Approximating k-Center via Farthest-First on $δ$-Covers
Abstract
The farthest-first traversal of Gonzalez is a classical $2$-approximation algorithm for solving the $k$-center problem, but its sequential nature makes it difficult to scale to very large datasets. In this work we study the effect of running farthest-first on a $δ$-cover of the dataset rather than on the full set of points. A $δ$-cover provides a compact summary of the data in which every point lies within distance $δ$ of some selected center. We prove that if farthest-first is applied to a $δ$-...
Description / Details
The farthest-first traversal of Gonzalez is a classical -approximation algorithm for solving the -center problem, but its sequential nature makes it difficult to scale to very large datasets. In this work we study the effect of running farthest-first on a -cover of the dataset rather than on the full set of points. A -cover provides a compact summary of the data in which every point lies within distance of some selected center. We prove that if farthest-first is applied to a -cover, the resulting -center radius is at most twice the optimal radius plus . In our experiments on large high-dimensional datasets, we show that restricting the input to a -cover dramatically reduces the running time of the farthest-first traversal while only modestly increasing the -center radius.
Source: arXiv:2603.13184v1 - http://arxiv.org/abs/2603.13184v1 PDF: https://arxiv.org/pdf/2603.13184v1 Original Link: http://arxiv.org/abs/2603.13184v1
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Mar 16, 2026
Mathematics
Mathematics
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