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arxiv: 1602.00522 · v3 · pith:KESV52LEnew · submitted 2016-02-01 · 📊 stat.ML · math.ST· stat.TH

A Quasi-Bayesian Perspective to Online Clustering

classification 📊 stat.ML math.STstat.TH
keywords clusteringapproachonlinepacboquasi-bayesianadaptivealgorithmalgorithmic
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When faced with high frequency streams of data, clustering raises theoretical and algorithmic pitfalls. We introduce a new and adaptive online clustering algorithm relying on a quasi-Bayesian approach, with a dynamic (i.e., time-dependent) estimation of the (unknown and changing) number of clusters. We prove that our approach is supported by minimax regret bounds. We also provide an RJMCMC-flavored implementation (called PACBO, see https://cran.r-project.org/web/packages/PACBO/index.html) for which we give a convergence guarantee. Finally, numerical experiments illustrate the potential of our procedure.

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