广义logistic分布及其回归模型

Q2 Mathematics
Mohammad A. Aljarrah, Felix Famoye, Carl Lee
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引用次数: 7

摘要

定义了一种新的广义非对称logistic分布。在某些情况下,现有的三个参数分布对重尾数据集的拟合效果较差。所提出的新分布仅由三个参数组成,与各种现有分布相比,它被证明适合更大范围的重左尾和右尾数据。新的广义分布以logistic、极大和极小甘贝尔分布为子模型。研究了新分布的一些性质,包括模态、偏度、峰度、危险函数和矩。我们提出了极大似然方法来估计参数,并评估了该方法的有限样本量性能。提出了一种基于新分布的广义逻辑回归模型。logistic -log-logistic回归、威布尔极值回归和log- frsamchet回归是广义逻辑回归模型的特殊情况。应用该模型拟合了一种新型绝缘技术的失效时间和心脏移植的存活研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generalized logistic distribution and its regression model
A new generalized asymmetric logistic distribution is defined. In some cases, existing three parameter distributions provide poor fit to heavy tailed data sets. The proposed new distribution consists of only three parameters and is shown to fit a much wider range of heavy left and right tailed data when compared with various existing distributions. The new generalized distribution has logistic, maximum and minimum Gumbel distributions as sub-models. Some properties of the new distribution including mode, skewness, kurtosis, hazard function, and moments are studied. We propose the method of maximum likelihood to estimate the parameters and assess the finite sample size performance of the method. A generalized logistic regression model, based on the new distribution, is presented. Logistic-log-logistic regression, Weibull-extreme value regression and log-Fréchet regression are special cases of the generalized logistic regression model. The model is applied to fit failure time of a new insulation technique and the survival of a heart transplant study.
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来源期刊
Journal of Statistical Distributions and Applications
Journal of Statistical Distributions and Applications Decision Sciences-Statistics, Probability and Uncertainty
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