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Almost-linear Time Approximation Algorithm to Euclidean kk-median and kk-means

Main:14 Pages
Bibliography:5 Pages
Appendix:12 Pages
Abstract

Clustering is one of the staples of data analysis and unsupervised learning. As such, clustering algorithms are often used on massive data sets, and they need to be extremely fast. We focus on the Euclidean kk-median and kk-means problems, two of the standard ways to model the task of clustering.

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