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Examining the effect of initialization strategies on the performance of Gaussian mixture modeling. | LitMetric

AI Article Synopsis

  • Mixture modeling is used to identify unobserved subpopulations in data sets, often utilizing Gaussian mixtures, but estimating parameters typically requires iterative processes like the expectation-maximization (EM) algorithm.
  • The quality of the final estimates is influenced by the initial starting values used in the EM algorithm, and various methods for selecting these starting values have been proposed.
  • A comparison of five techniques for obtaining starting values is conducted, assessing them based on their effectiveness in finding optimal solutions, accurate classifications, minimizing local solutions, and quick generation of start values, leading to user recommendations.

Article Abstract

Mixture modeling is a popular technique for identifying unobserved subpopulations (e.g., components) within a data set, with Gaussian (normal) mixture modeling being the form most widely used. Generally, the parameters of these Gaussian mixtures cannot be estimated in closed form, so estimates are typically obtained via an iterative process. The most common estimation procedure is maximum likelihood via the expectation-maximization (EM) algorithm. Like many approaches for identifying subpopulations, finite mixture modeling can suffer from locally optimal solutions, and the final parameter estimates are dependent on the initial starting values of the EM algorithm. Initial values have been shown to significantly impact the quality of the solution, and researchers have proposed several approaches for selecting the set of starting values. Five techniques for obtaining starting values that are implemented in popular software packages are compared. Their performances are assessed in terms of the following four measures: (1) the ability to find the best observed solution, (2) settling on a solution that classifies observations correctly, (3) the number of local solutions found by each technique, and (4) the speed at which the start values are obtained. On the basis of these results, a set of recommendations is provided to the user.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC4930421PMC
http://dx.doi.org/10.3758/s13428-015-0697-6DOI Listing

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