Academic Thesis

Basic information

Name Kuroda Masahiro
Belonging department
Occupation name
researchmap researcher code 5000032373
researchmap agency Okayama University of Science

Title

Fast computation of the EM algorithm for mixture models 

Bibliography Type

Sole Author

Author

Kuroda, M.

Summary

Mixture models become increasingly popular due to their modeling flexibility and are applied to the clustering and classification of heterogeneous data. The EM algorithm is largely used for the maximum likelihood estimation of mixture models because the algorithm is stable in convergence and simple in implementation. Despite such advantages, it is pointed out that the EM algorithm is local and has slow convergence as the main drawback. To avoid the local convergence of the EM algorithm, multiple runs from several different initial values are usually used. Then the algorithm may take a large number of iterations and long computation time to find the maximum likelihood estimates. The speedup of computation of the EM algorithm is available for these problems. We give the algorithms to accelerate the convergence of the EM algorithm and apply them to mixture model estimation. Numerical experiments examine the performance of the acceleration algorithms in terms of the number of iterations and computation time.

Magazine(name)

Computational Statistics and Applications

Publisher

IntechOpen

Volume

Number Of Pages

StartingPage

1

EndingPage

17

Date of Issue

2021/12

Referee

Exist

Invited

Not exist

Language

English

Thesis Type

Research papers (academic journals)

ISSN

DOI

10.5772/intechopen.101249

NAID

PMID

URL

J-GLOBAL ID

arXiv ID

ORCID Put Code

DBLP ID