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Self-Starting Monitoring Scheme for Poisson Count Data With Varying Population Sizes

Xiaobei SHEN, Kwok-Leung TSUI, Changliang ZOU*, William H. WOODALL

*Corresponding author for this work

    Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

    Abstract

    In this article, we consider the problem of monitoring Poisson rates when the population sizes are time-varying and the nominal value of the process parameter is unavailable. Almost all previous control schemes for the detection of increases in the Poisson rate in Phase II are constructed based on assumed knowledge of the process parameters, for example, the expectation of the count of a rare event when the process of interest is in control. In practice, however, this parameter is usually unknown and not able to be estimated with a sufficiently large number of reference samples. A self-starting exponentially weighted moving average (EWMA) control scheme based on a parametric bootstrap method is proposed. The success of the proposed method lies in the use of probability control limits, which are determined based on the observations during rather than before monitoring. Simulation studies show that our proposed scheme has good in-control and out-of-control performance under various situations. In particular, our proposed scheme is useful in rare event studies during the start-up stage of a monitoring process. Supplementary materials for this article are available online.
    Original languageEnglish
    Pages (from-to)460-471
    JournalTechnometrics
    Volume58
    Issue number4
    Online published11 Oct 2016
    DOIs
    Publication statusPublished - 2016

    Research Keywords

    • Average run length
    • Healthcare surveillance
    • Poisson process
    • Probability control limits

    RGC Funding Information

    • RGC-funded

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    • CRF: Syndromic Surveillance and Modeling for Infectious Diseases

      TSUI, K. L. (Principal Investigator / Project Coordinator), CHAN, A. B. (Co-Principal Investigator), LO, S. M. (Co-Principal Investigator), TSE, W. T. P. (Co-Principal Investigator), WONG, S. Y. (Co-Principal Investigator), YUEN, K. K. R. (Co-Principal Investigator), CHAN, N.-H. (Co-Investigator), CHOW, C. B. (Co-Investigator), GOLDSMAN, D. M. (Co-Investigator), HO, P. L. (Co-Investigator), LAI, T. S. T. (Co-Investigator), LONGINI, I. (Co-Investigator), WOODALL, W. H. (Co-Investigator), WU, J. T. K. (Co-Investigator) & Wu, J. (Co-Investigator)

      1/06/1330/11/16

      Project: Research

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