Specifying prior distributions in reliability applications

Author:

Tian Qinglong1,Lewis‐Beck Colin2,Niemi Jarad B.3,Meeker William Q.3

Affiliation:

1. Department of Statistics and Actuarial Science University of Waterloo Waterloo Canada

2. Customer Behavior Analytics Amazon.com Inc. Seattle USA

3. Department of Statistics Iowa State University Ames Iowa USA

Abstract

Especially when facing reliability data with limited information (e.g., a small number of failures), there are strong motivations for using Bayesian inference methods. These include the option to use information from physics‐of‐failure or previous experience with a failure mode in a particular material to specify an informative prior distribution. Another advantage is the ability to make statistical inferences without having to rely on specious (when the number of failures is small) asymptotic theory needed to justify non‐Bayesian methods. Users of non‐Bayesian methods are faced with multiple methods of constructing uncertainty intervals (Wald, likelihood, and various bootstrap methods) that can give substantially different answers when there is little information in the data. For Bayesian inference, there is only one method of constructing equal‐tail credible intervals—but it is necessary to provide a prior distribution to fully specify the model. Much work has been done to find default prior distributions that will provide inference methods with good (and in some cases exact) frequentist coverage properties. This paper reviews some of this work and provides, evaluates, and illustrates principled extensions and adaptations of these methods to the practical realities of reliability data (e.g., non‐trivial censoring).

Publisher

Wiley

Subject

Management Science and Operations Research,General Business, Management and Accounting,Modeling and Simulation

Reference49 articles.

1. Weibull Analysis Handbook

2. OlwellDH SorellAA.Warranty calculations for missiles with only current‐status data using Bayesian methods.Proceedings of the Annual Reliability and Maintainability Symposium IEEE;2001:133–138.

3. Using Accelerated Life Tests Results to Predict Product Field Reliability

4. Bayesian Reliability

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