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On Metric Clustering to Minimize the Sum of Radii

机译:关于度量聚类以最小化半径之和

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Given an n-point metric (P,d) and an integer k>0, we consider the problem of covering P by k balls so as to minimize the sum of the radii of the balls. We present a randomized algorithm that runs in n O(log n⋅log Δ) time and returns with high probability the optimal solution. Here, Δ is the ratio between the maximum and minimum interpoint distances in the metric space. We also show that the problem is NP-hard, even in metrics induced by weighted planar graphs and in metrics of constant doubling dimension.
机译:给定一个n点度量(P,d)和一个整数k> 0,我们考虑用k个滚珠覆盖P的问题,以便最小化滚珠的半径之和。我们提出了一种随机算法,该算法在n O(logn⋅logΔ)时间内运行,并以高概率返回最优解。在此,Δ是度量空间中最大和最小点间距离之间的比率。我们还表明,即使在由加权平面图引起的度量以及在恒定倍增维的度量中,该问题也难以解决。

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