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http://dx.doi.org/10.5391/JKIIS.2004.14.2.216

NETLA Based Optimal Synthesis Method of Binary Neural Network for Pattern Recognition  

Lee, Joon-Tark (School of Electrical, Electronic & Computer Engineering, Dong-A University)
Publication Information
Journal of the Korean Institute of Intelligent Systems / v.14, no.2, 2004 , pp. 216-221 More about this Journal
Abstract
This paper describes an optimal synthesis method of binary neural network for pattern recognition. Our objective is to minimize the number of connections and the number of neurons in hidden layer by using a Newly Expanded and Truncated Learning Algorithm (NETLA) for the multilayered neural networks. The synthesis method in NETLA uses the Expanded Sum of Product (ESP) of the boolean expressions and is based on the multilayer perceptron. It has an ability to optimize a given binary neural network in the binary space without any iterative learning as the conventional Error Back Propagation (EBP) algorithm. Furthermore, NETLA can reduce the number of the required neurons in hidden layer and the number of connections. Therefore, this learning algorithm can speed up training for the pattern recognition problems. The superiority of NETLA to other learning algorithms is demonstrated by an practical application to the approximation problem of a circular region.
Keywords
optimal synthesis; binary neural network; pattern recognition; Newly Expanded and Truncated Learning Algorithm (NETLA); perceptron;
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