Large Scale Kernel Regression via Linear Programming

dc.contributor.authorMusicant, David
dc.contributor.authorMangasarian, Olvi
dc.date.accessioned2013-01-16T19:05:36Z
dc.date.available2013-01-16T19:05:36Z
dc.date.issued1999
dc.description.abstractThe problem of tolerant data tting by a nonlinear surface, in- duced by a kernel-based support vector machine [24], is formulated as a linear program with fewer number of variables than that of other linear programming formulations [21]. A generalization of the lin- ear programming chunking algorithm [2] for arbitrary kernels [13] is implemented for solving problems with very large datasets wherein chunking is performed on both data points and problem variables. The proposed approach tolerates a small error, which is adjusted paramet- rically, while tting the given data. This leads to improved tting of noisy data (over ordinary least error solutions) as demonstrated com- putationally. Comparative numerical results indicate an average time reduction as high as 26.0% over other formulations, with a maximal time reduction of 79.7%. Additionally, linear programs with as many as 16,000 data points and more than a billion nonzero matrix elements are solved.en
dc.identifier.citation99-02
dc.identifier.urihttp://digital.library.wisc.edu/1793/64272
dc.subjectlinear programmingen
dc.subjectsupport vector machinesen
dc.subjectkernel regressionen
dc.titleLarge Scale Kernel Regression via Linear Programmingen
dc.typeTechnical Reporten

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