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Robustified least squares support vector classification
Authors:Michiel Debruyne  Sven Serneels  Tim Verdonck
Abstract:Support vector machine (SVM) algorithms are a popular class of techniques to perform classification. However, outliers in the data can result in bad global misclassification percentages. In this paper, we propose a method to identify such outliers in the SVM framework. A specific robust classification algorithm is proposed adjusting the least squares SVM (LS‐SVM). This yields better classification performance for heavily tailed data and data containing outliers. Copyright © 2009 John Wiley & Sons, Ltd.
Keywords:classification  outliers  robustness  least squares support vector machines  reweighting
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