6533b852fe1ef96bd12aab75

RESEARCH PRODUCT

A Bayesian Sequential Look at u-Control Charts

Maria J. BayarriGonzalo García-donato

subject

Statistics and ProbabilityApplied MathematicsBayesian probabilityPoisson distributioncomputer.software_genreStatistical process controlsymbols.namesakeBayes' theoremOverdispersionFrequentist inferenceModeling and SimulationPrior probabilitysymbolsControl chartData miningcomputerMathematics

description

We extend the usual implementation of u-control charts (uCCs) in two ways. First, we overcome the restrictive (and often inadequate) assumptions of the Poisson model; next, we eliminate the need for the questionable base period by using a sequential procedure. We use empirical Bayes(EB) and Bayes methods and compare them with the traditional frequentist implementation. EB methods are somewhat easy to implement, and they deal nicely with extra-Poisson variability (and, at the same time, informally check the adequacy of the Poisson assumption). However, they still need the base period. The sequential, full Bayes approach, on the other hand, also avoids this drawback of traditional u-charts. The implementation requires numerical simulation, and also use of a prior distribution. Several possibilities for both objective and informative priors are explored. We argue that the sequential, full Bayesian uCC is a powerful and versatile tool for process monitoring.

https://doi.org/10.1198/004017005000000085