Kernel-based Approximation Methods for Generalized Interpolations: A Deterministic or Stochastic Problem?
Numerical Analysis
2017-10-17 v1
Abstract
In this article, we solve a deterministically generalized interpolation problem by a stochastic approach. We introduce a kernel-based probability measure on a Banach space by a covariance kernel which is defined on the dual space of the Banach space. The kernel-based probability measure provides a numerical tool to construct and analyze the kernel-based estimators conditioned on non-noise data or noisy data including algorithms and error analysis. Same as meshfree methods, we can also obtain the kernel-based approximate solutions of elliptic partial differential equations by the kernel-based probability measure.
Cite
@article{arxiv.1710.05192,
title = {Kernel-based Approximation Methods for Generalized Interpolations: A Deterministic or Stochastic Problem?},
author = {Qi Ye},
journal= {arXiv preprint arXiv:1710.05192},
year = {2017}
}
Comments
31 pages