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http://dx.doi.org/10.5391/JKIIS.2003.13.3.316

Nu-SVR Learning with Predetermined Basis Functions Included  

Kim, Young-Il (고려대학교 제어계측공학과)
Cho, Won-Hee (고려대학교 제어계측공학과)
Park, Joo-Young (고려대학교 제어계측공학과)
Publication Information
Journal of the Korean Institute of Intelligent Systems / v.13, no.3, 2003 , pp. 316-321 More about this Journal
Abstract
Recently, support vector learning attracts great interests in the areas of pattern classification, function approximation, and abnormality detection. It is well-known that among the various support vector learning methods, the so-called no-versions are particularly useful in cases that we need to control the total number of support vectors. In this paper, we consider the problem of function approximation utilizing both predetermined basis functions and a no-version support vector learning called $\nu-SVR$. After reviewing $\varepsilon-SVR$, $\nu-SVR$, and a semi-parametric approach, this paper presents an extension of the conventional $\nu-SVR$ method toward the direction that can utilize Predetermined basis functions. Moreover, the applicability of the presented method is illustrated via an example.
Keywords
서포트 벡터 학습;함수 근사;기저 함수;
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