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Evaluation of a set of new ORF kernel functions of SVM for speech recognition
Authors:Xueying Zhang  Xiaofeng Liu  Zizhong John Wang
Affiliation:1. College of Information Engineering, Taiyuan University of Technology, Taiyuan, Shanxi, China;2. College of Mathematics, Taiyuan University of Technology, Taiyuan, Shanxi, China;3. Department of Mathematics and Computer Science, Virginia Wesleyan College, Norfolk, VA, USA
Abstract:The kernel function is the core of the Support Vector Machine (SVM), and its selection directly affects the performance of SVM. There has been no theoretical basis on choosing a kernel function for speech recognition. In order to improve the learning ability and generalization ability of SVM for speech recognition, this paper presents the Optimal Relaxation Factor (ORF) kernel function, which is a set of new SVM kernel functions for speech recognition, and proves that the ORF function is a Mercer kernel function. The experiments show the ORF kernel function's effectiveness on mapping trend, bi-spiral, and speech recognition problems. The paper draws the conclusion that the ORF kernel function performs better than the Radial Basis Function (RBF), the Exponential Radial Basis Function (ERBF) and the Kernel with Moderate Decreasing (KMOD). Furthermore, the results of speech recognition with the ORF kernel function illustrate higher recognition accuracy.
Keywords:Speech recognition  Support Vector Machine  Kernel function  Mercer kernel
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