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Training Multiagent Systems by Q‐Learning: Approaches and Empirical Results

José Manuel López-Guede, Borja Fernandez‐Gauna, Manuel Graña, Ekaitz Zulueta

Year
2014
Citations
7

Abstract

Abstract Multiagent systems are increasingly present in computational environments. However, the problem of agent design or control is an open research field. Reinforcement learning approaches offer solutions that allow autonomous learning with minimal supervision. The Q‐learning algorithm is a model‐free reinforcement learning solution that has proven its usefulness in single‐agent domains; however, it suffers from dimensionality curse when applied to multiagent systems. In this article, we discuss two approaches, namely TRQ‐learning and distributed Q‐learning, that overcome the limitations of Q‐learning offering feasible solutions. We test these approaches in two separate domains. The first is the control of a hose by a team of robots. The second is the trash disposal problem. Computational results show the effectiveness of Q‐learning solutions to multiagent systems’ control.

Keywords

Curse of dimensionalityReinforcement learningComputer scienceArtificial intelligenceMulti-agent systemField (mathematics)Control (management)Machine learningRobot learningRobot

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