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Bayesian monitoring of local residual autocorrelations taking into account the run-length
Authors:Manuel Salvador  Pilar Gargallo
Affiliation:Department of Statistical Methods, Faculty of Economics and Business Studies, University of Zaragoza, Gran Via 2, Zaragoza 50005, Spain
Abstract:This paper proposes new two-sided monitoring algorithms for detecting the presence of first order residual autocorrelations in Dynamic Normal Models. The methodology uses a Bayesian decision approach with loss function which takes into account the run-length of the process. The power and mean run-length of the proposed algorithms are analysed by Monte Carlo methods. The results obtained improve those corresponding to the monitoring algorithm for residual autocorrelations proposed in Gargallo and Salvador [2003. Monitoring residual autocorrelations in dynamic linear models. Comm. Statist. Simulation Comput. 32(4), 1079–1104.] with respect to the run-length, and also exhibit more homogeneous behaviour.
Keywords:Sequential monitoring   Dynamic Linear Models   Bayesian inference
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