Title of article :
IMPROVING THE GENERALIZATION OF NEURAL NETWORKS BY CHANGING THE STRUCTURE OF ARTIFICIAL NEURON
Author/Authors :
Daliri, Mohammad Reza iran university of science and technology - Faculty of Electrical Engineering, Iran Neural Technology Center - Biomedical Engineering Department, تهران, ايران , Fatan, Mehdi islamic azad university - Faculty of Electrical Engineering - Mechatronics Group, ايران
From page :
195
To page :
204
Abstract :
This paper introduces a change in the structure of an artificial neuron (McCulloch and Pitts), to improve the performance of the feed forward artificial neural networks like the multi-layer perceptron networks. Results on function approximation task and three pattern recognition problems show that the performance of a neural network can be improved by a simple change in its traditional structure. The first problem is about approximation of a complicated function and the other tasks are three pattern classification problems which we have considered the digit, face and 3D object recognition experiments for evaluation. The results of the experiments confirm the improvement of the generalization of the proposed method in compared to the traditional neural network structure.
Keywords :
Improve Generalization of MLP , Artificial Neuron , Function Approximation , Digit Recognition , Face Recognition , 3D Object Recognition.
Journal title :
Malaysian Journal of Computer Science
Journal title :
Malaysian Journal of Computer Science
Record number :
2571920
Link To Document :
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