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A Comparison of Two Sequential Metropolis-Hastings Algorithms with Standard Simulation Techniques in Bayesian Inference in Reliability Models Involving a Generalized Gamma Distribution

机译:基于广义伽玛分布的可靠性模型中贝叶斯推理中两种标准Metropolis-Hastings算法与标准模拟技术的比较

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In this paper we consider the generalized gamma distribution as introduced in Gasemyr and Natvig (1998). This distribution enters naturally in Bayesian inference in exponential survival models with left censoring. In the paper mentioned above it is shown that the weighted sum of products of generalized gamma distributions is a conjugate prior for the parameters of component lifetimes, having autopsy data in a Marshall-Olkin shock model. A corresponding result is shown in Gasemyr and Natvig (1999) for independent, exponentially distributed component lifetimes in a model with partial monitoring of components with applications to preventive system maintenance. A discussion in the present paper strongly indicates that expressing the posterior distribution in terms of the generalized gamma distribution is computationally efficient compared to using the ordinary gamma distribution in such models. Furthermore, we present two types of sequential Metropolis-Hastings algorithms that may be used in Bayesian inference in situations where exact methods are intractable. Finally these types of algorithms are compared with standard simulation techniques and analytical results in arriving at the posterior distribution of the parameters of component lifetimes in special cases of the mentioned models. It seems that one of these types of algorithms may be very favorable when prior assessments are updated by several data sets and when there are significant discrepancies between the prior assessments and the data.
机译:在本文中,我们考虑了Gasemyr和Natvig(1998)中引入的广义伽马分布。在具有左删失的指数生存模型中,该分布自然地进入了贝叶斯推断。在上面提到的论文中,表明了在具有部件寿命的参数之前,广义伽马分布的乘积的加权和是共轭的,在Marshall-Olkin休克模型中具有尸检数据。在Gasemyr和Natvig(1999)中显示了一个相应的结果,该模型在模型中具有独立的,指数分布的组件寿命,该模型具有对组件的部分监视以及在预防性系统维护中的应用。本文中的讨论有力地表明,与在这种模型中使用普通伽玛分布相比,用广义伽玛分布来表示后验分布在计算上是有效的。此外,我们提出了两种类型的顺序Metropolis-Hastings算法,这些方法可用于在精确方法难以解决的情况下进行贝叶斯推理。最后,将这些类型的算法与标准仿真技术和分析结果进行比较,以得出在上述模型的特殊情况下组件寿命参数的后验分布。当先前的评估由多个数据集更新并且先前的评估与数据之间存在显着差异时,这些类型的算法中的一种似乎是非常有利的。

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