On the Global Convergence of (Fast) Incremental Expectation Maximization Methods

October 28, 2019 ยท Declared Dead ยท ๐Ÿ› Neural Information Processing Systems

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Authors Belhal Karimi, Hoi-To Wai, Eric Moulines, Marc Lavielle arXiv ID 1910.12521 Category stat.ML: Machine Learning (Stat) Cross-listed cs.LG, stat.ME Citations 32 Venue Neural Information Processing Systems Last Checked 3 months ago
Abstract
The EM algorithm is one of the most popular algorithm for inference in latent data models. The original formulation of the EM algorithm does not scale to large data set, because the whole data set is required at each iteration of the algorithm. To alleviate this problem, Neal and Hinton have proposed an incremental version of the EM (iEM) in which at each iteration the conditional expectation of the latent data (E-step) is updated only for a mini-batch of observations. Another approach has been proposed by Cappรฉ and Moulines in which the E-step is replaced by a stochastic approximation step, closely related to stochastic gradient. In this paper, we analyze incremental and stochastic version of the EM algorithm as well as the variance reduced-version of Chen et. al. in a common unifying framework. We also introduce a new version incremental version, inspired by the SAGA algorithm by Defazio et. al. We establish non-asymptotic convergence bounds for global convergence. Numerical applications are presented in this article to illustrate our findings.
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