M. Kamal, M. Alsolmi, Nayabuddin, Aned Al Mutairi, Eslam Hussam, M. Mustafa, S. G. Nassr
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引用次数: 0
Abstract
This paper introduces the generalized exponential-$ U $ family of distributions as a novel methodological approach to enhance the distributional flexibility of existing classical and modified distributions. The new family is derived by combining the T-$ X $ family method with the exponential model. The paper presents the generalized exponential-Weibull model, an updated version of the Weibull model. Estimators and heavy-tailed characteristics of the proposed method are derived. The new model is applied to three healthcare data sets, including COVID-19 patient survival times and mortality rate data set from Mexico and Holland. The proposed model outperforms other models in terms of analyzing healthcare data sets by evaluating the best model selection measures. The findings suggest that the proposed model holds promise for broader utilization in the area of predicting and modeling healthcare phenomena.
本文介绍了广义指数-$ U $分布族,作为一种新的方法来提高现有经典分布和修正分布的分布灵活性。将T-$ X $族方法与指数模型相结合,得到了新的族。本文提出了广义指数威布尔模型,这是威布尔模型的更新版本。推导了该方法的估计量和重尾特性。新模型应用于三个医疗保健数据集,包括墨西哥和荷兰的COVID-19患者生存时间和死亡率数据集。通过评估最佳模型选择度量,所提出的模型在分析医疗数据集方面优于其他模型。研究结果表明,该模型有望在医疗保健现象的预测和建模领域得到更广泛的应用。
期刊介绍:
NHM offers a strong combination of three features: Interdisciplinary character, specific focus, and deep mathematical content. Also, the journal aims to create a link between the discrete and the continuous communities, which distinguishes it from other journals with strong PDE orientation.
NHM publishes original contributions of high quality in networks, heterogeneous media and related fields. NHM is thus devoted to research work on complex media arising in mathematical, physical, engineering, socio-economical and bio-medical problems.