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k-Means as a Variational EM Approximation of Gaussian Mixture Models

16 April 2017
Jörg Lücke
D. Forster
    DRLVLM
ArXiv (abs)PDFHTML
Abstract

We show that kkk-means (Lloyd's algorithm) is obtained as a special case when truncated variational EM approximations are applied to Gaussian Mixture Models (GMM) with isotropic Gaussians. In contrast to the standard way to relate kkk-means and GMMs, the provided derivation shows that it is not required to consider Gaussians with small variances or the limit case of zero variances. There are a number of consequences that directly follow from our approach: (A) kkk-means can be shown to increase a free energy associated with truncated distributions and this free energy can directly be reformulated in terms of the kkk-means objective; (B) kkk-means generalizations can directly be derived by considering the 2nd closest, 3rd closest etc. cluster in addition to just the closest one; and (C) the embedding of kkk-means into a free energy framework allows for theoretical interpretations of other kkk-means generalizations in the literature. In general, truncated variational EM provides a natural and rigorous quantitative link between kkk-means-like clustering and GMM clustering algorithms which may be very relevant for future theoretical and empirical studies.

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