DocumentCode
33675
Title
Multi-Class Supervised Novelty Detection
Author
Jumutc, Vilen ; Suykens, Johan A. K.
Author_Institution
Dept. of Electr. Eng., Katholieke Univ. Leuven, Leuven, Belgium
Volume
36
Issue
12
fYear
2014
fDate
Dec. 1 2014
Firstpage
2510
Lastpage
2523
Abstract
In this paper we study the problem of finding a support of unknown high-dimensional distributions in the presence of labeling information, called Supervised Novelty Detection (SND). The One-Class Support Vector Machine (SVM) is a widely used kernel-based technique to address this problem. However with the latter approach it is difficult to model a mixture of distributions from which the support might be constituted. We address this issue by presenting a new class of SVM-like algorithms which help to approach multi-class classification and novelty detection from a new perspective. We introduce a new coupling term between classes which leverages the problem of finding a good decision boundary while preserving the compactness of a support with the l2-norm penalty. First we present our optimization objective in the primal and then derive a dual QP formulation of the problem. Next we propose a Least-Squares formulation which results in a linear system which drastically reduces computational costs. Finally we derive a Pegasos-based formulation which can effectively cope with large data sets that cannot be handled by many existing QP solvers. We complete our paper with experiments that validate the usefulness and practical importance of the proposed methods both in classification and novelty detection settings.
Keywords
pattern classification; statistical distributions; support vector machines; Pegasos-based formulation; SVM; decision boundary; dual QP formulation; high-dimensional distributions; kernel-based technique; labeling information; least-squares formulation; linear system; multiclass classification; multiclass supervised novelty detection; one-class support vector machine; optimization objective; Algorithm design and analysis; Classification algorithms; Computational efficiency; Labeling; Linear systems; Optimization; Supervisory control; Support vector machines; Novelty detection; classification; labeling information; one-class SVM; pattern recognition;
fLanguage
English
Journal_Title
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher
ieee
ISSN
0162-8828
Type
jour
DOI
10.1109/TPAMI.2014.2327984
Filename
6824758
Link To Document