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A minimal model of communication for multi-agent systems

机译:多主体系统的最小通信模型

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摘要

Classifier systems are rule-based systems dedicated to the learning of more or less complex tasks. They evolve thanks to a genetic algorithm toward a solution without any external help. When the problem is very intricate it is useful to have different systems, each of them being in charge with an easier part of the problem. The set of all the entities responsible for the resolution of each sub-task, forms a multi-agent system. Agents have to learn how to exchange information in order to solve the main problem. We define the minimal requirements needed by multi-agent classifier systems to evolve communication. We thus design a minimal model involving two classifier systems which goal is to communicate with each other. A measure of entropy that evaluates the emergence of a common referent between agents has been finalised. The minimal model applied to two sorts of classifier systems has shown promising results and let us think that this work is only the beginning of our ongoing research activity.
机译:分类器系统是基于规则的系统,专用于学习或多或少的复杂任务。他们借助遗传算法向解决方案发展,而无需任何外部帮助。当问题非常复杂时,拥有不同的系统会很有用,每个系统都负责解决问题中比较容易的部分。负责解决每个子任务的所有实体的集合构成一个多代理系统。代理商必须学习如何交换信息以解决主要问题。我们定义了多代理分类器系统发展通信所需的最低要求。因此,我们设计了一个涉及两个分类器系统的最小模型,目标是彼此通信。已经确定了一种评估代理之间共同指称出现的熵的度量。应用于两种分类器系统的最小模型已显示出令人鼓舞的结果,让我们认为这项工作只是我们正在进行的研究活动的开始。

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