Title of article
IMPROVED ESTIMATION OF MEAN IN RANDOMIZED RESPONSE MODELS
Author/Authors
Hussain, Zawar Quaid-i-Azam University - Department of Statistics, Pakistan , Shabbir, Javid Quaid-i-Azam University - Department of Statistics, Pakistan
From page
91
To page
104
Abstract
The present investigation considers the problem of estimating the mean of a sensitive quantitative variable μA in a human population survey, using the scrambled response technique suggested by Ryu, Kim, Heo and Park (On stratified randomized response sampling, Model Assisted Statistics and Application 1(1), 31–36, 2005–2006). Specifically, using the prior estimate (or guessed mean) of the mean of a population, a family of estimators ÛAk is presented to estimate the population mean μA, and its properties are examined. The optimum value of the degree k(0 ≤ k ≤ 1) of the belief in the prior estimate depends, besides others, on the unknown population parameters, e.g. mean and variance, so the proposed family of estimators may have limited practical applications. In an attempt to overcome this problem, another estimator based on the estimated optimum value of k has been proposed. The proposed estimator has been compared with the Ryu et al. and Hussain and Shabbir (Improved estimation procedure for the mean of a sensitive variable using randomized response model, Pakistan Journal of Statistics 25(2), 205–220, 2009) estimators assuming simple random sampling with replacement.
Keywords
Sensitive question , Estimation of mean , Simple random sampling with replacement , Scrambled response , Mean squared error , Prior estimate
Journal title
Hacettepe Journal Of Mathematics and Statistics
Journal title
Hacettepe Journal Of Mathematics and Statistics
Record number
2650190
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