DocumentCode
752017
Title
Interval regression analysis using quadratic loss support vector machine
Author
Hong, Dug Hun ; Hwang, Changha
Author_Institution
Dept. of Math., Myongji Univ., Kyunggido, South Korea
Volume
13
Issue
2
fYear
2005
fDate
4/1/2005 12:00:00 AM
Firstpage
229
Lastpage
237
Abstract
Support vector machines (SVMs) have been very successful in pattern recognition and function estimation problems for crisp data. This paper proposes a new method to evaluate interval linear and nonlinear regression models combining the possibility and necessity estimation formulation with the principle of quadratic loss SVM. This version of SVM utilizes quadratic loss function, unlike the traditional SVM. For data sets with crisp inputs and interval outputs, the possibility and necessity models have been recently utilized, which are based on quadratic programming approach giving more diverse spread coefficients than a linear programming one. The quadratic loss SVM also uses quadratic programming approach whose another advantage in interval regression analysis is to be able to integrate both the property of central tendency in least squares and the possibilistic property in fuzzy regression. However, this is not a computationally expensive way. The quadratic loss SVM allows us to perform interval nonlinear regression analysis by constructing an interval linear regression function in a high dimensional feature space. The proposed algorithm is a very attractive approach to modeling nonlinear interval data, and is model-free method in the sense that we do not have to assume the underlying model function for interval nonlinear regression model with crisp inputs and interval output. Experimental results are then presented which indicate the performance of this algorithm.
Keywords
fuzzy systems; quadratic programming; regression analysis; support vector machines; fuzzy regression analysis; high dimensional feature space; interval regression analysis; quadratic loss function; quadratic programming; support vector machine; Fuzzy systems; Least squares methods; Linear programming; Linear regression; Linear systems; Mathematics; Pattern recognition; Quadratic programming; Regression analysis; Support vector machines; Interval regression analysis; possibility and necessity models; quadratic loss; quadratic programming; support vector machine (SVM);
fLanguage
English
Journal_Title
Fuzzy Systems, IEEE Transactions on
Publisher
ieee
ISSN
1063-6706
Type
jour
DOI
10.1109/TFUZZ.2004.840133
Filename
1411825
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