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arxiv: 1804.06466 · v1 · pith:GYU5UIIQnew · submitted 2018-04-17 · 📊 stat.AP

Objective Bayesian Inference for Repairable System Subject to Competing Risks

classification 📊 stat.AP
keywords failurebayesiancompetingconsistentmodesobjectivepropertiesrepairable
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Competing risks models for a repairable system subject to several failure modes are discussed. Under minimal repair, it is assumed that each failure mode has a power law intensity. An orthogonal reparametrization is used to obtain an objective Bayesian prior which is invariant under relabelling of the failure modes. The resulting posterior is a product of gamma distributions and has appealing properties: one-to-one invariance, consistent marginalization and consistent sampling properties. Moreover, the resulting Bayes estimators have closed-form expressions and are naturally unbiased for all the parameters of the model. The methodology is applied in the analysis of (i) a previously unpublished dataset about recurrent failure history of a sugarcane harvester and (ii) records of automotive warranty claims introduced in [1]. A simulation study was carried out to study the efficiency of the methods proposed.

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