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ICTAI
2007
IEEE

Multi-agent Reinforcement Learning Using Strategies and Voting

13 years 10 months ago
Multi-agent Reinforcement Learning Using Strategies and Voting
Multiagent learning attracts much attention in the past few years as it poses very challenging problems. Reinforcement Learning is an appealing solution to the problems that arise to Multi Agent Systems (MASs). This is due to the fact that Reinforcement Learning is a robust and well suited technique for learning in MASs. This paper proposes a multi-agent Reinforcement Learning approach, that uses coordinated actions, which we call strategies and a voting process that combines the decisions of the agents, in order to follow a strategy. We performed experiments to the predator-prey domain, comparing our approach with other multi-agent Reinforcement Learning techniques, getting promising results.
Ioannis Partalas, Ioannis Feneris, Ioannis P. Vlah
Added 03 Jun 2010
Updated 03 Jun 2010
Type Conference
Year 2007
Where ICTAI
Authors Ioannis Partalas, Ioannis Feneris, Ioannis P. Vlahavas
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