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