Near-Linear Time Approximations Schemes for Clustering in Doubling Metrics

Journal of the ACM(2019)

引用 11|浏览43
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摘要
We consider the classic Facility Location, k-Median, and k-Means problems in metric spaces of constant doubling dimension. We give the first nearly linear-time approximation schemes for each problem, making a significant improvement over the state-of-the-art algorithms. Moreover, we show how to extend the techniques used to get the first efficient approximation schemes for the problems of prize-collecting k-Medians and k-Means, and efficient bicriteria approximation schemes for k-Medians with outliers, k-Means with outliers and k-Center.
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关键词
clustering,k median,k means,approximation algorithms,PTAS
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