An alternative to EM for Gaussian mixture models: batch and stochastic Riemannian optimization

Reshad Hosseini, Suvrit Sra

Publikation: Beitrag in FachzeitschriftArtikelBegutachtung

25 Zitate (Scopus)

Abstract

We consider maximum likelihood estimation for Gaussian Mixture Models (Gmm s). This task is almost invariably solved (in theory and practice) via the Expectation Maximization (EM) algorithm. EM owes its success to various factors, of which is its ability to fulfill positive definiteness constraints in closed form is of key importance. We propose an alternative to EM grounded in the Riemannian geometry of positive definite matrices, using which we cast Gmm parameter estimation as a Riemannian optimization problem. Surprisingly, such an out-of-the-box Riemannian formulation completely fails and proves much inferior to EM. This motivates us to take a closer look at the problem geometry, and derive a better formulation that is much more amenable to Riemannian optimization. We then develop Riemannian batch and stochastic gradient algorithms that outperform EM, often substantially. We provide a non-asymptotic convergence analysis for our stochastic method, which is also the first (to our knowledge) such global analysis for Riemannian stochastic gradient. Numerous empirical results are included to demonstrate the effectiveness of our methods.

OriginalspracheEnglisch
Seiten (von - bis)187-223
Seitenumfang37
FachzeitschriftMathematical Programming
Jahrgang181
Ausgabenummer1
DOIs
PublikationsstatusVeröffentlicht - 1 Mai 2020
Extern publiziertJa

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