신경회로망과 그 응용에 관한 연구A Study on the Symmetric Neural Networks and Their Applications

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The conventional neural networks are built without considering the underlying structure of the problems. Hence, they usually contain redundant weights and require excessive training time. A novel neural network structure is proposed for symmetric problems, which alleviate some of the aforementioned drawback of the conventional neural networks. This concept is expanded to that of the constrained neural network which may be applied to general structured problems. Because these neural networks can not be trained by the conventional training algorithm, which destroys the weight structure of the neural networks, a proper training algorithm is suggested. The illustrative examples are shown to demonstrate the applicability of the proposed idea.
Publisher
대한기계학회
Issue Date
1992
Language
Korean
Citation

대한기계학회논문집 A, v.16, no.7, pp.1322 - 1331

ISSN
1226-4873
URI
http://hdl.handle.net/10203/66438
Appears in Collection
ME-Journal Papers(저널논문)
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