Scalable Uncertainty Quantification for Black-Box Density-Based Clustering

Bariletto, Nicola, Walker, Stephen G.

arXiv.org Machine Learning 

We introduce a novel framework for uncertainty quantification in clustering. By combining the martingale posterior paradigm with density-based clustering, uncertainty in the estimated density is naturally propagated to the clustering structure. The approach scales effectively to high-dimensional and irregularly shaped data by leveraging modern neural density estimators and GPU-friendly parallel computation. We establish frequen-tist consistency guarantees and validate the methodology on synthetic and real data.

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