Title of article :
Investigating the impact of simple and mixture priors on estimating sensitive proportion through a general class of randomized response models
Author/Authors :
Abid, M. Department of Statistics - Government College University, Faisalabad, Pakistan , Naeem, A. Government Degree College for Women, Samanabad, Faisalabad, Pakistan , Hussain, Z. Department of Statistics - Quaid-i-Azam University, Islamabad, Pakistan , Riaz, M. Department of Mathematics and Statistics - King Fahad University of Petroleum and Minerals, Dhahran, Saudi Arabia , Tahir, M. Department of Statistics - Government College University, Faisalabad, Pakistan
Abstract :
Randomized response is an eective survey method to collect subtle
information. It facilitates responding to over-sensitive issues and defensive questions (such
as criminal behavior, gambling habits, drug addictions, abortions, etc.) while maintaining
condentiality. In this paper, we conducted a Bayesian analysis of a general class of
randomized response models by using dierent prior distributions, such as Beta, Uniform,
Jereys, and Haldane, under squared error loss, and precautionary and DeGroot loss
functions. We have also expanded our proposal to the case of mixture of Beta priors
under squared error loss function. The performance of the Bayes and maximum likelihood
estimators has been evaluated in terms of mean squared errors. Moreover, an application
with real dataset has been also provided to explain the proposal for practical considerations.
Keywords :
Bayesian estimation , General randomized response model , Loss functions , Population proportion , Prior distributions
Journal title :
Scientia Iranica(Transactions E: Industrial Engineering)