Hermite learning with gradient data
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摘要
The problem of learning from data involving function values and gradients is considered in a framework of least-square regularized regression in reproducing kernel Hilbert spaces. The algorithm is implemented by a linear system with the coefficient matrix involving both block matrices for generating Graph Laplacians and Hessians. The additional data for function gradients improve learning performance of the algorithm. Error analysis is done by means of sampling operators for sample error and integral operators in Sobolev spaces for approximation error.
论文关键词:68T05,62J02,Learning theory,Hermite learning,Reproducing kernel Hilbert spaces,Representer theorem,Sampling operator,Integral operator
论文评审过程:Received 1 June 2008, Revised 27 November 2009, Available online 5 December 2009.
论文官网地址:https://doi.org/10.1016/j.cam.2009.11.059