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Modeling birdsong learning with a chaotic Elman network
Authors:Masatoshi Funabashi  Kazuyuki Aihara
Affiliation:(1) Graduate School of Frontier Sciences, University of Tokyo, 5-1-5 Kashiwanoha, Kashiwa, Chiba 277-8561, Japan;(2) Institute of Industrial Science, University of Tokyo, and ERATO, JST, Tokyo, Japan
Abstract:Among passerines, Bengali finches are known to sing extremely complex courtship songs with three hierarchical structures: namely, the element, the chunk, and the syntax. In this work, we theoretically studied the mechanism of the song of Bengali finches in aides to provide a dynamic view of the development of birdsong learning. We first constructed a model of the Elman network with chaotic neurons that successfully learned the supervisor signal defined by a simple finite-state syntax. Second, we focused on the process of individual-specific increases in the complexity of song syntax. We propose a new learning algorithm to produce the intrinsic diversification of song syntax without a supervisor on the basis of the itinerant dynamics of chaotic neural networks and the Hebbian learning rule. The emergence of novel syntax modifying the acquired syntax is demonstrated. This work was presented in part at the 11th International Symposium on Artificial Life and Robotics, Oita, Japan, January 23–25, 2006
Keywords:Chaotic itinerancy  Elman network  Hebbian learning  Finite-state automaton  Biolinguistics  Chaos as catalyst of learning
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