Passive sampling in reproducing kernel Hilbert spaces using leverage scores
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2022-10Derechos
© 2022. This manuscript version is made available under the CC-BY-NC-ND 4.0 license
Publicado en
Signal Processing, 2022, 199, 108603
Editorial
Elsevier
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Palabras clave
Kernel ridge regression
Leverage score
Nyström approximation
Passive sampling
Reproducing kernel Hilbert space
Resumen/Abstract
This paper deals with the selection of the training dataset in kernel-based methods for function reconstruction, with a focus on kernel ridge regression. A functional analysis is performed which, in the absence of noise, links the optimal sampling distribution to the one minimizing the difference between the kernel matrix and its low-rank Nyström approximation. From this standpoint, a statistical passive sampling approach is derived which uses the leverage scores of the columns of the kernel matrix to design a sampling distribution that minimizes an upper bound of the risk function. The proposed approach constitutes a passive method, able to select the optimal subset of training samples using only information provided by the input set and the kernel, but without needing to know the values of the function to be approximated. Furthermore, the proposed approach is backed up by numerical tests on real datasets.
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