DocumentCode
395103
Title
Associative memory by recurrent neural networks with delay elements
Author
Miyoshi, Shigeki ; Yanai, H.-F. ; Okada, Masato
Author_Institution
Dept. of Electron. Eng., Kobe City Coll. of Technol., Japan
Volume
1
fYear
2002
fDate
18-22 Nov. 2002
Firstpage
70
Abstract
The synapses of real neural systems seem to have delays. Therefore, it is worthwhile to analyze associative memory models with delayed synapses. Thus, a sequential associative memory model with delayed synapses is discussed, where a discrete synchronous updating rule and a correlation learning rule are employed. Its dynamic properties are analyzed by the statistical neurodynamics. In this paper, we first re-derive the Yanai-Kim theory, which involves macrodynamical equations for the dynamics of the network with serial delay elements. Since their theory needs a computational complexity of 𝒪(L4t) to obtain the macroscopic state at time step t where L is the length of delay, it is intractable to discuss the macroscopic properties for a large L limit. Thus, we derive steady state equations using the discrete Fourier transformation, where the computational complexity does not formally depend on L. We show that the storage capacity αC is in proportion to the delay length L with a large L limit, and the proportion constant is 0.195, i.e., αC=0.195 L. These results are supported by computer simulations.
Keywords
computational complexity; content-addressable storage; delays; recurrent neural nets; Yanai-Kim theory; computational complexity; correlation learning rule; delay elements; delayed synapses; macrodynamical equations; sequential associative memory models; statistical neurodynamics; Associative memory; Computer simulation; Delay effects; Error correction; Learning systems; Neural networks; Neurodynamics; Neurons; Random variables; Recurrent neural networks;
fLanguage
English
Publisher
ieee
Conference_Titel
Neural Information Processing, 2002. ICONIP '02. Proceedings of the 9th International Conference on
Print_ISBN
981-04-7524-1
Type
conf
DOI
10.1109/ICONIP.2002.1202133
Filename
1202133
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