Discussion of specifying prior distributions in reliability applications

IF 1.3 4区 数学 Q3 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Applied Stochastic Models in Business and Industry Pub Date : 2023-07-04 DOI:10.1002/asmb.2795
Simon Wilson
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Abstract

This is a thorough review of approaches to prior elicitation in reliability and includes some extensive illustrations of the approaches. For me, this article is both a very useful reference document and can act as a good primer for new students in the reliability field who would like to understand better how prior elicitation can be undertaken in reliability applications.

The focus is largely on uninformative priors and the various approaches in which the idea of lack of background information about a parameter can be realised. Since statistical reliability largely uses probability models with few (2 or 3 is typical) parameters that are common across many fields of application, it is not surprising that these are the approaches that we see generally in the Bayesian literature when trying to specify a lack of background information.

The various problems with non-informative priors are well known. For the case of a ‘random sample’ of data to be analysed, the noninformative prior methods of this paper will tend to work well and more specifically in the small data case that is emphasised. However, it should be noted that they can start to work in misleading ways in more complex data situations which one can see in reliability settings. For example, in hierarchical models, non-informative parameters on scale parameters can lead to inferences that describe the data as entirely noise.1 Model comparison, for example using Bayes factors, can also be problematic.2 In these cases, as the authors point out, priors that avoid assigning belief to implausible values become important.

No doubt a separate paper can be written on prior specification under these more complex models, and the pitfalls therein. I thank the authors for bringing together a comprehensive study of prior elicitation in reliability applications.

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关于在可靠性应用中指定先验分布的讨论
这是对可靠性先验激发方法的全面综述,其中包括一些广泛的方法说明。对我来说,这篇文章既是一份非常有用的参考文献,也可以作为可靠性领域新生的入门读物,帮助他们更好地理解如何在可靠性应用中进行先验激发。文章的重点主要是非信息先验和各种方法,通过这些方法可以实现缺乏参数背景信息的想法。由于统计可靠性主要使用参数较少(通常为 2 或 3 个)的概率模型,而这些参数在许多应用领域中都很常见,因此在贝叶斯文献中,当我们试图说明缺乏背景信息时,这些方法也就不足为奇了。对于需要分析的 "随机样本 "数据而言,本文的非信息先验方法往往能很好地发挥作用,尤其是在本文强调的小数据情况下。不过,需要注意的是,在数据较为复杂的情况下,非信息先验方法可能会产生误导作用,这在可靠性设置中也能看到。例如,在层次模型中,尺度参数上的非信息参数可能会导致将数据完全描述为噪声的推论1 。感谢作者对可靠性应用中的先验激发进行了全面的研究。
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来源期刊
CiteScore
2.70
自引率
0.00%
发文量
67
审稿时长
>12 weeks
期刊介绍: ASMBI - Applied Stochastic Models in Business and Industry (formerly Applied Stochastic Models and Data Analysis) was first published in 1985, publishing contributions in the interface between stochastic modelling, data analysis and their applications in business, finance, insurance, management and production. In 2007 ASMBI became the official journal of the International Society for Business and Industrial Statistics (www.isbis.org). The main objective is to publish papers, both technical and practical, presenting new results which solve real-life problems or have great potential in doing so. Mathematical rigour, innovative stochastic modelling and sound applications are the key ingredients of papers to be published, after a very selective review process. The journal is very open to new ideas, like Data Science and Big Data stemming from problems in business and industry or uncertainty quantification in engineering, as well as more traditional ones, like reliability, quality control, design of experiments, managerial processes, supply chains and inventories, insurance, econometrics, financial modelling (provided the papers are related to real problems). The journal is interested also in papers addressing the effects of business and industrial decisions on the environment, healthcare, social life. State-of-the art computational methods are very welcome as well, when combined with sound applications and innovative models.
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