Department of Mathematics, Faculty of Science, Tanta University, Tanta, Egypt.
PLoS One. 2024 Aug 5;19(8):e0308094. doi: 10.1371/journal.pone.0308094. eCollection 2024.
This article suggests a new method to expand a family of life distributions by adding a parameter to the family, increasing its flexibility. It is called the extended Modi-G family of distributions. We derived the general statistical properties of the proposed family. Different methods of estimation were presented to estimate the parameters for the proposed family, such as maximum likelihood, ordinary least square, weighted least square, Anderson Darling, right-tailed Anderson-Darling, Cramér-von Mises, and maximum product of spacing methods. A special sub-model with three parameters called extended Modi exponential distribution was derived along with different shapes of its density and hazard functions. Randomly generated data sets and different estimation methods were used to illustrate the behavior of parameters of the proposal sub-model. To illustrate the importance of the proposed family over the other well-known methods, applications to medicine and geology data sets were analyzed.
本文提出了一种通过向家族中添加一个参数来扩展生命分布家族的新方法,从而提高其灵活性。它被称为扩展的 Modi-G 分布家族。我们推导出了所提出家族的一般统计性质。提出了不同的估计方法来估计所提出家族的参数,例如最大似然法、普通最小二乘法、加权最小二乘法、Anderson-Darling 法、右尾 Anderson-Darling 法、Cramér-von Mises 法和最大间隔乘积法。还推导了一个具有三个参数的特殊子模型,称为扩展 Modi 指数分布,并给出了其密度和风险函数的不同形状。使用随机生成的数据集和不同的估计方法来说明建议子模型参数的行为。为了说明所提出的家族相对于其他著名方法的重要性,对医学和地质数据集进行了分析。