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Bayesian Multiple Change-Point Estimation and SegmentationBayesian Multiple Change-Point Estimation and Segmentation

Other Titles
Bayesian Multiple Change-Point Estimation and Segmentation
Authors
김재희전수영
Issue Date
2013
Publisher
한국통계학회
Keywords
BIC; multiple change-points; segmentation; stochastic approximation Monte Carlo.
Citation
Communications for Statistical Applications and Methods, v.20, no.6, pp.439 - 454
Indexed
KCI
Journal Title
Communications for Statistical Applications and Methods
Volume
20
Number
6
Start Page
439
End Page
454
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/105220
ISSN
2287-7843
Abstract
This study presents a Bayesian multiple change-point detection approach to segment and classify the observations that no longer come from an initial population after a certain time. Inferences are based on the multiple change-points in a sequence of random variables where the probability distribution changes. Bayesian multiple change-point estimation is classifies each observation into a segment. We use a truncated Poisson distribution for the number of change-points and conjugate prior for the exponential family distributions. The Bayesian method can lead the unsupervised classification of discrete, continuous variables and multivariate vectors based on latent class models; therefore, the solution for change-points corresponds to the stochastic partitions of observed data. We demonstrate segmentation with real data.
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