Toward Global Convergence of Gradient EM for Over-Paramterized Gaussian Mixture Models
Abstract
We study the gradient Expectation-Maximization (EM) algorithm for Gaussian Mixture Models (GMM) in the over-parameterized setting, where a general GMM with $n>1$ components learns from data that are generated by a single ground truth Gaussian distribution. While results for the special case of 2-Gaussian mixtures are well-known, a general global convergence analysis for arbitrary $n$ remains unresolved and faces several new technical barriers since the convergence becomes sub-linear and non-monotonic. To address these challenges, we construct a novel likelihood-based convergence analysis framework and rigorously prove that gradient EM converges globally with a sublinear rate $O(1/\sqrt{t})$. This is the first global convergence result for Gaussian mixtures with more than $2$ components. The sublinear convergence rate is due to the algorithmic nature of learning over-parameterized GMM with gradient EM. We also identify a new emerging technical challenge for learning general over-parameterized GMM: the existence of bad local regions that can trap gradient EM for an exponential number of steps.
Cite
Text
Xu et al. "Toward Global Convergence of Gradient EM for Over-Paramterized Gaussian Mixture Models." Neural Information Processing Systems, 2024. doi:10.52202/079017-0344Markdown
[Xu et al. "Toward Global Convergence of Gradient EM for Over-Paramterized Gaussian Mixture Models." Neural Information Processing Systems, 2024.](https://mlanthology.org/neurips/2024/xu2024neurips-global/) doi:10.52202/079017-0344BibTeX
@inproceedings{xu2024neurips-global,
title = {{Toward Global Convergence of Gradient EM for Over-Paramterized Gaussian Mixture Models}},
author = {Xu, Weihang and Fazel, Maryam and Du, Simon S.},
booktitle = {Neural Information Processing Systems},
year = {2024},
doi = {10.52202/079017-0344},
url = {https://mlanthology.org/neurips/2024/xu2024neurips-global/}
}