具有基线韦布尔分布的修正拉莫斯-卢萨达-G 族:属性、特征、回归与应用

IF 2.7 Q2 MULTIDISCIPLINARY SCIENCES
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引用次数: 0

摘要

论文介绍了一个新的分布系列,称为库马拉斯瓦米-拉莫斯-卢扎达-G(KumRL-G)类,重点是五参数库马拉斯瓦米-拉莫斯-卢扎达-威布尔(KumRLW)分布。这个新的分布系列包括现有的和许多新的子模型,为生存数据建模和分析提供了更高的灵活性和准确性。研究人员推导出了该分布的主要统计特性,包括量化函数、矩和熵度量,并根据两个截断矩的比值和危险率函数对其特性进行了描述。采用最大似然估计法(MLE)来估计拟议概率分布的参数,并进行蒙特卡罗模拟分析以证明该方法的有效性。通过应用加纳、尼日利亚和加拿大男性队列数据集的 COVID-19 和 65 岁存活率,揭示了新分布族的意义和适应性。随后,根据新的 KumRLW 分布建立了一个新的地点尺度回归模型。利用加纳高血压生存数据,以性别作为协变量,证明了该模型的实用性。回归分析表明,性别是影响高血压发病时间长短的一个重要因素。带有基线 Weibull 分布的新 KumRL-G 系列在模拟生存数据集的各种形状和行为方面提供了更大的灵活性和更好的拟合度,超过了其现有的子模型和其他著名分布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modified Ramos-Louzada-G family with baseline Weibull distribution: Properties, characterizations, regression, and applications

The paper introduced a novel family of distributions, called the Kumaraswamy Ramos-Louzada-G (KumRL-G) class, focusing on the five-parameter Kumaraswamy Ramos-Louzada Weibull (KumRLW) distribution. This new family of distributions, which includes existing and numerous new sub-models, offers improved flexibility and accuracy in modeling and analyzing survival data. Key statistical properties, including quantile function, moments, and entropy measures underlying the distribution have been derived, and characterizations have also been provided based on the ratio of two truncated moments and the hazard rate function. The maximum likelihood estimation (MLE) is employed to estimate the parameters of the proposed probability distribution, and Monte Carlo simulation analysis is performed to demonstrate the effectiveness of this method. The significance and adaptability of the new family of distributions are revealed through applications to COVID-19 and survival rate to age 65 of male cohort datasets from Ghana, Nigeria, and Canada. A new location-scale regression model was subsequently formulated from the new KumRLW distribution. Its practicality was demonstrated using survival data on hypertension from Ghana with gender as a covariate. The regression analysis showed that gender is a significant factor in the length of time before hypertension develops. The new KumRL-G family with baseline Weibull distributions provides more flexibility and improved fit in modeling various shapes and behaviors in the survival datasets surpassing its existing sub-models and other notable distributions.

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来源期刊
Scientific African
Scientific African Multidisciplinary-Multidisciplinary
CiteScore
5.60
自引率
3.40%
发文量
332
审稿时长
10 weeks
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