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arxiv: 1902.07137 · v1 · pith:GJHK6NVEnew · submitted 2019-02-19 · 💻 cs.LG · stat.ML

Recovery of a mixture of Gaussians by sum-of-norms clustering

classification 💻 cs.LG stat.ML
keywords clusteringsum-of-normsgaussiansmixturechiquetclustersnumberproof
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Sum-of-norms clustering is a method for assigning $n$ points in $\mathbb{R}^d$ to $K$ clusters, $1\le K\le n$, using convex optimization. Recently, Panahi et al.\ proved that sum-of-norms clustering is guaranteed to recover a mixture of Gaussians under the restriction that the number of samples is not too large. The purpose of this note is to lift this restriction, i.e., show that sum-of-norms clustering with equal weights can recover a mixture of Gaussians even as the number of samples tends to infinity. Our proof relies on an interesting characterization of clusters computed by sum-of-norms clustering that was developed inside a proof of the agglomeration conjecture by Chiquet et al. Because we believe this theorem has independent interest, we restate and reprove the Chiquet et al.\ result herein.

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