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A combined mixed- s -skip sampling strategy to reduce the effect of autocorrelation on the X̄ scheme with and without measurement errors.

Sandile Charles ShongweJean-Claude Malela-MajikaPhilippe Castagliola
Published in: Journal of applied statistics (2020)
In order to reduce the effect of autocorrelation on the X ¯ monitoring scheme, a new sampling strategy is proposed to form rational subgroup samples of size n . It requires sampling to be done such that: (i) observations from two consecutive samples are merged, and (ii) some consecutive observations are skipped before sampling. This technique which is a generalized version of the mixed samples strategy is shown to yield a better reduction of the negative effect of autocorrelation when monitoring the mean of processes with and without measurement errors. For processes subjected to a combined effect of autocorrelation and measurement errors, the proposed sampling technique, together with multiple measurement strategy, yields an uniformly better zero-state run-length performance than its two main existing competitors for any autocorrelation level. However, in steady-state mode, it yields the best performance only when the monitoring process is subject to a high level of autocorrelation, for any given level of measurement errors. A real life example is used to illustrate the implementation of the proposed sampling strategy.
Keyphrases
  • patient safety
  • adverse drug
  • primary care
  • healthcare
  • randomized controlled trial
  • emergency department
  • quality improvement
  • electronic health record
  • open label
  • drug induced