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Learning to weigh basic behaviors in Scalable Agents

Identifieur interne : 003265 ( Crin/Corpus ); précédent : 003264; suivant : 003266

Learning to weigh basic behaviors in Scalable Agents

Auteurs : Olivier Buffet ; Alain Dutech ; François Charpillet

Source :

RBID : CRIN:buffet02a

English descriptors

Abstract

Agents, especially in the context of Multi-Agents Systems, are confronted to complex tasks. We propose a methodology for the automated design of such agents in the case where the global task can be decomposed into simpler sub-tasks that can be concurrent. This is accomplished by automatically combining basic behaviors using Reinforcement Learning methods. Basic behaviors are either learned or reused from previous tasks as they do not need to be tuned to the specific task being learned. Furthermore, the agents designed by our methodology are highly scalable as, without further refinement of the global behavior, they can automatically combine several instances of the same basic behavior to take into account concurrent occurences of the same subtask.

Links to Exploration step

CRIN:buffet02a

Le document en format XML

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<div type="abstract" xml:lang="en" wicri:score="2251">Agents, especially in the context of Multi-Agents Systems, are confronted to complex tasks. We propose a methodology for the automated design of such agents in the case where the global task can be decomposed into simpler sub-tasks that can be concurrent. This is accomplished by automatically combining basic behaviors using Reinforcement Learning methods. Basic behaviors are either learned or reused from previous tasks as they do not need to be tuned to the specific task being learned. Furthermore, the agents designed by our methodology are highly scalable as, without further refinement of the global behavior, they can automatically combine several instances of the same basic behavior to take into account concurrent occurences of the same subtask.</div>
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<crinnumber>A02-R-085</crinnumber>
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<e>Dutech, Alain</e>
<e>Charpillet, François</e>
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<title>Learning to weigh basic behaviors in Scalable Agents</title>
<booktitle>{First International Joint Conference on Autonomous Agents & Multiagent Systems - AAMAS 2002, Bologna, Italy}</booktitle>
<year>2002</year>
<volume>3</volume>
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<abstract>Agents, especially in the context of Multi-Agents Systems, are confronted to complex tasks. We propose a methodology for the automated design of such agents in the case where the global task can be decomposed into simpler sub-tasks that can be concurrent. This is accomplished by automatically combining basic behaviors using Reinforcement Learning methods. Basic behaviors are either learned or reused from previous tasks as they do not need to be tuned to the specific task being learned. Furthermore, the agents designed by our methodology are highly scalable as, without further refinement of the global behavior, they can automatically combine several instances of the same basic behavior to take into account concurrent occurences of the same subtask.</abstract>
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