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首页> 外文期刊>Journal of applied statistics >Identifying the time of change in the mean of a two-stage nested process
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Identifying the time of change in the mean of a two-stage nested process

机译:确定两阶段嵌套过程的平均值的变化时间

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摘要

Statistical process control charts are used to distinguish between common cause and special cause sources of variability. Once a control chart signals, a search to find the special cause should be initiated. If process analysts had knowledge of the change point, the search to find the special cause could be easily facilitated. Relevant literature contains an array of solutions to the change-point problem; however, these solutions are most appropriate when the samples are assumed to be independent. Unfortunately, the assumption of independence is often violated in practice. This work considers one such case of non-independence that frequently occurs in practice as a result of multi-stage sampling. Due to its commonality in practice, we assume a two-stage nested random model as the underlying process model and derive and evaluate a maximum-likelihood estimator for the change point in the fixed-effects component of this model. The estimator is applied to electron microscopy data obtained following a genuine control chart signal and from a real machining process where the important quality characteristic is the size of the surface grains produced by the machining operation. We conduct a simulation study to compare relative performances between the proposed change-point estimator and a commonly used alternative developed under the assumption of independent observations. The results suggest that both estimators are approximately unbiased; however, the proposed estimator yields smaller variance. The implication is that the proposed estimator is more precise, and thus, the quality of the estimator is improved relative to the alternative.
机译:统计过程控制图用于区分变异的常见原因和特殊原因。一旦控制图发出信号,就应开始寻找特殊原因的搜索。如果过程分析人员了解更改点,则可以轻松地进行查找特殊原因的搜索。相关文献包含了解决变更点问题的一系列解决方案。但是,当假定样本独立时,这些解决方案最合适。不幸的是,在实践中经常违反独立性的假设。这项工作考虑了这种非独立的情况,这种情况在实际中经常由于多阶段采样而发生。由于其在实践中的共性,我们假设一个两阶段的嵌套随机模型作为基础过程模型,并推导并评估该模型的固定效应组件中变化点的最大似然估计。该估计器应用于根据真实控制图信号和实际加工过程获得的电子显微镜数据,其中重要的质量特征是加工操作产生的表面晶粒的尺寸。我们进行了仿真研究,以比较建议的变化点估计量和在独立观察的假设下开发的常用替代方法之间的相对性能。结果表明,两个估计量都近似无偏。然而,提出的估计量产生较小的方差。这意味着所提出的估计器更加精确,因此,相对于替代方案,估计器的质量得到了提高。

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