Clustering with Few Disks to Minimize the Sum of Radii

Publication date

2023-12-14

Authors

Abrahamsen, Mikkel
de Berg, SaritaISNI 0000000506358086
Meijer, Lucas
Nusser, André
Theocharous, Leonidas

Editors

Advisors

Supervisors

Document Type

/dk/atira/pure/researchoutput/researchoutputtypes/workingpaper/preprint
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License

cc_by

Abstract

Given a set of $n$ points in the Euclidean plane, the $k$-MinSumRadius problem asks to cover this point set using $k$ disks with the objective of minimizing the sum of the radii of the disks. After a long line of research on related problems, it was finally discovered that this problem admits a polynomial time algorithm [GKKPV~'12]; however, the running time of this algorithm is $O(n^{881})$, and its relevance is thereby mostly of theoretical nature. A practically and structurally interesting special case of the $k$-MinSumRadius problem is that of small $k$. For the $2$-MinSumRadius problem, a near-quadratic time algorithm with expected running time $O(n^2 \log^2 n \log^2 \log n)$ was given over 30 years ago [Eppstein~'92]. We present the first improvement of this result, namely, a near-linear time algorithm to compute the $2$-MinSumRadius that runs in expected $O(n \log^2 n \log^2 \log n)$ time. We generalize this result to any constant dimension $d$, for which we give an $O(n^{2-1/(\lceil d/2\rceil + 1) + \varepsilon})$ time algorithm. Additionally, we give a near-quadratic time algorithm for $3$-MinSumRadius in the plane that runs in expected $O(n^2 \log^2 n \log^2 \log n)$ time. All of these algorithms rely on insights that uncover a surprisingly simple structure of optimal solutions: we can specify a linear number of lines out of which one separates one of the clusters from the remaining clusters in an optimal solution.

Keywords

geometric clustering, minimize sum of radii, covering points with disks

Citation

Abrahamsen, M, Berg, S D, Meijer, L, Nusser, A & Theocharous, L 2023 'Clustering with Few Disks to Minimize the Sum of Radii' arXiv, pp. 1-15. https://doi.org/10.48550/arXiv.2312.08803