DocumentCode
1460714
Title
Supervised neural networks for the classification of structures
Author
Sperduti, Alessandro ; Starita, Antonina
Author_Institution
Dipartimento di Inf., Pisa Univ., Italy
Volume
8
Issue
3
fYear
1997
fDate
5/1/1997 12:00:00 AM
Firstpage
714
Lastpage
735
Abstract
Standard neural networks and statistical methods are usually believed to be inadequate when dealing with complex structures because of their feature-based approach. In fact, feature-based approaches usually fail to give satisfactory solutions because of the sensitivity of the approach to the a priori selection of the features, and the incapacity to represent any specific information on the relationships among the components of the structures. However, we show that neural networks can, in fact, represent and classify structured patterns. The key idea underpinning our approach is the use of the so called “generalized recursive neuron”, which is essentially a generalization to structures of a recurrent neuron. By using generalized recursive neurons, all the supervised networks developed for the classification of sequences, such as backpropagation through time networks, real-time recurrent networks, simple recurrent networks, recurrent cascade correlation networks, and neural trees can, on the whole, be generalized to structures. The results obtained by some of the above networks (with generalized recursive neurons) on the classification of logic terms are presented
Keywords
correlation methods; encoding; learning (artificial intelligence); pattern classification; recurrent neural nets; trees (mathematics); backpropagation; cascade correlation; encoding; generalization; gradient methods; graph theory; learning systems; neural trees; recurrent neural networks; recursive neurons; structured pattern classification; supervised neural networks; Application software; Backpropagation; Medical diagnostic imaging; Neural networks; Neurons; Robustness; Sequences; Speech analysis; Speech processing; Tree graphs;
fLanguage
English
Journal_Title
Neural Networks, IEEE Transactions on
Publisher
ieee
ISSN
1045-9227
Type
jour
DOI
10.1109/72.572108
Filename
572108
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