DocumentCode
3151523
Title
Automatic growing of a Hopfield style neural network for classification of patterns
Author
Brouwer, Roelof K.
Author_Institution
Univ. Coll. of the Cariboo, Canada
fYear
1995
fDate
4-6 Jul 1995
Firstpage
637
Lastpage
641
Abstract
Hopfield networks, a type of recurrent neural network, with a modification of the perceptron learning rule or Hebbian learning as the learning paradigm, may be used as a tool for classification. The usual method of using the Hopfield network as an associative memory has certain shortcomings however. Brouwer (1993, 1994) proposed a method which overcomes these shortcomings. This method avoids the problem of overloading the network that is due to attempting to store all of the elements of the training sets. The training algorithm described there is based upon a further extension of the Widrow Hoff learning rule. The results are quite good, however the connection matrix in case of Hopfield style networks is huge. This paper describes how the original network may be replaced by a much smaller network which is allowed to grow automatically, during training, from a one neuron network to the size required. This paper concludes with the results of applying the method to classification of diabetes patients and classification of cervical cells
Keywords
Hopfield neural nets; learning (artificial intelligence); pattern classification; Hebbian learning modification; Hopfield style neural network automatic growing; Widrow Hoff learning rule; associative memory; cervical cells; connection matrix; diabetes patients; pattern classification; perceptron learning rule modification; recurrent neural network;
fLanguage
English
Publisher
iet
Conference_Titel
Image Processing and its Applications, 1995., Fifth International Conference on
Conference_Location
Edinburgh
Print_ISBN
0-85296-642-3
Type
conf
DOI
10.1049/cp:19950737
Filename
465471
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