A robust Bayesian approach to modelling epistemic uncertainty in common-cause failure models
Matthias C. M. Troffaes, Gero Walter, Dana Kelly

TL;DR
This paper introduces a robust Bayesian method using imprecise probabilities to model epistemic uncertainty in common-cause failure models, providing more cautious estimates and sensitivity analysis.
Contribution
It adapts Walley's imprecise Dirichlet model to alpha-factors and combines it with Gamma priors for comprehensive uncertainty modeling.
Findings
Imprecise Dirichlet model offers cautious alpha-factor estimates.
Gamma priors effectively model failure rate uncertainty.
Combined approach enables full sensitivity analysis of failure rates.
Abstract
In a standard Bayesian approach to the alpha-factor model for common-cause failure, a precise Dirichlet prior distribution models epistemic uncertainty in the alpha-factors. This Dirichlet prior is then updated with observed data to obtain a posterior distribution, which forms the basis for further inferences. In this paper, we adapt the imprecise Dirichlet model of Walley to represent epistemic uncertainty in the alpha-factors. In this approach, epistemic uncertainty is expressed more cautiously via lower and upper expectations for each alpha-factor, along with a learning parameter which determines how quickly the model learns from observed data. For this application, we focus on elicitation of the learning parameter, and find that values in the range of 1 to 10 seem reasonable. The approach is compared with Kelly and Atwood's minimally informative Dirichlet prior for the…
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