Bayesian Segmentation of Piecewise Linear Regression Models Using Reversible Jump MCMC Algorithm

Dr, Suparman (2014) Bayesian Segmentation of Piecewise Linear Regression Models Using Reversible Jump MCMC Algorithm. Computer Technology and Application, 6 (1). pp. 14-18. ISSN 1934-7332

[thumbnail of CCF13082015.pdf] PDF
CCF13082015.pdf - Published Version

Download (4MB)

Abstract

Piecewise linear regression models are very flexible models for modeling the data. If the piecewise linear regression models are matched against the data, then the parameters are generally not known. This paper studies the problem of parameter estimation of piecewise linear regression models. The method used to estimate the parameters of piecewise linear regression models is Bayesian method. But the Bayes estimator can not be found analytically. To overcome these problems, the reversible jump MCMC (Marcov Chain Monte Carlo) algorithm is proposed. Reversible jump MCMC algorithm generates the Markov chain converges to the limit distribution of the posterior distribution of the parameters of piecewise linear regression models. The resulting Markov chain is used to calculate the Bayes estimator for the parameters of piecewise linear regression models.

Item Type: Artikel Umum
Subjects: H Social Sciences > HA Statistics
Depositing User: Dr. Suparman M, Si., DEA
Date Deposited: 01 Oct 2015 00:25
Last Modified: 01 Oct 2015 00:25
URI: http://eprints.uad.ac.id/id/eprint/2423

Actions (login required)

View Item View Item