Performance Formulation and Evaluation of Associative Memory Extended to Higher Order
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概要
- 論文の詳細を見る
In this letter, we present a distinct alternative of cross talk formulation of associative memory based on the outer product algorithm extended to the higher order and a performance evaluation in terms of the probability of exact data recall by using this formulation. The significant feature of these formulations is that both cross talk and the probability formulated are explicitly represented as the functional forms of Hamming distance between the memorized keys and the applied input key, and the degree of higher order correlation. Simulation results show that exact data retrieval ability of the associative memory using randomly generated data and keys is in well agreement with our theoretical estimation.
- 社団法人電子情報通信学会の論文
- 1994-04-25
著者
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Kumagai Yukio
Department Of Computer Science And Systems Engineering Muroran Institute Of Technology
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Kamruzzaman J
Monash Univ. Aus
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Kamruzzaman Joarder
Department of Electrical and Electronic Engineering, Bangladesh University of Engineering and Techno
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Hikita Hiromitsu
Department of Mechanical Systems Engineering, Muroran Institute of Technology
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Hikita Hiromitsu
Department Of Mechanical Systems Engineering Muroran Institute Of Technology
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