Title of article :
On the estimation of serial correlation in Markov-dependent production processes
Author/Authors :
Sueli A. Mingoti، نويسنده , , J?lia P. De Carvalho & Joab De Oliveira Lima، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2008
Abstract :
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, IIE 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.
Keywords :
Markov chain , serial correlation estimation , autocorrelated processes
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS