DocumentCode :
2286290
Title :
Ternary synaptic weights algorithm: neural network training with don´t care attributes
Author :
Ulgen, Figen ; Akamatsu, Norio
Author_Institution :
Justsystem Corp., Tokushima, Japan
fYear :
1994
fDate :
13-16 Apr 1994
Firstpage :
503
Abstract :
Classification systems, which have long been realized through rule-based systems, are now being implemented with neural-expert system hybrids because of the well known difficulties associated with the formation of rules and the ease with which neural networks can capture the relationships between attributes and classifications. Backpropagation, which is a commonly used neural network training algorithm, suffers from slow training and the possibility of local minima trapping. In this paper we propose a new neural network training algorithm, ternary synaptic weights (TSW) algorithm, which offers fast, guaranteed learning and automatic topology determination. Also, it provides an insight into the interrelationships between the attributes and the classifications, which is very suitable for hybridization of neural networks and expert systems. Furthermore, it takes don´t care attributes, which are an essential part of rule-based systems, into consideration during training
Keywords :
expert systems; learning (artificial intelligence); neural nets; pattern classification; attributes; automatic topology determination; classification systems; don´t-care attributes; fast guaranteed learning; local minima trapping; neural network training; neural-expert system hybrids; ternary synaptic weights algorithm; Backpropagation algorithms; Bayesian methods; Classification tree analysis; Decision trees; Error analysis; Expert systems; Fuzzy reasoning; Knowledge based systems; Network topology; Neural networks;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Speech, Image Processing and Neural Networks, 1994. Proceedings, ISSIPNN '94., 1994 International Symposium on
Print_ISBN :
0-7803-1865-X
Type :
conf
DOI :
10.1109/SIPNN.1994.344783
Filename :
344783
Link To Document :
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