Exponentiated Generalized Exponential Geometric Distribution: Model, Properties and Applications

Lal Babu Sah Telee, Murari Karki, Vijay Kumar
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引用次数: 1

Abstract

In this article, a new distribution called Exponentiated Generalized Exponential Geometric Distribution is formulated. We have derived some important mathematical properties like hazard function, probability density function, survival function, quantiles, the measures of skewness based on quartiles and coefficient of kurtosis based on octiles. To estimate the parameters of the new distribution, we have applied the three commonly used estimation methods namely maximum likelihood estimation (MLE), least-square (LSE) method and Cramer-Von-Mises (CVM) method. We have used R programming as well as analytical methods for data analysis. For model validation, we have used different information criteria as Akaike’s information criteria, and Bayesian information criteria (BIC) etc. For the assessment of potentiality of the new distribution, we have considered a real dataset and the goodness-of-fit attained by proposed distribution is compared with some competing distributions. It is found that the proposed model fits the data very well and more flexible as compared to some other models.
指数广义指数几何分布:模型、性质及应用
本文提出了一种新的指数几何分布,称为指数广义指数几何分布。我们推导了一些重要的数学性质,如危险函数、概率密度函数、生存函数、分位数、基于四分位数的偏度度量和基于八分位数的峰度系数。为了估计新分布的参数,我们应用了三种常用的估计方法,即最大似然估计(MLE)、最小二乘法(LSE)和Cramer-Von-Mises (CVM)方法。我们使用R编程和分析方法进行数据分析。为了验证模型,我们使用了赤池信息准则、贝叶斯信息准则(BIC)等不同的信息准则。为了评估新分布的潜力,我们考虑了一个真实的数据集,并将所提出的分布获得的拟合优度与一些竞争分布进行了比较。结果表明,与其他模型相比,该模型具有较好的拟合性和灵活性。
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