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

Sara Ahmadian, A. Norouzi-Fard, O. Svensson, Justin Ward
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引用次数: 218

Abstract

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 with a provable guarantee is a simple local search heuristic yielding an approximation guarantee of 9+≥ilon, 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) to 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 LP relaxation. Our techniques are quite general and we also show improved guarantees for the general version of k-means where the underlying metric is not required to be Euclidean and for k-median in Euclidean metrics.
原始对偶算法对k-均值和欧几里德k-中值的更好保证
聚类是优化中的一个经典话题,k-means是最基本的问题之一。在对输入没有任何限制的情况下,对于具有可证明保证的k-means,最著名的算法是一个简单的局部搜索启发式算法,它产生近似保证为9+≥ilon,这个比率已知相对于此类方法是紧的。我们通过提出一种新的原始对偶方法克服了这一障碍,该方法允许我们(1)利用k-means的几何结构和(2)满足硬约束,即在不恶化近似保证的情况下最多选择k个簇。我们的主要结果是关于标准LP松弛的6.357近似算法。我们的技术非常通用,我们也展示了k-means的通用版本的改进保证,其中底层度量不需要是欧几里得的,对于欧几里得度量中的k-中位数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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