Gompertz长度偏置指数分布及其在非截尾数据中的应用

O. Maxwell, O. Oyamakin, E. J. Thomas
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引用次数: 11

摘要

长度偏差分布是加权分布[1]的更一般形式的特殊情况,它首先由[2]引入模型确定偏差,并由[3]形式化为统一理论。生命周期数据可以用几个现有的分布进行建模,尽管在许多情况下,现有的模型不够充分,或者不太能代表实际数据。因此,开发能够更好地描述某些现象并使其比基线分布更具灵活性的复合分布是非常重要的[4]。因此,模型的选择也是可靠的模型参数估计的一个重要问题。由于一些有趣的优势,最近提出了一些用于建模寿命数据的指数分布推广[5]。近年来发展了许多指数分布的推广,如Marshall Olkin长度偏指数分布[5]、指数指数分布[6,7]、广义指数矩指数分布[8]、扩展指数指数分布[19]、Marshall-Olkin指数Weibull分布[10]、Marshall-Olkin广义指数分布[5]、指数矩指数分布[11]等。如果随机变量X的概率密度函数(pdf)和累积分布函数(cdf)分别由式(1)和式(2)给出,则称其具有参数为\beta的长度偏倚指数分布[12]:
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The Gompertz Length Biased Exponential Distribution and its application to Uncensored Data
Length biased distributions are special case of the more general form known as weighted distribution [1], first introduced by [2] to model ascertainment bias and formalized in a unifying theory by [3]. Lifetime data may be modeled with several existing distributions, although the existing models are not adequate or are less representative of actual data in many situations. Therefore, the development of compound distributions that could better describe certain phenomena and make them more flexible than the baseline distribution is of great importance [4]. Thus, the choice of the model is also an important issue for reliable model parameter estimation. Some exponential distribution generalizations for modeling lifetime data due to some interesting advantages have been recently proposed [5]. In recent years many exponential distribution generalizations have been developed, such as the Marshall Olkin length biased exponential distribution [5], exponentiated exponential [6,7], generalized exponentiated moment exponential [8], extended exponentiated exponential [19], Marshall-Olkin exponential Weibull [10], Marshall-Olkin generalized exponential [5], and exponentiated moment exponential [11] distributions. A random variable X is said to have a length biased exponential distribution with parameter \beta if its probability density function (pdf) and cumulative distribution function (cdf) is given by equation (1) and (2) respectively [12]:
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