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Inference for Log-Gamma Distribution Based on Progressively Type-II Censored Data
33
Citations
29
References
2006
Year
Profile Likelihood ApproachEm AlgorithmParameter EstimationDensity EstimationEngineeringLog-gamma DistributionEstimation StatisticBiostatisticsStatistical InferenceProbability TheoryBayesian MethodsModified Em AlgorithmPublic HealthEstimation TheoryMathematical StatisticStatistical ModelingStatistics
Abstract We discuss the maximum likelihood estimates (MLEs) of the parameters of the log-gamma distribution based on progressively Type-II censored samples. We use the profile likelihood approach to tackle the problem of the estimation of the shape parameter κ. We derive approximate maximum likelihood estimators of the parameters μ and σ and use them as initial values in the determination of the MLEs through the Newton–Raphson method. Next, we discuss the EM algorithm and propose a modified EM algorithm for the determination of the MLEs. A simulation study is conducted to evaluate the bias and mean square error of these estimators and examine their behavior as the progressive censoring scheme and the shape parameter vary. We also discuss the interval estimation of the parameters μ and σ and show that the intervals based on the asymptotic normality of MLEs have very poor probability coverages for small values of m. Finally, we present two examples to illustrate all the methods of inference discussed in this paper. Keywords: Approximate maximum likelihood estimatorsEM algorithmExtreme value distributionFisher informationFixed-point iterationMaximum likelihood estimatorsModified EM algorithmMonte Carlo simulationsNewton–Raphson methodNormal distributionPivotal quantitiesProbability coveragesMathematics Subject Classification: 62F1065C05
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