On multiscale quasi-interpolation of scattered scalar- and manifold-valued functions
Nir Sharon, Rafael Sherbu Cohen, Holger Wendland

TL;DR
This paper develops a multiscale quasi-interpolation method combining kernel-based techniques for approximating both scalar and manifold-valued functions from scattered data, with proven convergence and practical advantages in data analysis.
Contribution
It introduces and analyzes a multiscale quasi-interpolation approach for scattered data, extending it to manifold-valued functions using moving least-squares operators, with theoretical and numerical validation.
Findings
Multiscale quasi-interpolation converges for scattered data.
The method outperforms standard quasi-interpolation in convergence.
Effective for high-dimensional and large data sets.
Abstract
We address the problem of approximating an unknown function from its discrete samples given at arbitrarily scattered sites. This problem is essential in numerical sciences, where modern applications also highlight the need for a solution to the case of functions with manifold values. In this paper, we introduce and analyze a combination of kernel-based quasi-interpolation and multiscale approximations for both scalar- and manifold-valued functions. While quasi-interpolation provides a powerful tool for approximation problems if the data is defined on infinite grids, the situation is more complicated when it comes to scattered data. Here, higher-order quasi-interpolation schemes either require derivative information or become numerically unstable. Hence, this paper principally studies the improvement achieved by combining quasi-interpolation with a multiscale technique. The main…
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Taxonomy
TopicsAdvanced Mathematical Modeling in Engineering · Composite Material Mechanics · Numerical methods in inverse problems
