关于矩还是似然模型参数的信息?鸡和蛋的问题

IF 1.3 4区 数学 Q3 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Omid M. Ardakani, Majid Asadi, Ehsan S. Soofi
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引用次数: 0

摘要

本文比较了两种相互竞争的贝叶斯方法的样本信息内容。一种方法遵循丹尼斯·林德利的贝叶斯观点,即首先为与问题相关的参数制定一个先验,并包含向后验过渡的可能性。这与通常的贝叶斯方法形成对比,在贝叶斯方法中,人们从似然模型开始,为其参数制定先验分布,并推导相应的后验。在这两种情况下,样本信息含量是使用先验和后验熵之间的差异来测量的。我们在学习变量矩的背景下研究这种对比。利用最大熵原理构造与给定矩参数一致的似然模型。然后将该似然模型与参数的先验信息相结合,得出后验。模型参数为矩约束的拉格朗日乘子。矩的先验可以推导出模型参数的先验;然而,数据提供了不同数量的关于它们的信息。对几个问题的结果表明,使用这两种公式得到的信息量有很大的不同。衍生出附加的信息度量来评估操作环境对系统组件寿命的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Information About the Moments or the Likelihood Model Parameters? A Chicken and Egg Problem

This article compares the information content of a sample for two competing Bayesian approaches. One approach follows Dennis Lindley's Bayesian standpoint, where one begins by formulating a prior for a parameter related to the problem in question and incorporates a likelihood to transition to a posterior. This contrasts with the usual Bayesian approach, where one starts with a likelihood model, formulates a prior distribution for its parameters, and derives the corresponding posterior. In both cases, the sample information content is measured using the difference between the prior and posterior entropies. We investigate this contrast in the context of learning about the moments of a variable. The maximum entropy principle is used to construct the likelihood model consistent with the given moment parameters. This likelihood model is then combined with the prior information on the parameters to derive the posterior. The model parameters are the Lagrange multipliers for the moment constraints. A prior for the moments induces a prior for the model parameters; however, the data provides differing amounts of information about them. The results obtained for several problems show that the information content using the two formulations can differ significantly. Additional information measures are derived to assess the effects of operating environments on the lifetimes of system components.

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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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