Retrieval Properties of Analog Neural Networks and the Nonmonotonicity of Transfer Functions

 FUKAI Tomoki
 Tokai University

 KIM Jongho
 Tokai University

 SHIINO Masatoshi
 Tokyo Institute of Technology
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Author(s)

 FUKAI Tomoki
 Tokai University

 KIM Jongho
 Tokai University

 SHIINO Masatoshi
 Tokyo Institute of Technology
Journal

 Neural Networks

Neural Networks 8(3), 391404, 19950401
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