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IAT
2003
IEEE

Integrating Reinforcement Learning, Bidding and Genetic Algorithms

13 years 9 months ago
Integrating Reinforcement Learning, Bidding and Genetic Algorithms
This paper presents a multi-agent reinforcement learning bidding approach (MARLBS) for performing multi-agent reinforcement learning. MARLBS integrates reinforcement learning, bidding and genetic algorithms. The general idea of our multi-agent systems is as follows: There are a number of individual agents in a team, each agent of the team has two modules: Q module and CQ module. Each agent can select actions to be performed at each step, which are done by the Q module. While the CQ module determines at each step whether the agent should continue or relinquish control. Once an agent relinquishes its control, a new agent is selected by bidding algorithms. We applied GA-based MARLBS to the Backgammon game. The experimental results show MARLBS can achieve a superior level of performance in game-playing, outperforming PubEval, while the system uses zero built-in knowledge.
Dehu Qi, Ron Sun
Added 04 Jul 2010
Updated 04 Jul 2010
Type Conference
Year 2003
Where IAT
Authors Dehu Qi, Ron Sun
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