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AAMAS
2002
Springer

Multiagent Learning for Open Systems: A Study in Opponent Classification

13 years 4 months ago
Multiagent Learning for Open Systems: A Study in Opponent Classification
Abstract. Open systems are becoming increasingly important in a variety of distributed, networked computer applications. Their characteristics, such as agent diversity, heterogeneity and fluctuation, confront multiagent learning with new challenges. This paper presents the interaction learning meta-architecture InFFrA as one possible answer to these challenges, and introduces the opponent classification heuristic ADHOC as a concrete multiagent learning method that has been designed on the basis of InFFrA. Extensive experimental validation proves the adequacy of ADHOC in a scenario of iterated multiagent games and underlines the usefulness of schemas such as InFFrA specifically tailored for open multiagent learning environments. At the same time, limitations in the performance of ADHOC suggest further improvements to the methods used here. Also, the results obtained from this study allow more general conclusions regarding the problems of learning in open systems to be drawn.
Michael Rovatsos, Gerhard Weiß, Marco Wolf
Added 16 Dec 2010
Updated 16 Dec 2010
Type Journal
Year 2002
Where AAMAS
Authors Michael Rovatsos, Gerhard Weiß, Marco Wolf
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