The lomax Bayesian estimation under a logarithm loss function

Author(s):  
Awatif Rezzoky Al-Dubaicy ◽  
Nada Sabah Karam
1988 ◽  
Vol 37 (3-4) ◽  
pp. 227-231 ◽  
Author(s):  
Samir K. Bhattacharya ◽  
Ravindar K. Tyagi

Beyesian reliebility estimation for the exponential model. based on life tests that are terminated after a preassigned number of failures, is carried out under the assumption of the squared error loss function and a truncated normal priod density on the parameter space. The Bayesian estimation of reliability for the case of ‘attribute life testing’ is also discussed.


1988 ◽  
Vol 37 (1-2) ◽  
pp. 41-46
Author(s):  
Sudhakar Kunte ◽  
R.N. Rattihalli

This article deals with the problem of finding the set predictor for a random vector where the choice of sets considered is restricted to a class of se ts which arc linear translates of a symmetric convex set. The loss function considered is a linear functi on of some measure of the size of the set and the distance of the set from the actual observed value. The prediction distribution considered is also symmetric. The result s are directly applicable to solve the correspoading Bayesian estimation problem,


Author(s):  
M. A. Hegazy ◽  
R. E. Abd El-Kader ◽  
A. A. El-Helbawy ◽  
G. R. Al-Dayian

In this paper, Bayesian inference is used to estimate the parameters, survival, hazard and alternative hazard rate functions of discrete Gompertz distribution. The Bayes estimators are derived under squared error loss function as a symmetric loss function and linear exponential loss function as an asymmetric loss function. Credible intervals for the parameters, survival, hazard and alternative hazard rate functions are obtained. Bayesian prediction (point and interval) for future observations of discrete Gompertz distribution based on two-sample prediction are investigated. A numerical illustration is carried out to investigate the precision of the theoretical results of the Bayesian estimation and prediction on the basis of simulated and real data. Regarding the results of simulation seems to perform better when the sample size increases and the level of censoring decreases. Also, in most cases the results under the linear exponential loss function is better than the corresponding results under squared error loss function. Two real lifetime data sets are used to insure the simulated results.


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