For attribute data with (very) small failure rates often control charts are used which decide whether to stop or to continue each time r failures have occurred, for some r ≥ 1. Because of the small probabilities involved, such charts are very sensitive to estimation effects. This is true in particular if the underlying failure rate varies and hence the distributions involved are not geometric. Such a situation calls for a nonparametric approach, but this may require far more Phase I observations than are typically available in practice. In the present paper it is shown how this obstacle can be effectively overcome by looking not at the sum but rather at the maximum of each group of size r
For processes concerning attribute data with (very) small failure rate p, often negative binomial co...
The effects of estimating parameters and the violation of the assumption of normality when dealing w...
Standard control charts are often seriously in error when the distributional form of the observation...
For attribute data with (very) small failure rates often control charts are used which decide whethe...
For attribute data with (very) small failure rates control charts were introduced which are based on...
For attribute data with (very) low rates of defectives, attractive control charts can be based on th...
For attribute data with (very) small failure rates control charts based on subsequent groups of r fa...
Due to the extreme quantiles involved, standard control charts are very sensitive to the effects of ...
Standard control charts are very sensitive to estimation effects and/or deviations from normality. H...
Because the in-control distribution and parameters are generally unknown, control limits have to be ...
Common control charts assume normality and known parameters. Quite often these assumptions are not v...
Owing to the extreme quantiles involved, standard control charts are very sensitive to the effects o...
The most commonly used techniques in statistical process control are parametric, and thus require as...
Classical control charts for monitoring the mean are based on the assumption of normality. When norm...
Standard control charts are often based on the assumption that the observations follow a specific pa...
For processes concerning attribute data with (very) small failure rate p, often negative binomial co...
The effects of estimating parameters and the violation of the assumption of normality when dealing w...
Standard control charts are often seriously in error when the distributional form of the observation...
For attribute data with (very) small failure rates often control charts are used which decide whethe...
For attribute data with (very) small failure rates control charts were introduced which are based on...
For attribute data with (very) low rates of defectives, attractive control charts can be based on th...
For attribute data with (very) small failure rates control charts based on subsequent groups of r fa...
Due to the extreme quantiles involved, standard control charts are very sensitive to the effects of ...
Standard control charts are very sensitive to estimation effects and/or deviations from normality. H...
Because the in-control distribution and parameters are generally unknown, control limits have to be ...
Common control charts assume normality and known parameters. Quite often these assumptions are not v...
Owing to the extreme quantiles involved, standard control charts are very sensitive to the effects o...
The most commonly used techniques in statistical process control are parametric, and thus require as...
Classical control charts for monitoring the mean are based on the assumption of normality. When norm...
Standard control charts are often based on the assumption that the observations follow a specific pa...
For processes concerning attribute data with (very) small failure rate p, often negative binomial co...
The effects of estimating parameters and the violation of the assumption of normality when dealing w...
Standard control charts are often seriously in error when the distributional form of the observation...