articleThe American StatisticianFeb 1, 2004Closed access

A Tutorial on MM Algorithms

University of California, Los Angeles

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Abstract

Most problems in frequentist statistics involve optimization of a function such as a likelihood or a sum of squares. EM algorithms are among the most effective algorithms for maximum likelihood estimation because they consistently drive the likelihood uphill by maximizing a simple surrogate function for the log-likelihood. Iterative optimization of a surrogate function as exemplified by an EM algorithm does not necessarily require missing data. Indeed, every EM algorithm is a special case of the more general class of MM optimization algorithms, which typically exploit convexity rather than missing data in majorizing or minorizing an objective function. In our opinion, MM algorithms deserve to be part of the…

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Authors

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Topics & keywords

Keywords
  • Algorithm
  • Frequentist inference
  • Likelihood function
  • Computer science
  • Function (biology)
  • Missing data
  • Mathematical optimization
  • Mathematics
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