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Theory and Use of the EM Algorithm
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Source: Journal:Foundations and Trends® in Signal Processing ISSN Print:1932-8346, ISSN Online:1932-8354 Publisher:Now Publishers Volume 4 Number 3, Pages: 74 (223-296) DOI: 10.1561/2000000034
Abstract: This introduction to the expectation–maximization (EM) algorithm provides an intuitive and mathematically rigorous understanding of EM. Two of the most popular applications of EM are described in detail: estimating Gaussian mixture models (GMMs), and estimating hidden Markov models (HMMs). EM solutions are also derived for learning an optimal mixture of fixed models, for estimating the parameters of a compound Dirichlet distribution, and for dis-entangling superimposed signals. Practical issues that arise in the use of EM are discussed, as well as variants of the algorithm that help deal with these challenges.
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