分类在模拟机器人足球域中实现,并提出了实验结果。

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