STOCPRMLOct 16, 2020

Consistency of archetypal analysis

arXiv:2010.08148v25 citations
AI Analysis

This provides theoretical guarantees for an unsupervised learning method, addressing a foundational issue in machine learning for data summarization.

The paper proves consistency results for archetypal analysis, showing that archetype points converge to a continuum solution for data sampled from bounded support distributions, with convergence rates for optimal objective values, and extends this to unbounded support with a modified penalized method.

Archetypal analysis is an unsupervised learning method that uses a convex polytope to summarize multivariate data. For fixed $k$, the method finds a convex polytope with $k$ vertices, called archetype points, such that the polytope is contained in the convex hull of the data and the mean squared distance between the data and the polytope is minimal. In this paper, we prove a consistency result that shows if the data is independently sampled from a probability measure with bounded support, then the archetype points converge to a solution of the continuum version of the problem, of which we identify and establish several properties. We also obtain the convergence rate of the optimal objective values under appropriate assumptions on the distribution. If the data is independently sampled from a distribution with unbounded support, we also prove a consistency result for a modified method that penalizes the dispersion of the archetype points. Our analysis is supported by detailed computational experiments of the archetype points for data sampled from the uniform distribution in a disk, the normal distribution, an annular distribution, and a Gaussian mixture model.

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