DocumentCode :
1283512
Title :
A Neural Network of Smooth Hinge Functions
Author :
Wang, Shuning ; Huang, Xiaolin ; Yam, Yeung
Author_Institution :
Dept. of Autom., Tsinghua Univ., Beijing, China
Volume :
21
Issue :
9
fYear :
2010
Firstpage :
1381
Lastpage :
1395
Abstract :
Smooth hinging hyperplane (SHH) has been proposed as an improvement over the well-known hinging hyperplane (HH) by the fact that it retains the useful features of HH while overcoming HH´s drawback of nondifferentiability. This paper introduces a formal characterization of smooth hinge function (SHF), which can be used to generate SHH as a neural network. A method for the general construction of SHF is also given. Furthermore, the work proves that SHH is better than HH in functional approximation, i.e., the optimal error of SHH approximating a general function is always smaller or equal to that of HH. Particularly, in the case that the SHF is generated via the integration of a class of sigmoidal functions, it is further proven that the corresponding SHH of the 2m SHFs would outperform a neural network with m of the sigmoidal function from which the SHF is derived. Any upper bound established on the approximation error of a neural network of m sigmoidal activation functions can hence be translated to the SHH of m SHFs by replacing m with m/2. The work also includes an algorithm for the identification of SHH making use of its differentiability property. Simulation experiments are presented to validate the theoretical conclusions to possible extent.
Keywords :
geometry; neural nets; regression analysis; splines (mathematics); neural network; sigmoidal function; smooth hinge function; smooth hinging hyperplane; Approximation error; Automation; Character generation; Educational programs; Fasteners; Function approximation; Neural networks; Upper bound; Vectors; Function approximation; hinging hyperplanes (HHs); neural networks; nonlinear identification; sigmoidal functions; smooth hinging hyperplanes (SHHs); Algorithms; Models, Neurological; Neural Networks (Computer); Nonlinear Dynamics;
fLanguage :
English
Journal_Title :
Neural Networks, IEEE Transactions on
Publisher :
ieee
ISSN :
1045-9227
Type :
jour
DOI :
10.1109/TNN.2010.2053383
Filename :
5535189
Link To Document :
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