A comparison of Process Capability Measures for Seasonal and Non-Seasonal Autoregressive Auto-Correlated Data

IF 0.6 Q4 STATISTICS & PROBABILITY Electronic Journal of Applied Statistical Analysis Pub Date : 2019-04-26 DOI:10.1285/I20705948V12N1P140
A. Al-Zou'bi, A. Smadi
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Abstract

The process capability indices give a measure of how a process suits within the specification limits. Traditionally, the main assumptions are used in calculating these indices that the measurements for the specified characteristic are independent and normally distributed. In this paper we investigated the distributional properties in terms of Bias, MSE and empirical distribution for the sample version of the most common three process capability measures namely;  when the process data are autocorrelated following seasonal or non-seasonal first-order autoregressive process. We have found that the characteristics of those estimators are negatively affected by the autocorrelation data, especially for the multiplicative seasonal AR model. Besides, we found that the empirical distributions of the three sample capability measures are positively skewed and leptokurtic, a fact which is true when the data are independent and normal.
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季节性和非季节性自回归自相关数据的过程能力度量比较
工艺能力指数提供了一种工艺如何在规范限制范围内适用的衡量标准。传统上,在计算这些指标时使用的主要假设是,特定特性的测量值是独立的且正态分布的。在本文中,我们研究了最常见的三种过程能力测量的样本版本的偏差、MSE和经验分布的分布特性,即:;当过程数据在季节性或非季节性一阶自回归过程之后自相关时。我们发现,这些估计量的特性受到自相关数据的负面影响,特别是对于乘性季节AR模型。此外,我们发现三个样本能力测度的经验分布是正偏的和轻风的,当数据是独立的和正态的时,这一事实是正确的。
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CiteScore
1.40
自引率
14.30%
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0
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