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  5. An ARL-unbiased thinning-based EWMA chart to monitor counts

An ARL-unbiased thinning-based EWMA chart to monitor counts

Publication date
2019-03-29
Document type
Forschungsartikel
Author
Morais, Manuel Cabral
Knoth, Sven  
Weiß, Christian H.  
Organisational unit
Rechnergestützte Statistik  
Quantitative Methoden der Wirtschaftswissenschaften  
DOI
10.1080/07474946.2018.1554889
URI
https://openhsu.ub.hsu-hh.de/handle/10.24405/21905
Scopus ID
2-s2.0-85063610431
Publisher
Taylor & Francis
Series or journal
Sequential Analysis
ISSN
0747-4946
Periodical volume
37
Periodical issue
4
First page
487
Last page
510
Part of the university bibliography
✅
Additional Information
Language
English
Keyword
62F03
62P30
Average run length unbiased design
exponentially weighted moving average
fractional binomial thinning
randomised signals
statistical process control
Abstract
Shewhart control charts are known to be somewhat insensitive to shifts of small and moderate size. Expectedly, alternative control schemes such as the exponentially weighted moving average (EWMA) charts have been proposed to speed up the detection of such shifts. Unfortunately, applying the ordinary EWMA recursion to count data leads to a control statistic no longer with a fixed discrete range. Therefore, we propose a novel chart which relies on a EWMA control statistic where the usual scalar product is replaced by a thinning operation. Actually, we use the new fractional binomial thinning to avoid the typical over-smoothing ascribable to ceiling, rounding, and flooring operations. The properties of this discrete statistic are similar to the ones of its continuous EWMA counterpart and the run length (RL) performance of the associated chart can be computed exactly using the Markov chain approach for independent and identically distributed (i.i.d.) counts. Moreover, this chart is set in such way that: the average run length (ARL) curve attains a maximum in the in-control situation, i.e., the chart is ARL-unbiased; and the in-control ARL is equal to a pre-specified value. We use the R statistical software to provide compelling illustrations of this unconventional EWMA chart and to compare its RL performance with the ones of a few competing control charts for the mean of i.i.d. Poisson counts.
Version
Published version
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