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Optimization
A Journal of Mathematical Programming and Operations Research
Volume 61, 2012 - Issue 12
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Original Articles

Derivative-free optimization and neural networks for robust regression

, &
Pages 1467-1490 | Received 03 Oct 2011, Accepted 07 Mar 2012, Published online: 25 Apr 2012
 

Abstract

Large outliers break down linear and nonlinear regression models. Robust regression methods allow one to filter out the outliers when building a model. By replacing the traditional least squares criterion with the least trimmed squares (LTS) criterion, in which half of data is treated as potential outliers, one can fit accurate regression models to strongly contaminated data. High-breakdown methods have become very well established in linear regression, but have started being applied for non-linear regression only recently. In this work, we examine the problem of fitting artificial neural networks (ANNs) to contaminated data using LTS criterion. We introduce a penalized LTS criterion which prevents unnecessary removal of valid data. Training of ANNs leads to a challenging non-smooth global optimization problem. We compare the efficiency of several derivative-free optimization methods in solving it, and show that our approach identifies the outliers correctly when ANNs are used for nonlinear regression.

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