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Case Exchange Strategies in Multiagent Learning

机译:多主体学习中的案例交流策略

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摘要

Multiagent systems offer a new paradigm to organize AI applications. We focus on the application of Case-Based Reasoning to Multiagent systems. CBR offers the individual agents the capability of autonomously learn from experience. In this paper we present a framework for collaboration among agents that use CBR. We present explicit strategies for case retain where the agents take in consideration that they are not learning in isolation but in a multiagent system. We also present case bartering as an effective strategy when the agents have a biased view of the data. The outcome of both case retain and bartering is an improvement of individual agent performance and overall multiagent system performance. We also present empirical results comparing all the strategies proposed.
机译:Multiagent系统提供了组织AI应用程序的新范例。我们专注于基于案例的推理在多主体系统中的应用。 CBR为各个代理提供了从经验中自主学习的能力。在本文中,我们提出了一个使用CBR的代理之间进行协作的框架。我们为案例保留提出了明确的策略,其中代理考虑到他们不是孤立学习,而是在多代理系统中学习。当代理对数据有偏见时,我们还提出了以案例交换作为一种有效的策略。案例保留和交换的结果是单个代理性能和整体多代理系统性能的提高。我们还提供了比较所有提出的策略的实证结果。

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