Title of article :
Approximating Bayes Estimates by Means of the Tierney Kadane, Importance Sampling and Metropolis-Hastings within Gibbs Methods in the Poisson-Exponential Distribution: A Comparative Study
Author/Authors :
Bastan, Firozeh University of Mazandaran , Taghi Kamel Mirmostafaee, Seyyed Mohamad University of Mazandaran
Abstract :
Here, we work on the problem of point estimation of the parameters of the Poisson-exponential distribution through the Bayesian and maximum likelihood methods based on complete samples. The point Bayes estimates under the symmetric squared error loss (SEL) function are approximated using three methods, namely the Tierney Kadane approximation method, the importance sampling method and the Metropolis-Hastings within Gibbs algorithm. The interval estimators are also obtained. The performance of the point and interval estimators are compared with each other by means of a Monte Carlo simulation. Several conclusions are given at the end.
Keywords :
Tierney Kadane approximation , Bayesian inference , Importance sampling method , Metropolis-Hastings within Gibbs algorithm , Monte Carlo simulation , Poisson-exponential distribution
Journal title :
Iranian Journal of Operations Research (IJOR)