DocumentCode
30095
Title
Online Support Vector Machine Based on Convex Hull Vertices Selection
Author
Di Wang ; Hong Qiao ; Bo Zhang ; Min Wang
Author_Institution
Coll. of Math. & Inf. Sci., Wenzhou Univ., Wenzhou, China
Volume
24
Issue
4
fYear
2013
fDate
Apr-13
Firstpage
593
Lastpage
609
Abstract
The support vector machine (SVM) method, as a promising classification technique, has been widely used in various fields due to its high efficiency. However, SVM cannot effectively solve online classification problems since, when a new sample is misclassified, the classifier has to be retrained with all training samples plus the new sample, which is time consuming. According to the geometric characteristics of SVM, in this paper we propose an online SVM classifier called VS-OSVM, which is based on convex hull vertices selection within each class. The VS-OSVM algorithm has two steps: 1) the samples selection process, in which a small number of skeleton samples constituting an approximate convex hull in each class of the current training samples are selected and 2) the online updating process, in which the classifier is updated with newly arriving samples and the selected skeleton samples. From the theoretical point of view, the first d+1 (d is the dimension of the input samples) selected samples are proved to be vertices of the convex hull. This guarantees that the selected samples in our approach keep the greatest amount of information of the convex hull. From the application point of view, the new algorithm can update the classifier without reducing its classification performance. Experimental results on benchmark data sets have shown the validity and effectiveness of the VS-OSVM algorithm.
Keywords
geometry; interactive programming; pattern classification; support vector machines; VS-OSVM algorithm; convex hull vertices selection; geometric characteristics; online classification; online support vector machine; Learning systems; Optimization; Partitioning algorithms; Skeleton; Support vector machines; System-on-a-chip; Training; Kernel; machine learning; online classifier; samples selection; support vector machine;
fLanguage
English
Journal_Title
Neural Networks and Learning Systems, IEEE Transactions on
Publisher
ieee
ISSN
2162-237X
Type
jour
DOI
10.1109/TNNLS.2013.2238556
Filename
6420961
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