Investigation and Analysis of Hysteresis in Hopfield and T-Model Neural Networks
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概要
- 論文の詳細を見る
We report on an experimental hysteresis in the Hopfiedld networks and examine the effect of the hysteresis on some important characteristics of the Hopfield networks. The detail mathematic description of the hysteresis phenomenon in the Hopfield networks is given. It suggests that the hysteresis results from fully-connected interconnection of the Hopfield networks and the hysteresis tends to makes the Hopfield networks difficult to reach the global minimum. This paper presents a T-Model network approach to overcoming the hysteresis phenomenon by employing a half-connected interconnection. As a result, there is no hysteresis phenomenon found in the T-Model networks. Theoretical analysis of the T-Model networks is also given. The hysteresis phenomenon in the Hopfield and the T-Model networks is illustrated through experiments and simulations. The experiments agree with the theoretical analysis very well.
- 社団法人電子情報通信学会の論文
- 1994-11-25
著者
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Tang Zheng
Faculty Of Engineering Miyazaki University
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ISHIZUKA Okihiko
Miyazaki University
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Ishizuka Okihiko
The Faculty Of Engineering Miyazaki University
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Ishizuka Okihiko
Faculty Of Engineering Miyazaki University
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Sakai Masakazu
Faculty of Engineering, Miyazaki University
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