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A simpler approach to coefficient regularized support vector machines regression - MaRDI portal

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A simpler approach to coefficient regularized support vector machines regression (Q1722337)

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scientific article; zbMATH DE number 7021924
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English
A simpler approach to coefficient regularized support vector machines regression
scientific article; zbMATH DE number 7021924

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    A simpler approach to coefficient regularized support vector machines regression (English)
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    14 February 2019
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    Summary: We consider a kind of support vector machines regression (SVMR) algorithms associated with \(l^q\) (\(1 \leq q < \infty\)) coefficient-based regularization and data-dependent hypothesis space. Compared with former literature, we provide here a simpler convergence analysis for those algorithms. The novelty of our analysis lies in the estimation of the hypothesis error, which is implemented by setting a stepping stone between the coefficient regularized SVMR and the classical SVMR. An explicit learning rate is then derived under very mild conditions.
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