Maximum Scatter TSP in Doubling Metrics
L\'aszl\'o Kozma, Tobias M\"omke

TL;DR
This paper presents a near-optimal approximation algorithm for the Maximum Scatter TSP in doubling metrics, significantly improving previous results and providing efficient schemes for various dimensions.
Contribution
It introduces a $(1- ext{epsilon})$-approximation algorithm for the problem in doubling metrics, with applications to multiple dimensions and approximation schemes.
Findings
Achieves a $(1- ext{epsilon})$-approximation in doubling metrics.
Provides an EPTAS for constant dimensions.
Establishes the optimality of the dependence on dimension $d$.
Abstract
We study the problem of finding a tour of points in which every edge is long. More precisely, we wish to find a tour that visits every point exactly once, maximizing the length of the shortest edge in the tour. The problem is known as Maximum Scatter TSP, and was introduced by Arkin et al. (SODA 1997), motivated by applications in manufacturing and medical imaging. Arkin et al. gave a -approximation for the metric version of the problem and showed that this is the best possible ratio achievable in polynomial time (assuming ). Arkin et al. raised the question of whether a better approximation ratio can be obtained in the Euclidean plane. We answer this question in the affirmative in a more general setting, by giving a -approximation algorithm for -dimensional doubling metrics, with running time , where $K…
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Taxonomy
TopicsComputational Geometry and Mesh Generation · Digital Image Processing Techniques · Sparse and Compressive Sensing Techniques
