Title of article :
Bayesian multiple change-point estimation of Poisson rates in control charts
Author/Authors :
Assareh، Mohammad Hassan نويسنده , , Noorossana، Rassoul نويسنده Industrial Engineering Department. Tehran, Iran , , Mohammadi، Majid نويسنده Islamic Azad University , , Mengersen، Kerrie L. نويسنده ,
Issue Information :
دوفصلنامه با شماره پیاپی 0 سال 2016
Abstract :
Eectiveness of root cause analysis eorts, following a control chart signal,
will be enhanced if there exists more accurate information about the true time of change
in the process. In this study, we consider a Poisson process experiencing an unknown
multiple number of step changes in the Poisson rate. We formulate the multiple changepoint
scenario using Bayesian hierarchical models. We compute posterior distributions of
the change-point parameters including number, location, and magnitude of changes and also
corresponding probabilistic intervals and inferences through Reversible Jump Markov Chain
Monte Carlo methods. The performance of the Bayesian estimator is investigated over
several simulated change-point scenarios. Results show that when the proposed Bayesian
estimator is used in conjunction with the c-chart, it can provide precise estimates about the
underlying change-point scenario (number, timing, direction, and size of step changes). In
comparison with alternatives, including Poisson EWMA and CUSUM built-in estimators
and a maximum likelihood estimator, our estimator performs satisfactorily over consecutive
monotonic and non-monotonic changes. The proposed Bayesian model and computation
framework also benet from probability quantication as well as
exibility, which allow us
to formulate other process types and change scenarios.
Journal title :
Scientia Iranica(Transactions E: Industrial Engineering)
Journal title :
Scientia Iranica(Transactions E: Industrial Engineering)