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Learning rates of least-square regularized regression with polynomial kernels 被引量:3
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作者 LI BingZheng WANG GuoMao 《Science China Mathematics》 SCIE 2009年第4期687-700,共14页
This paper presents learning rates for the least-square regularized regression algorithms with polynomial kernels. The target is the error analysis for the regression problem in learning theory. A regularization schem... This paper presents learning rates for the least-square regularized regression algorithms with polynomial kernels. The target is the error analysis for the regression problem in learning theory. A regularization scheme is given, which yields sharp learning rates. The rates depend on the dimension of polynomial space and polynomial reproducing kernel Hilbert space measured by covering numbers. Meanwhile, we also establish the direct approximation theorem by Bernstein-Durrmeyer operators in Lρ2X with Borel probability measure. 展开更多
关键词 learning theory reproducing KERNEL HILBERT space polynomial KERNEL REGULARIZATION error BERNSTEIN-DURRMEYER operators COVERING number REGULARIZATION scheme
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Generalization performance of graph-based semisupervised classification 被引量:1
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作者 CHEN Hong LI LuoQing 《Science China Mathematics》 SCIE 2009年第11期2506-2516,共11页
Semi-supervised learning has been of growing interest over the past few years and many methods have been proposed. Although various algorithms are provided to implement semi-supervised learning,there are still gaps in... Semi-supervised learning has been of growing interest over the past few years and many methods have been proposed. Although various algorithms are provided to implement semi-supervised learning,there are still gaps in our understanding of the dependence of generalization error on the numbers of labeled and unlabeled data. In this paper,we consider a graph-based semi-supervised classification algorithm and establish its generalization error bounds. Our results show the close relations between the generalization performance and the structural invariants of data graph. 展开更多
关键词 SEMI-SUPERVISED learning GENERALIZATION error GRAPH LAPLACIAN GRAPH CUT localized ENVELOPE
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