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Asymptotic and Bootstrap Confidence Intervals for the Process Capability Index c_(py) Based on Lindley Distributed Quality Characteristic

机译:基于Lindley分布式质量特征的过程能力指数c_(py)的渐近和Bootstrap置信区间

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摘要

Process capability indices (PCIs) have been widely applied in measuring product potential and performance. It is of great significance to quality control engineers, as it quantifies the relation between the actual performance of the process and the preset specifications of the product. Among the plethora of the suggested PCIs, most of them were developed for normally distributed processes. In this article, we consider generalized process capability index C_(py) suggested by Maiti et al. (2010), which can be used for normal, non-normal, and continuous as well as discrete random variables. The objective of this article is twofold. First, we obtain maximum likelihood estimator (MLE) and minimum variance unbiased estimator (MVUE) of the PCI C_(py) for the Lindley distributed quality characteristics. Second, we compare asymptotic confidence interval (ACI) with four bootstrap confidence intervals (BCIs); namely, standard bootstrap (s-boot), percentile bootstrap (p-boot), Student's f bootstrap (f-boot), and bias-corrected accelerated bootstrap (BC_a-boot) of C_(py) based on maximum likelihood method of estimation. Monte Carlo simulations have been carried out to compare the performance of MLEs and MVUEs, and also investigate the average widths, coverage probabilities, and relative coverages of ACI and BCIs of C_(py). Two real data sets have been analyzed for illustrative purposes.
机译:工艺能力指数(PCI)已被广泛应用于测量产品潜力和性能。对于质量控制工程师而言,这非常重要,因为它可以量化过程的实际性能与产品的预设规格之间的关系。在众多建议的PCI中,大多数PCI是为正态分布的过程而开发的。在本文中,我们考虑了Maiti等人提出的广义过程能力指数C_(py)。 (2010),可用于正态,非正态,连续以及离散随机变量。本文的目的是双重的。首先,针对Lindley分布式质量特征,获得PCI C_(py)的最大似然估计量(MLE)和最小方差无偏估计量(MVUE)。其次,我们将渐近置信区间(ACI)与四个自举置信区间(BCI)进行比较;即基于最大似然估计方法的标准引导程序(s-boot),百分位引导程序(p-boot),学生的f引导程序(f-boot)和C_(py)的偏差校正的加速引导程序(BC_a-boot) 。进行了蒙特卡洛模拟以比较MLE和MVUE的性能,还研究了C_(py)的ACI和BCI的平均宽度,覆盖率和相对覆盖率。为了说明的目的,已经分析了两个真实的数据集。

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