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Evolutionary Monte Carlo EM for Change Point AnalysisEvolutionary Monte Carlo EM for Change Point Analysis

Other Titles
Evolutionary Monte Carlo EM for Change Point Analysis
Authors
전수영
Issue Date
2019
Publisher
한국자료분석학회
Keywords
change-point problem; expectation-maximization; Markov chain Monte Carlo; evolutionary Monte Carlo.
Citation
Journal of The Korean Data Analysis Society, v.21, no.2, pp.559 - 569
Indexed
KCI
Journal Title
Journal of The Korean Data Analysis Society
Volume
21
Number
2
Start Page
559
End Page
569
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/69029
DOI
10.37727/jkdas.2019.21.2.559
ISSN
1229-2354
Abstract
In the change point inference of incomplete data, the expectation-maximization (EM) algorithm is often difficult to handle, and thus the Markov chain Monte Carlo (MCMC) method has been used in this area for a long time. However, the traditional MCMC algorithm tends to be trapped to local minima when generating samples from the posterior distribution of change points. To overcome this problem, various advanced Monte Carlo methods have been proposed, but still somewhat difficult to use. This paper proposes an evolutionary Monte Carlo EM (EMCEM) algorithm that combines the evolutionary Monte Carlo algorithm (EMC) with EM using the maximum likelihood method for efficient and user-friendly sampling. EMC has incorporated several attractive features of genetic algorithms and simulated annealing into the framework of MCMC. EMCEM is compared with reversible jump MCMC version of EM (RJMCMCEM), the stochastic approximation version of EM (SAEM) and the stochastic approximation Monte Carlo version of EM (SAMCEM) on simulated and real datasets. The numerical results indicate that EMCEM can outperform RJMCMCEM and SAEM by producing much more accurate parameter estimates, and EMCEM is comparable to SAMCEM.
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