A Novel Adaptive Kernel for the RBF Neural Networks

被引:0
|
作者
Shujaat Khan
Imran Naseem
Roberto Togneri
Mohammed Bennamoun
机构
[1] Iqra University,Faculty of Engineering Science and Technology
[2] Defence View,College of Engineering
[3] Karachi Institute of Economics and Technology,School of Electrical, Electronic and Computer Engineering
[4] The University of Western Australia,School of Computer Science and Software Engineering
[5] The University of Western Australia,undefined
关键词
Artificial neural networks; Radial basis function; Gaussian kernel; Support vector machine; Euclidean distance; Cosine distance; Kernel fusion;
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学科分类号
摘要
In this paper, we propose a novel adaptive kernel for the radial basis function neural networks. The proposed kernel adaptively fuses the Euclidean and cosine distance measures to exploit the reciprocating properties of the two. The proposed framework dynamically adapts the weights of the participating kernels using the gradient descent method, thereby alleviating the need for predetermined weights. The proposed method is shown to outperform the manual fusion of the kernels on three major problems of estimation, namely nonlinear system identification, patter classification and function approximation.
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页码:1639 / 1653
页数:14
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