DocumentCode
1372655
Title
Solving Nonstationary Classification Problems With Coupled Support Vector Machines
Author
Grinblat, Guillermo L. ; Uzal, Lucas C. ; Ceccatto, H. Alejandro ; Granitto, Pablo M.
Author_Institution
CIFASIS-French Argentine Int. Center for Inf. & Syst. Sci., UPCAM (France), Rosario, Argentina
Volume
22
Issue
1
fYear
2011
Firstpage
37
Lastpage
51
Abstract
Many learning problems may vary slowly over time: in particular, some critical real-world applications. When facing this problem, it is desirable that the learning method could find the correct input-output function and also detect the change in the concept and adapt to it. We introduce the time-adaptive support vector machine (TA-SVM), which is a new method for generating adaptive classifiers, capable of learning concepts that change with time. The basic idea of TA-SVM is to use a sequence of classifiers, each one appropriate for a small time window but, in contrast to other proposals, learning all the hyperplanes in a global way. We show that the addition of a new term in the cost function of the set of SVMs (that penalizes the diversity between consecutive classifiers) produces a coupling of the sequence that allows TA-SVM to learn as a single adaptive classifier. We evaluate different aspects of the method using appropriate drifting problems. In particular, we analyze the regularizing effect of changing the number of classifiers in the sequence or adapting the strength of the coupling. A comparison with other methods in several problems, including the well-known STAGGER dataset and the real-world electricity pricing domain, shows the good performance of TA-SVM in all tested situations.
Keywords
pattern classification; support vector machines; TA-SVM; adaptive classifiers; coupled support vector machines; input output function; learning problems; pricing domain; solving nonstationary classification problems; time-adaptive support vector machine; Accuracy; Couplings; Estimation; Extrapolation; Kernel; Support vector machines; Training; Adaptive methods; drifting concepts; support vector machine; Algorithms; Artificial Intelligence; Computer Simulation; Neural Networks (Computer); Pattern Recognition, Automated; Problem Solving; Software; Solutions;
fLanguage
English
Journal_Title
Neural Networks, IEEE Transactions on
Publisher
ieee
ISSN
1045-9227
Type
jour
DOI
10.1109/TNN.2010.2083684
Filename
5624639
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