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Comparison of Pearson Distribution System and Response Modeling Methodology (RMM) as Models for Process Capability Analysis of Skewed Data

机译:皮尔逊分布系统和响应建模方法(RMM)作为偏斜数据过程能力分析模型的比较

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摘要

Clements' approach to process capability analysis for skewed distributions, based on fitting the Pearson distribution system to data, is widely used in industry. In this paper we compare the accuracy of the Pearson system and the RMM (response modeling methodology) distribution, as distributional models for process capability analysis of non-normal data. The accuracy of the estimates of C_p and C_(pu) is measured by the relative mean square errors. Three factors that may affect the accuracy of RMM and Pearson are examined: the data-generating distribution (Weibull, log-normal, gamma), the skewness (0.5,1.25,2) and the sample size (50,300,2000). The results show that RMM consistently outperforms Pearson, even for samples from gamma, which is a special case of Pearson. This implies that when observations are visibly skewed yet their underlying distribution is unknown, RMM estimators for C_p and C_(pu) take account of the information stored in the data more precisely than the Pearson model, and may therefore constitute a preferred distributional model to pursue in process capability analysis.
机译:基于将Pearson分布系统拟合到数据的基础,Clements的偏斜分布过程能力分析方法在工业中得到了广泛使用。在本文中,我们比较了Pearson系统和RMM(响应建模方法)分布的准确性,将其作为用于非正态数据的过程能力分析的分布模型。 C_p和C_(pu)的估计精度由相对均方误差测量。研究了可能影响RMM和Pearson准确性的三个因素:数据生成分布(Weibull,对数正态,伽马),偏度(0.5、1.25、2)和样本大小(50,300,2000)。结果表明,即使对于来自伽玛的样本,RMM始终优于Pearson,这是Pearson的特例。这意味着,当观测值明显偏斜,但其基本分布未知时,C_p和C_(pu)的RMM估计器比Pearson模型更精确地考虑了数据中存储的信息,因此可能构成首选的分布模型在过程能力分析中。

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