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Approximation of Set-Valued Functions with images sets in $\mathbb{R}^d$ (2501.14591v1)

Published 24 Jan 2025 in math.NA and cs.NA

Abstract: Given a finite number of samples of a continuous set-valued function F, mapping an interval to non-empty compact subsets of $\mathbb{R}d$, $F: [a,b] \to K(\mathbb{R}d)$, we discuss the problem of computing good approximations of F. We also discuss algorithms for a direct high-order evaluation of the graph of $F$, namely, the set $Graph(F)={(t,y)\ | \ y\in F(t),\ t\in [a,b]}\in K(\mathbb{R}{d+1})$. A set-valued function can be continuous and yet have points where the topology of the image sets changes. The main challenge in set-valued function approximation is to derive high-order approximations near these points. In a previous paper, we presented with Q. Muzaffar, an algorithm for approximating set-valued functions with 1D sets ($d=1$) as images, achieving high approximation order near points of topology change. Here we build upon the results and algorithms in the $d=1$ case, first in more detail for the important case $d=2$, and later for approximating set-valued functions and their graphs in higher dimensions.

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