A Genetic Algorithm Creates New Attractors in an Associative Memory Network by Pruning Synapses Adaptively
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概要
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We apply evolutionary algorithms to neural network model of associative memory. In the model, some of the appropriate configurations of the synaptic weights allow the network to store a number of patterns as an associative memory. For example, the so-called Hebbian rule prescribes one such configuration. However, if the number of patterns to be stored exceeds a critical amount (over-loaded), the ability to store patterns collapses more or less. Or, synaptic weights chosen at rondom do not have such an ability. In this paper, we describe a genetic algorithm which successfully evolves both the random synapses and over-loaded Hebbian synapses to function as associative memory by adaptively pruning some of the synaptic connections. Although many authors have shown that the model is robust against pruning a fraction of synaptic connections, improvement of performance by pruning has not been explored, as far as we know.
- 社団法人電子情報通信学会の論文
- 1998-11-25
著者
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Imada A
Nara Inst. Sci. And Technol. Ikoma‐shi Jpn
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Araki Keijiro
The Author Is With The Department Of Computer Science And Computer Engineering Graduate School Of In
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IMADA Akira
The author is with the Graduate School of Information Science, Nara Institute of Science and Technol
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Imada Akira
The Author Is With The Graduate School Of Information Science Nara Institute Of Science And Technolo