具有Bregman散度的k-均值聚类的最坏情况和平滑分析

IF 0.4 Q4 MATHEMATICS
B. Manthey, Heiko Röglin
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引用次数: 28

摘要

k-means算法是大规模数据集聚类的首选方法,在实践中表现非常好。大多数的理论工作都局限于使用平方欧氏距离作为相似性度量的情况。然而,在许多应用程序中,数据是根据其他度量来聚类的,例如,相对熵,它通常用于对网页进行聚类。在本文中,我们分析了布雷格曼散度的k-means方法的运行时间,布雷格曼散度是一类非常一般的相似性度量,包括平方欧几里得距离和相对熵。我们证明了欧氏情况下已知的指数下界适用于几乎所有的布雷格曼散度。为了缩小理论与实践之间的差距,我们还研究了光滑分析的半随机输入模型中的k-means。对于有n个数据点的情况?d受到标准差为?的噪声的扰动,我们表明,对于几乎任意的Bregman散度,预期运行时间由${\rm poly}(n^{\sqrt k}, 1/\sigma)$和kkd·poly(n, 1/?)
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Worst-Case and Smoothed Analysis of k-Means Clustering with Bregman Divergences
The k-means algorithm is the method of choice for clustering large-scale data sets and it performs exceedingly well in practice. Most of the theoretical work is restricted to the case that squared Euclidean distances are used as similarity measure. In many applications, however, data is to be clustered with respect to other measures like, e.g., relative entropy, which is commonly used to cluster web pages. In this paper, we analyze the running-time of the k-means method for Bregman divergences, a very general class of similarity measures including squared Euclidean distances and relative entropy. We show that the exponential lower bound known for the Euclidean case carries over to almost every Bregman divergence. To narrow the gap between theory and practice, we also study k-means in the semi-random input model of smoothed analysis. For the case that n data points in ? d are perturbed by noise with standard deviation ?, we show that for almost arbitrary Bregman divergences the expected running-time is bounded by ${\rm poly}(n^{\sqrt k}, 1/\sigma)$ and k kd ·poly(n, 1/?).
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来源期刊
CiteScore
0.70
自引率
33.30%
发文量
0
审稿时长
52 weeks
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