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http://dx.doi.org/10.5391/IJFIS.2003.3.2.227

Semiparametric Kernel Fisher Discriminant Approach for Regression Problems  

Park, Joo-Young (Department of Control and Instrumentation Engineering, Korea University)
Cho, Won-Hee (Department of Control and Instrumentation Engineering, Korea University)
Kim, Young-Il (Department of Control and Instrumentation Engineering, Korea University)
Publication Information
International Journal of Fuzzy Logic and Intelligent Systems / v.3, no.2, 2003 , pp. 227-232 More about this Journal
Abstract
Recently, support vector learning attracts an enormous amount of interest in the areas of function approximation, pattern classification, and novelty detection. One of the main reasons for the success of the support vector machines(SVMs) seems to be the availability of global and sparse solutions. Among the approaches sharing the same reasons for success and exhibiting a similarly good performance, we have KFD(kernel Fisher discriminant) approach. In this paper, we consider the problem of function approximation utilizing both predetermined basis functions and the KFD approach for regression. After reviewing support vector regression, semi-parametric approach for including predetermined basis functions, and the KFD regression, this paper presents an extension of the conventional KFD approach for regression toward the direction that can utilize predetermined basis functions. The applicability of the presented method is illustrated via a regression example.
Keywords
Function approximation; KFD regression; basis functions;
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