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arxiv: 1605.04986 · v1 · pith:7QJCI4MSnew · submitted 2016-05-16 · 💻 cs.LG · cs.CG

A Constant-Factor Bi-Criteria Approximation Guarantee for k-means++

classification 💻 cs.LG cs.CG
keywords constant-factorbetabi-criteriameansapproximationcentersclusteringconstant
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This paper studies the $k$-means++ algorithm for clustering as well as the class of $D^\ell$ sampling algorithms to which $k$-means++ belongs. It is shown that for any constant factor $\beta > 1$, selecting $\beta k$ cluster centers by $D^\ell$ sampling yields a constant-factor approximation to the optimal clustering with $k$ centers, in expectation and without conditions on the dataset. This result extends the previously known $O(\log k)$ guarantee for the case $\beta = 1$ to the constant-factor bi-criteria regime. It also improves upon an existing constant-factor bi-criteria result that holds only with constant probability.

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