Department of Mathematics (Statistics Option) Programme, Pan African University, Institute for Basic Science, Technology and Innovation (PAUSTI), Nairobi 6200-00200, Kenya.
Department of Statistics and Actuarial Sciences, Jomo Kenyatta University of Agriculture and Technology (JKUAT), Nairobi 6200-00200, Kenya.
Comput Intell Neurosci. 2021 Oct 11;2021:5820435. doi: 10.1155/2021/5820435. eCollection 2021.
The generalized log-logistic distribution is especially useful for modelling survival data with variable hazard rate shapes because it extends the log-logistic distribution by adding an extra parameter to the classical distribution, resulting in greater flexibility in analyzing and modelling various data types. We derive the fundamental mathematical and statistical properties of the proposed distribution in this paper. Many well-known lifetime special submodels are included in the proposed distribution, including the Weibull, log-logistic, exponential, and Burr XII distributions. The maximum likelihood method was used to estimate the unknown parameters of the proposed distribution, and a Monte Carlo simulation study was run to assess the estimators' performance. This distribution is significant because it can model both monotone and nonmonotone hazard rate functions, which are quite common in survival and reliability data analysis. Furthermore, the proposed distribution's flexibility and usefulness are demonstrated in a real-world data set and compared to its submodels, the Weibull, log-logistic, and Burr XII distributions, as well as other three-parameter parametric survival distributions, such as the exponentiated Weibull distribution, the three-parameter log-normal distribution, the three-parameter (or the shifted) log-logistic distribution, the three-parameter gamma distribution, and an exponentiated Weibull distribution. The proposed distribution is plausible, according to the goodness-of-fit, log-likelihood, and information criterion values. Finally, for the data set, Bayesian inference and Gibb's sampling performance are used to compute the approximate Bayes estimates as well as the highest posterior density credible intervals, and the convergence diagnostic techniques based on Markov chain Monte Carlo techniques were used.
广义对数逻辑分布特别适用于建模具有可变风险率形状的生存数据,因为它通过向经典分布添加一个额外的参数来扩展对数逻辑分布,从而在分析和建模各种数据类型方面具有更大的灵活性。本文推导出了所提出分布的基本数学和统计性质。所提出的分布包括许多著名的寿命特殊子模型,包括威布尔分布、对数逻辑分布、指数分布和 Burr XII 分布。使用最大似然法估计所提出分布的未知参数,并进行了蒙特卡罗模拟研究以评估估计器的性能。该分布很重要,因为它可以对单调和非单调风险率函数进行建模,这在生存和可靠性数据分析中很常见。此外,在实际数据集和与子模型的比较中,展示了所提出分布的灵活性和有用性,子模型包括威布尔分布、对数逻辑分布和 Burr XII 分布,以及其他三个参数参数生存分布,例如指数 Weibull 分布、三参数对数正态分布、三参数(或移位)对数逻辑分布、三参数伽马分布和指数 Weibull 分布。根据拟合优度、对数似然和信息准则值,该分布是合理的。最后,对于数据集,使用贝叶斯推断和吉布斯抽样性能来计算近似贝叶斯估计值和最高后验密度可信区间,并使用基于马尔可夫链蒙特卡罗技术的收敛诊断技术。