Litcius/Paper detail

Inference for two‐parameter Rayleigh competing risks data under generalized progressive hybrid censoring

Devendra Singh, Chandrakant Lodhi, Yogesh Mani Tripathi, Liang Wang

2020Quality and Reliability Engineering International16 citationsDOI

Abstract

Abstract In this paper, a competing risks model based on the generalized progressive hybrid censored two‐parameter Rayleigh distributions is studied under the assumption that the lifetime distributions of failure causes are identically distributed with same location and different scale parameters. We obtain maximum likelihood estimates of unknown parameters with associated existence uniqueness. The approximate confidence intervals are constructed using the asymptotic distribution of maximum likelihood estimates via the observed information matrix. Further, Bayes point estimates and the highest probability density credible intervals of unknown parameters are presented, and the Gibbs sampling technique is used to approximate corresponding estimates. A Monte Carlo simulation study is conducted to compare the accuracy of proposed estimates. Finally, a real‐life example is presented for illustration purpose.

Topics & Concepts

Censoring (clinical trials)MathematicsStatisticsFisher informationBayes' theoremGibbs samplingScale parameterRayleigh distributionInferenceMonte Carlo methodApplied mathematicsIndependent and identically distributed random variablesImportance samplingConfidence intervalPoint estimationBayesian probabilityProbability density functionComputer scienceRandom variableArtificial intelligenceStatistical Distribution Estimation and ApplicationsStatistical Methods and Bayesian InferenceStatistical Methods and Inference