A Chaotic Memory Search Model Based on Associative Dynamics Using Features in Stored Patterns sice02-0311 A Chaotic Memory Search Model Based on Associative Dynamics Using Features in Stored Patterns
نویسندگان
چکیده
Abstract: A new chaotic memory search model based on associative dynamics using features in stored patterns is proposed. In the present paper, two kinds of features are considered; external and internal ones. The former is assigned by a designer and the latter is automatically assigned by competitive learning. The control of chaotic and static states is realized using a presynaptic inhibition model. The performance of the proposed model is evaluated through computer simulation.
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