Advancing Bayesian Inference: Fitting Type I Half-logistic Nadarajah-Haghighi Distribution and its Comparison with Related Distributions for Censored Survival Data
Devashish Devashish, Mohammad Parvej, Athar Ali Khan
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引用次数: 0
Abstract
In recent years, the field of Bayesian modeling of generalized distributions has garnered substantial attention. This surge in interest can be attributed to the remarkable strides made in computational capabilities and the enhanced accessibility of sophisticated software tools. This study aims to apply Bayesian inference methods to the Type I Half-logistic Nadarajah- Haghighi model and compares it with the Exponential model and the Type I Half-logistic Exponential model. These distributions are analyzed and fitted to censored survival data using the probabilistic programming language STAN. To incorporate censored mechanisms within the STAN framework, customized codes are developed. The models are then compared using fully Bayesian model selection methods.. KEYWORDS :Censored data, Nadarajah-Haghighi distribution, Type I half-logistic family, LOOIC, WAIC, STAN.
推进贝叶斯推理:拟合 I 型半对数 Nadarajah-Haghighi 分布及其与剔除存活数据的相关分布的比较
近年来,广义分布的贝叶斯建模领域备受关注。这种兴趣的激增可归因于计算能力的长足进步和复杂软件工具的更易获取性。本研究旨在将贝叶斯推理方法应用于 I 型半对数 Nadarajah- Haghighi 模型,并将其与指数模型和 I 型半对数指数模型进行比较。使用概率编程语言 STAN 对这些分布进行了分析,并将其拟合到有删减的生存数据中。为了在 STAN 框架内纳入删减机制,开发了定制代码。然后使用完全贝叶斯模型选择方法对模型进行比较。关键词 :有删减数据、Nadarajah-Haghighi 分布、I 型半逻辑族、LOOIC、WAIC、STAN。