Better Guarantees for k-Means and Euclidean k-Median by Primal-Dual Algorithms.

2017 IEEE 58th Annual Symposium on Foundations of Computer Science (FOCS)(2020)

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摘要
Clustering is a classic topic in optimization with k-means being one of the most fundamental such problems. In the absence of any restrictions on the input, the best-known algorithm for k-means in Euclidean space with a provable guarantee is a simple local search heuristic yielding an approximation guarantee of 9+epsilon, a ratio that is known to be tight with respect to such methods. We overcome this barrier by presenting a new primal-dual approach that allows us to (1) exploit the geometric structure of k-means and (2) satisfy the hard constraint that at most k clusters are selected without deteriorating the approximation guarantee. Our main result is a 6.357-approximation algorithm with respect to the standard linear programming (LP) relaxation. Our techniques are quite general, and we also show improved guarantees for k-median in Euclidean metrics and for a generalization of k-means in which the underlying metric is not required to be Euclidean.
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关键词
k-means, approximation algorithm, primal-dual, k-median, LP-based algorithm, clustering
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