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A robust support vector machine for labeling errors
Authors:Hosik Choi  Yongdai Kim  Sunghoon Kwon
Affiliation:1. Department of Applied Information Statistics, Kyonggi University, Suwon-si, Gyeonggi-do, South Korea;2. Department of Statistics, Seoul National University, Gwanak-gu, Seoul, South Korea;3. Department of Applied Statistics, Konkuk University, Gwangjin-gu, Seoul, South Korea
Abstract:Support vector machine (SVM) is sparse in that its classifier is expressed as a linear combination of only a few support vectors (SVs). Whenever an outlier is included as an SV in the classifier, the outlier may have serious impact on the estimated decision function. In this article, we propose a robust loss function that is convex. Our learning algorithm is more robust to outliers than SVM. Also the convexity of our loss function permits an efficient solution path algorithm. Through simulated and real data analysis, we illustrate that our method can be useful in the presence of labeling errors.
Keywords:Classification  Convexity  Loss function  Outlier  Solution path algorithm
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