STAILGMLFeb 12, 2018

Identifiability of Nonparametric Mixture Models and Bayes Optimal Clustering

arXiv:1802.04397v436 citations
Originality Highly original
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This provides a foundational framework for nonparametric clustering with consistency guarantees, addressing a core problem in machine learning for data analysis applications.

The paper tackles the problem of identifiability in nonparametric mixture models for data clustering, establishing general conditions that generalize existing results and apply to mixtures like Gaussian mixtures, with a practical algorithm demonstrated on real data.

Motivated by problems in data clustering, we establish general conditions under which families of nonparametric mixture models are identifiable, by introducing a novel framework involving clustering overfitted \emph{parametric} (i.e. misspecified) mixture models. These identifiability conditions generalize existing conditions in the literature, and are flexible enough to include for example mixtures of Gaussian mixtures. In contrast to the recent literature on estimating nonparametric mixtures, we allow for general nonparametric mixture components, and instead impose regularity assumptions on the underlying mixing measure. As our primary application, we apply these results to partition-based clustering, generalizing the notion of a Bayes optimal partition from classical parametric model-based clustering to nonparametric settings. Furthermore, this framework is constructive so that it yields a practical algorithm for learning identified mixtures, which is illustrated through several examples on real data. The key conceptual device in the analysis is the convex, metric geometry of probability measures on metric spaces and its connection to the Wasserstein convergence of mixing measures. The result is a flexible framework for nonparametric clustering with formal consistency guarantees.

Foundations

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