Title of article :
On the Bayesian Sequential Change-Point Detection
Author/Authors :
Gholami, Gholamhossein Department of Mathematics - Faculty of Sciences - Urmia University, Iran
Abstract :
The problems of sequential change-point have several important applications in quality control, signal processing, and failure detection in industry and finance and signal detection. We discuss a Bayesian approach in the context of statistical process control: at an unknown time τ, the process behavior changes and the distribution of the data changes from p0 to p1. Two cases are considered: (i) p0 and p1 are fully known, (ii) p0 and p1 belong to the same family of distributions with some unknown parameters θ1≠θ2. We present a maximum a posteriori estimate of the change-point which, for the case (i), can be computed in a sequential manner. In addition, we propose the use of the Shiryaevchr('39')s loss function. Under this assumption, we define a Bayesian stopping rule. For the Poisson distribution and in the two cases (i) and (ii), we obtain results for the conjugate prior.
Keywords :
Bayesian Sopping Rule , Change-Point Detection , Maximum a Posteriori Estimation , Shiryaev’s Loss Function , Sequential Bayesian Analysis
Journal title :
Journal of the Iranian Statistical Society (JIRSS)