Proceedings of the Fuzzy System Symposium
25th Fuzzy System Symposium
Session ID : 2A1-03
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Mutual Development of Behavior Acquisition and Recognition based on State Value
*Yoshihiro TamuraYasutake TakahashiMinoru Asada
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Abstract
Both self-learning architecture(embedded structure) and explicit/implicit teaching from other agents(environmental design issue) are necessary not only for one-shot behavior learning but more seriously for life-time behavior learning. This paper presents a method for a robot to understand unfamiliar behaviors shown by others through the collaboration between behavior acquisition(reinforcement learning) and recognition of observed behaviors, where the state value has an important role not simply for behavior acquisition but also for behavior recognition(observation). That is, the state value updates can be accelerated by observation without real trials and errors while the learned values enrich the recognition system since it is based on estimation of the state value of the observed behavior.The validity of the proposed method is shown by applying it to a dynamic environment where a human and two robots play soccer.
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© 2009 Japan Society for Fuzzy Theory and Intelligent Informatics
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