Bias-Corrected Maximum Likelihood Estimators of the Parameters of the Unit-Weibull Distribution

It is well known that the maximum likelihood estimates (MLEs) have appealing statistical properties. Under fairly mild conditions their asymptotic distribution is normal, and no other estimator has a smaller asymptotic variance. However, in finite samples the maximum likelihood estimates are often...

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Main Authors: Andre Menezes, Josmar Mazucheli, F. Alqallaf, M. E. Ghitany
Format: Article
Language:English
Published: Austrian Statistical Society 2021-07-01
Series:Austrian Journal of Statistics
Online Access:https://www.ajs.or.at/index.php/ajs/article/view/1023
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spelling doaj-7c899508d04a4d63810ab4d93f0184b82021-07-06T13:44:25ZengAustrian Statistical SocietyAustrian Journal of Statistics1026-597X2021-07-0150310.17713/ajs.v50i3.1023Bias-Corrected Maximum Likelihood Estimators of the Parameters of the Unit-Weibull DistributionAndre Menezes0Josmar MazucheliF. AlqallafM. E. GhitanyUniversidade Estadual de Maringá It is well known that the maximum likelihood estimates (MLEs) have appealing statistical properties. Under fairly mild conditions their asymptotic distribution is normal, and no other estimator has a smaller asymptotic variance. However, in finite samples the maximum likelihood estimates are often biased estimates and the bias disappears as the sample size grows. Mazucheli, Menezes, and Ghitany (2018b) introduced a two-parameter unit-Weibull distribution which is useful for modeling data on the unit interval, however its MLEs are biased in finite samples. In this paper, we adopt three approaches for bias reduction of the MLEs of the parameters of unit-Weibull distribution. The first approach is the analytical methodology suggested by Cox and Snell (1968), the second is based on parametric bootstrap resampling method, and the third is the preventive approach introduced by Firth (1993). The results from Monte Carlo simulations revealed that the biases of the estimates should not be ignored and the bias reduction approaches are equally efficient. However, the first approach is easier to implement. Finally, applications to two real data sets are presented for illustrative purposes. https://www.ajs.or.at/index.php/ajs/article/view/1023
collection DOAJ
language English
format Article
sources DOAJ
author Andre Menezes
Josmar Mazucheli
F. Alqallaf
M. E. Ghitany
spellingShingle Andre Menezes
Josmar Mazucheli
F. Alqallaf
M. E. Ghitany
Bias-Corrected Maximum Likelihood Estimators of the Parameters of the Unit-Weibull Distribution
Austrian Journal of Statistics
author_facet Andre Menezes
Josmar Mazucheli
F. Alqallaf
M. E. Ghitany
author_sort Andre Menezes
title Bias-Corrected Maximum Likelihood Estimators of the Parameters of the Unit-Weibull Distribution
title_short Bias-Corrected Maximum Likelihood Estimators of the Parameters of the Unit-Weibull Distribution
title_full Bias-Corrected Maximum Likelihood Estimators of the Parameters of the Unit-Weibull Distribution
title_fullStr Bias-Corrected Maximum Likelihood Estimators of the Parameters of the Unit-Weibull Distribution
title_full_unstemmed Bias-Corrected Maximum Likelihood Estimators of the Parameters of the Unit-Weibull Distribution
title_sort bias-corrected maximum likelihood estimators of the parameters of the unit-weibull distribution
publisher Austrian Statistical Society
series Austrian Journal of Statistics
issn 1026-597X
publishDate 2021-07-01
description It is well known that the maximum likelihood estimates (MLEs) have appealing statistical properties. Under fairly mild conditions their asymptotic distribution is normal, and no other estimator has a smaller asymptotic variance. However, in finite samples the maximum likelihood estimates are often biased estimates and the bias disappears as the sample size grows. Mazucheli, Menezes, and Ghitany (2018b) introduced a two-parameter unit-Weibull distribution which is useful for modeling data on the unit interval, however its MLEs are biased in finite samples. In this paper, we adopt three approaches for bias reduction of the MLEs of the parameters of unit-Weibull distribution. The first approach is the analytical methodology suggested by Cox and Snell (1968), the second is based on parametric bootstrap resampling method, and the third is the preventive approach introduced by Firth (1993). The results from Monte Carlo simulations revealed that the biases of the estimates should not be ignored and the bias reduction approaches are equally efficient. However, the first approach is easier to implement. Finally, applications to two real data sets are presented for illustrative purposes.
url https://www.ajs.or.at/index.php/ajs/article/view/1023
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