DocumentCode
739394
Title
An Improved TA-SVM Method Without Matrix Inversion and Its Fast Implementation for Nonstationary Datasets
Author
Yingzhong Shi ; Fu-Lai Chung ; Shitong Wang
Author_Institution
Sch. of Digital Media, Jiangnan Univ., Wuxi, China
Volume
26
Issue
9
fYear
2015
Firstpage
2005
Lastpage
2018
Abstract
Recently, a time-adaptive support vector machine (TA-SVM) is proposed for handling nonstationary datasets. While attractive performance has been reported and the new classifier is distinctive in simultaneously solving several SVM subclassifiers locally and globally by using an elegant SVM formulation in an alternative kernel space, the coupling of subclassifiers brings in the computation of matrix inversion, thus resulting to suffer from high computational burden in large nonstationary dataset applications. To overcome this shortcoming, an improved TA-SVM (ITA-SVM) is proposed using a common vector shared by all the SVM subclassifiers involved. ITA-SVM not only keeps an SVM formulation, but also avoids the computation of matrix inversion. Thus, we can realize its fast version, that is, improved time-adaptive core vector machine (ITA-CVM) for large nonstationary datasets by using the CVM technique. ITA-CVM has the merit of asymptotic linear time complexity for large nonstationary datasets as well as inherits the advantage of TA-SVM. The effectiveness of the proposed classifiers ITA-SVM and ITA-CVM is also experimentally confirmed.
Keywords
computational complexity; pattern classification; support vector machines; ITA-CVM; ITA-SVM; SVM subclassifiers; asymptotic linear time complexity; improved TA-SVM method; improved time-adaptive core vector machine; nonstationary dataset; time-adaptive support vector machine; Educational institutions; Kernel; Learning systems; Linear programming; Support vector machines; Time complexity; Vectors; Convex quadratic programming; core vector machine (CVM); drift concepts; large nonstationary datasets; time complexity; time complexity.;
fLanguage
English
Journal_Title
Neural Networks and Learning Systems, IEEE Transactions on
Publisher
ieee
ISSN
2162-237X
Type
jour
DOI
10.1109/TNNLS.2014.2359954
Filename
6948375
Link To Document