Title : ( Universal Approximation by Using the Correntropy Objective Function )
Authors: Mojtaba Nayyeri , Hadi Sadoghi Yazdi , Alaleh Maskooki , Modjtaba Rouhani ,Access to full-text not allowed by authors
Abstract
Several objective functions have been proposed in the literature to adjust the input parameters of a node in constructive networks. Furthermore, many researchers have focused on the universal approximation capability of the network based on the existing objective functions. In this brief, we use a correntropy measure based on the sigmoid kernel in the objective function to adjust the input parameters of a newly added node in a cascade network. The proposed network is shown to be capable of approximating any continuous nonlinear mapping with probability one in a compact input sample space. Thus, the convergence is guaranteed. The performance of our method was compared with that of eight different objective functions, as well as with an existing one hidden layer feedforward network on several real regression data sets with and without impulsive noise. The experimental results indicate the benefits of using a correntropy measure in reducing the root mean square error and increasing the robustness to noise.
Keywords
, Cascade-correlation network (CNN), correntropy, incremental constructive network, universal approximation.@article{paperid:1065662,
author = {Nayyeri, Mojtaba and Sadoghi Yazdi, Hadi and Maskooki, Alaleh and Rouhani, Modjtaba},
title = {Universal Approximation by Using the Correntropy Objective Function},
journal = {IEEE Transactions on Neural Networks and Learning Systems},
year = {2018},
volume = {29},
number = {9},
month = {September},
issn = {2162-237X},
pages = {4515--4521},
numpages = {6},
keywords = {Cascade-correlation network (CNN);
correntropy; incremental constructive network; universal
approximation.},
}
%0 Journal Article
%T Universal Approximation by Using the Correntropy Objective Function
%A Nayyeri, Mojtaba
%A Sadoghi Yazdi, Hadi
%A Maskooki, Alaleh
%A Rouhani, Modjtaba
%J IEEE Transactions on Neural Networks and Learning Systems
%@ 2162-237X
%D 2018