An Iterative Method for Deciding SVM and Single Layer Neural Network Structures

作者:Tarek M. Hamdani, Adel M. Alimi, Mohamed A. Khabou

摘要

We present two new classifiers for two-class classification problems using a new Beta-SVM kernel transformation and an iterative algorithm to concurrently select the support vectors for a support vector machine (SVM) and the hidden units for a single hidden layer neural network to achieve a better generalization performance. To construct the classifiers, the contributing data points are chosen on the basis of a thresholding scheme of the outputs of a single perceptron trained using all training data samples. The chosen support vectors are used to construct a new SVM classifier that we call Beta-SVN. The number of chosen support vectors is used to determine the structure of the hidden layer in a single hidden layer neural network that we call Beta-NN. The Beta-SVN and Beta-NN structures produced by our method outperformed other commonly used classifiers when tested on a 2-dimensional non-linearly separable data set.

论文关键词:Neural and statistical pattern recognition, Support vector machines, Single layer neural network, Kernel function, Beta function

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论文官网地址:https://doi.org/10.1007/s11063-011-9171-3