Approximating $(k,\ell)$-center clustering for curves
Kevin Buchin, Anne Driemel, Joachim Gudmundsson, Michael Horton, Irina, Kostitsyna, Maarten L\"offler, Martijn Struijs

TL;DR
This paper investigates the $(k, ext{ell})$-center clustering problem for polygonal curves under the Fréchet distance, providing new hardness results and approximation algorithms, especially in higher dimensions and for various distance measures.
Contribution
It extends approximation bounds for curve clustering under Fréchet distance, establishes NP-hardness for certain cases, and proposes a 3-approximation algorithm based on curve simplification.
Findings
No polynomial-time approximation scheme exists if $ ext{ell}$ is part of the input.
Hardness of approximation within a factor close to 2.598 for 2D discrete Fréchet distance.
A 3-approximation algorithm using curve simplification and Gonzalez's method.
Abstract
The Euclidean -center problem is a classical problem that has been extensively studied in computer science. Given a set of points in Euclidean space, the problem is to determine a set of centers (not necessarily part of ) such that the maximum distance between a point in and its nearest neighbor in is minimized. In this paper we study the corresponding -center problem for polygonal curves under the Fr\'echet distance, that is, given a set of polygonal curves in , each of complexity , determine a set of polygonal curves in , each of complexity , such that the maximum Fr\'echet distance of a curve in to its closest curve in is minimized. In this paper, we substantially extend and improve the known…
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