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On the estimation of serial correlation in Markov-dependent production processes

机译:关于依赖马尔可夫的生产过程中序列相关性的估计

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In this paper, we present a study about the estimation of the serial correlation for Markov chain models which is used often in the quality control of autocorrelated processes. Two estimators, non-parametric and multinomial, for the correlation coefficient are discussed. They are compared with the maximum likelihood estimator [U.N. Bhat and R. Lal, Attribute control charts for Markov dependent production process, HE Trans. 22 (2) (1990), pp. 181-188.] by using some theoretical facts and the Monte Carlo simulation under several scenarios that consider large and small correlations as well a range of fractions (p) of non-conforming items. The theoretical results show that for any value of p ≠ 0.5 and processes with autocorrelation higher than 0.5, the multinomial is more precise than maximum likelihood. However, the maximum likelihood is better when the autocorrelation is smaller than 0.5. The estimators are similar for p = 0.5. Considering the average of all simulated scenarios, the multinomial estimator presented lower mean error values and higher precision, being, therefore, an alternative to estimate the serial correlation. The performance of the non-parametric estimator was reasonable only for correlation higher than 0.5, with some improvement for p = 0.5.
机译:在本文中,我们提出了有关马尔可夫链模型的序列相关性估计的研究,该模型经常用于自相关过程的质量控制中。讨论了相关系数的两个非参数估计和多项式估计。将它们与最大似然估计器进行比较。 Bhat和R. Lal,《依赖马尔科夫的生产过程的属性控制图》,HE Trans。 22(2)(1990),第181-188页。]在一些考虑大和小相关性以及不合格项的分数(p)范围的情况下,使用一些理论事实和蒙特卡洛模拟。理论结果表明,对于任何p≠0.5的值和自相关高于0.5的过程,多项式比最大似然更为精确。但是,当自相关小于0.5时,最大似然性会更好。对于p = 0.5,估计量相似。考虑到所有模拟场景的平均值,多项式估计器呈现出较低的平均误差值和较高的精度,因此是估计序列相关性的替代方法。仅当相关性高于0.5时,非参数估计器的性能才是合理的,p = 0.5时有一些改进。

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