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On the tightness of an SDP relaxation of k-means

18 May 2015
Takayuki Iguchi
D. Mixon
Jesse Peterson
Soledad Villar
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Abstract

Recently, Awasthi et al. introduced an SDP relaxation of the kkk-means problem in Rm\mathbb R^mRm. In this work, we consider a random model for the data points in which kkk balls of unit radius are deterministically distributed throughout Rm\mathbb R^mRm, and then in each ball, nnn points are drawn according to a common rotationally invariant probability distribution. For any fixed ball configuration and probability distribution, we prove that the SDP relaxation of the kkk-means problem exactly recovers these planted clusters with probability 1−e−Ω(n)1-e^{-\Omega(n)}1−e−Ω(n) provided the distance between any two of the ball centers is >2+ϵ>2+\epsilon>2+ϵ, where ϵ\epsilonϵ is an explicit function of the configuration of the ball centers, and can be arbitrarily small when mmm is large.

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