GAM : A General Auto-Associative Memory Model
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概要
- 論文の詳細を見る
This paper attempts to establish a theory for a general auto-associative memory model. We start by defining a new concept called supporting function to replace the concept of energy function. As known, the energy function relies on the assumption of symmetric interconnection weights, which is used in the conventional Hopfield auto-associative memory, but not evidenced in any biological memories. We then formulate the information retrieving process as a dynamic system by making use of the supporting function and derive the attraction or asymptotic stability condition and the condition for convergence of an arbitrary state to a desired state. The latter represents a key condition for associative memory to have a capability of learning from variant samples. Finally, we develop an algorithm to learn the asymptotic stability condition and an algorithm to train the system to recover desired states from their variant samples. The latter called sample learning algorithm is the first of its kind ever been discovered for associative memories. Both recalling and learning processes are of finite convergence, a must-have feature for associative memories by analogy to normal human memory. The effectiveness of the recalling and learning algorithms is experimentally demonstrated.
- 社団法人電子情報通信学会の論文
- 2002-07-01
著者
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Ren Fuji
Faculty Of Engineering The University Of Tokushima
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Shi Hongchi
Department Of Computer Engineering & Computer Science The University Of Missouri Columbia
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ZHAO Yunxin
Department of Computer Engineering & Computer Science, The University of Missouri Columbia
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ZHUANG Xinhua
The authors are with the Department of Computer Engineering & Computer Science, The University of Mi
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Zhao Yunxin
Department Of Computer Engineering & Computer Science The University Of Missouri Columbia
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Zhuang Xinhua
The Authors Are With The Department Of Computer Engineering & Computer Science The University Of
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REN Fuji
Faculty of Engineering, The University of Tokushima
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Shi H
Department of Computer Engineering & Computer Science, The University of Missouri Columbia
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Zhao YX
Department of Computer Engineering & Computer Science, The University of Missouri Columbia
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Zhuang XH
The authors are with the Department of Computer Engineering & Computer Science, The University of Missouri Columbia
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Ren FJ
Faculty of Engineering, The University of Tokushima
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