新生成的分布族:统计属性和实际数据的应用

IF 0.9 Q3 MATHEMATICS, APPLIED
John Kwadey Okutu, Nana K. Frempong, Simon K. Appiah, Atinuke O. Adebanji
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引用次数: 0

摘要

可以使用几种标准分布对生命周期数据进行建模。然而,许多来自不同领域的数据集,如工程、金融、环境、生物科学和其他领域,可能不符合标准分布。因此,有必要开发包含高度偏度和峰度的新分布,同时提高经验分布的拟合优度。本文采用T-X方法,提出了一种新的柔性生成族——Ramos-Louzada生成器(RL-G),该生成器具有分位数函数、原始矩、不完全矩、不等式测度、熵、均值和中位数偏差以及可靠性参数等相关统计特性。RL-G系列具有对“右”、“左”和“对称”数据以及不同形状的危害函数建模的能力。利用极大似然估计(MLE)方法估计了RL-G的参数。通过仿真分析评估了该方法的渐近性能。最后,通过对降雨、碳纤维断裂应力和高血压患者生存时间三个真实完整数据集的应用,证明了RL-G家族的灵活性,并且RL-Weibull作为RL-G家族的特殊情况,明显优于其子模型和其他分布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Generated Family of Distributions: Statistical Properties and Applications with Real-Life Data
Several standard distributions can be used to model lifetime data. Nevertheless, a number of these datasets from diverse fields such as engineering, finance, the environment, biological sciences, and others may not fit the standard distributions. As a result, there is a need to develop new distributions that incorporate a high degree of skewness and kurtosis while improving the degree of goodness-of-fit in empirical distributions. In this study, by applying the T-X method, we proposed a new flexible generated family, the Ramos-Louzada Generator (RL-G) with some relevant statistical properties such as quantile function, raw moments, incomplete moments, measures of inequality, entropy, mean and median deviations, and the reliability parameter. The RL-G family has the ability to model “right,” “left,” and “symmetric” data as well as different shapes of the hazard function. The maximum likelihood estimation (MLE) method has been used to estimate the parameters of the RL-G. The asymptotic performance of the MLE is assessed by simulation analysis. Finally, the flexibility of the RL-G family is demonstrated through the application of three real complete datasets from rainfall, breaking stress of carbon fibers, and survival times of hypertension patients, and it is evident that the RL-Weibull, which is a special case of the RL-G family, outperformed its submodels and other distributions.
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CiteScore
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