Univariate Discrete Nadarajah and Haghighi Distribution: Properties and Different Methods of Estimation
An extension of the exponential distribution due toNadarajah and Haghighi referred to as Nadarajah and Haghighi (NH) distribution is an alternative that always provides better fits than the gamma, Weibull, and the generalized exponential distributions whenever the data contains zero values. However,...
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doaj-305c91d3200d4898ac6afaeeb09063a92021-03-12T14:27:09ZengUniversity of BolognaStatistica0390-590X1973-22012021-01-0180330133010.6092/issn.1973-2201/95328065Univariate Discrete Nadarajah and Haghighi Distribution: Properties and Different Methods of EstimationMuhammad Shafqat0Sajid Ali1Ismail Shah2Sanku Dey3Quaid-i-Azam UniversityQuaid-i-Azam UniversityQuaid-i-Azam UniversitySt. Anthony's CollegeAn extension of the exponential distribution due toNadarajah and Haghighi referred to as Nadarajah and Haghighi (NH) distribution is an alternative that always provides better fits than the gamma, Weibull, and the generalized exponential distributions whenever the data contains zero values. However, in practice, discrete data is easy to collect as compared to continuous data. Thus, keeping in mind the utility of discrete data, we introduce the discrete analogue of NH distribution. Our main focus is the estimation from the frequentist point of view of the unknown parameters along with deriving some mathematical properties of the new model. We briefly describe different frequentist approaches, namely, maximum likelihood, percentile based, least squares, weighted least squares, maximum product of spacings, Cramèr-von-Mises, Anderson-Darling, and right-tail Anderson-Darling estimators, and compare them using extensive numerical simulations. Monte Carlo simulations are performed to compare the performances of the proposed methods of estimation for both small and large samples. The potentiality of the distribution is analyzed by means of two real data sets.https://rivista-statistica.unibo.it/article/view/9532maximum likelihood estimatorleast square estimatorpercentile estimatoranderson darling estimator;nadarajah and haghighi distribution |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Muhammad Shafqat Sajid Ali Ismail Shah Sanku Dey |
spellingShingle |
Muhammad Shafqat Sajid Ali Ismail Shah Sanku Dey Univariate Discrete Nadarajah and Haghighi Distribution: Properties and Different Methods of Estimation Statistica maximum likelihood estimator least square estimator percentile estimator anderson darling estimator; nadarajah and haghighi distribution |
author_facet |
Muhammad Shafqat Sajid Ali Ismail Shah Sanku Dey |
author_sort |
Muhammad Shafqat |
title |
Univariate Discrete Nadarajah and Haghighi Distribution: Properties and Different Methods of Estimation |
title_short |
Univariate Discrete Nadarajah and Haghighi Distribution: Properties and Different Methods of Estimation |
title_full |
Univariate Discrete Nadarajah and Haghighi Distribution: Properties and Different Methods of Estimation |
title_fullStr |
Univariate Discrete Nadarajah and Haghighi Distribution: Properties and Different Methods of Estimation |
title_full_unstemmed |
Univariate Discrete Nadarajah and Haghighi Distribution: Properties and Different Methods of Estimation |
title_sort |
univariate discrete nadarajah and haghighi distribution: properties and different methods of estimation |
publisher |
University of Bologna |
series |
Statistica |
issn |
0390-590X 1973-2201 |
publishDate |
2021-01-01 |
description |
An extension of the exponential distribution due toNadarajah and Haghighi referred to as Nadarajah and Haghighi (NH) distribution is an alternative that always provides better fits than the gamma, Weibull, and the generalized exponential distributions whenever the data contains zero values. However, in practice, discrete data is easy to collect as compared to continuous data. Thus, keeping in mind the utility of discrete data, we introduce the discrete analogue of NH distribution.
Our main focus is the estimation from the frequentist point of view of the unknown parameters along with deriving some mathematical properties of the new model. We briefly describe different frequentist approaches, namely, maximum likelihood, percentile based, least squares, weighted least squares, maximum product of spacings, Cramèr-von-Mises, Anderson-Darling, and right-tail Anderson-Darling estimators, and compare them using extensive numerical simulations. Monte Carlo simulations are performed to compare the performances of the proposed methods of estimation for both small and large samples. The potentiality of the distribution is analyzed by means of two real data sets. |
topic |
maximum likelihood estimator least square estimator percentile estimator anderson darling estimator; nadarajah and haghighi distribution |
url |
https://rivista-statistica.unibo.it/article/view/9532 |
work_keys_str_mv |
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