Open access peer-reviewed chapter

Improving Search Efficiency in the Action Space of an Instance-Based Reinforcement Learning Technique for Multi-Robot Systems

By Kazuhiro Ohkura and Toshiyuki Yasuda

Submitted: March 30th 2010Published: January 30th 2011

DOI: 10.5772/12836

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Kazuhiro Ohkura and Toshiyuki Yasuda (January 30th 2011). Improving Search Efficiency in the Action Space of an Instance-Based Reinforcement Learning Technique for Multi-Robot Systems, Multi-Robot Systems Toshiyuki Yasuda, IntechOpen, DOI: 10.5772/12836. Available from:

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