Variational Bayesian Inference for Exponentiated Weibull Right Censored Survival Data

Jibril Abubakar, Mohd Asrul Affendi Abdullah, O. Olaniran
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Abstract

The exponential, Weibull, log-logistic and lognormal distributions represent the class of light and heavy-tailed distributions that are often used in modelling time-to-event data. The exponential distribution is often applied if the hazard is constant, while the log-logistic and lognormal distributions are mainly used for modelling unimodal hazard functions. The Weibull distribution is on the other hand well-known for modelling monotonic hazard rates. Recently, in practice, survival data often exhibit both monotone and non-monotone hazards. This gap has necessitated the introduction of Exponentiated Weibull Distribution (EWD) that can accommodate both monotonic and non-monotonic hazard functions. It also has the strength of adapting unimodal functions with bathtub shape. Estimating the parameter of EWD distribution poses another problem as the flexibility calls for the introduction of an additional parameter. Parameter estimation using the maximum likelihood approach has no closed-form solution, and thus, approximation techniques such as Newton-Raphson is often used. Therefore, in this paper, we introduce another estimation technique called Variational Bayesian (VB) approach. We considered the case of the accelerated failure time (AFT) regression model with covariates. The AFT model was developed using two comparative studies based on real-life and simulated data sets. The results from the experiments reveal that the Variational Bayesian (VB) approach is better than the competing Metropolis-Hasting Algorithm and the reference maximum likelihood estimates.
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指数Weibull Right - censorship生存数据的变分贝叶斯推理
指数分布、威布尔分布、对数逻辑分布和对数正态分布代表了轻尾分布和重尾分布的类别,这些分布通常用于建模时间到事件数据。当风险为常数时,通常采用指数分布,而单峰风险函数的建模主要采用对数逻辑分布和对数正态分布。另一方面,威布尔分布以模拟单调危险率而闻名。最近,在实践中,生存数据经常显示出单调和非单调的危害。这种差距使得指数威布尔分布(EWD)的引入成为必要,它可以容纳单调和非单调的危害函数。它还具有与浴缸形状相适应的单峰函数的优势。对EWD分布参数的估计提出了另一个问题,因为灵活性要求引入额外的参数。使用最大似然方法的参数估计没有封闭形式的解,因此,经常使用近似技术,如牛顿-拉夫森。因此,在本文中,我们引入了另一种估计技术——变分贝叶斯(VB)方法。我们考虑了带有协变量的加速失效时间(AFT)回归模型的情况。AFT模型是通过基于真实数据集和模拟数据集的两项比较研究开发的。实验结果表明,变分贝叶斯(VB)方法优于与之竞争的Metropolis-Hasting算法和参考极大似然估计。
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