Bayesian change-point analysis in linear regression model with scale mixtures of normal distributions


Autoria(s): Kang, Shuaimin
Data(s)

01/01/2015

Resumo

In this thesis, we consider Bayesian inference on the detection of variance change-point models with scale mixtures of normal (for short SMN) distributions. This class of distributions is symmetric and thick-tailed and includes as special cases: Gaussian, Student-t, contaminated normal, and slash distributions. The proposed models provide greater flexibility to analyze a lot of practical data, which often show heavy-tail and may not satisfy the normal assumption. As to the Bayesian analysis, we specify some prior distributions for the unknown parameters in the variance change-point models with the SMN distributions. Due to the complexity of the joint posterior distribution, we propose an efficient Gibbs-type with Metropolis- Hastings sampling algorithm for posterior Bayesian inference. Thereafter, following the idea of [1], we consider the problems of the single and multiple change-point detections. The performance of the proposed procedures is illustrated and analyzed by simulation studies. A real application to the closing price data of U.S. stock market has been analyzed for illustrative purposes.

Formato

application/pdf

Identificador

http://digitalcommons.mtu.edu/etds/920

http://digitalcommons.mtu.edu/cgi/viewcontent.cgi?article=1922&context=etds

Publicador

Digital Commons @ Michigan Tech

Fonte

Dissertations, Master's Theses and Master's Reports - Open

Palavras-Chave #variance change point detection #Statistics and Probability
Tipo

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