Statistical Analysis of Location Parameter of Inverse Gaussian Distribution Under Noninformative Priors
Journal: Journal of Quantitative Methods (Vol.3, No. 2)Publication Date: 2019-08-31
Authors : Nida Khan; Muhammad Aslam;
Page : 62-76
Keywords : Bayesian estimation; noninformative prior; Jeffreys prior; loss function; Bayes estimator; Bayes risk; simulation study;
Abstract
Bayesian estimation for location parameter of the inverse Gaussian distribution is presented in this paper. Noninformative priors (Uniform and Jeffreys) are assumed to be the prior distributions for the location parameter as the shape parameter of the distribution is considered to be known. Four loss functions: Squared error, Trigonometric, Squared logarithmic and Linex are used for estimation. Bayes risks are obtained to find the best Bayes estimator through simulation study and real life data.
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Last modified: 2019-10-14 14:52:01