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Bayesian and Classical Inference for the Generalized Log-Logistic Distribution with Applications to Survival Data

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dc.contributor.author Abdisalam Hassan Muse
dc.contributor.author Samuel Mwalili
dc.contributor.author Oscar Ngesa
dc.contributor.author Saad J. Almalki
dc.contributor.author Gamal A. Abd-Elmougod
dc.date.accessioned 2025-03-06T06:54:02Z
dc.date.available 2025-03-06T06:54:02Z
dc.date.issued 2021-10
dc.identifier.uri http://ir.ttu.ac.ke/xmlui/handle/123456789/115
dc.description.abstract e 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. 'e 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. 'is 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. 'e 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 en_US
dc.language.iso en en_US
dc.publisher Hindawi Computational Intelligence and Neuroscience en_US
dc.title Bayesian and Classical Inference for the Generalized Log-Logistic Distribution with Applications to Survival Data en_US
dc.type Article en_US


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