Title of article :
Comparison of estimation methods for the finite population mean in simple random sampling: symmetric super-populations
Author/Authors :
Arzu Altin Yavuz&Birdal Senoglu، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
In this paper, a newestimator combined estimator (CE) is proposed for estimating the finite population mean
Y¯N in simple random sampling assuming a long-tailed symmetric super-population model. The efficiency
and robustness properties of theCEis compared with the widely used and well-knownestimators of the finite
population mean Y¯N by Monte Carlo simulation. The parameter estimators considered in this study are the
classical least squares estimator, trimmed mean, winsorized mean, trimmed L-mean, modified maximumlikelihood
estimator, Huber estimator (W24) and the non-parametric Hodges–Lehmann estimator. The
mean square error criteria are used to compare the performance of the estimators.We show that the CE is
overall more efficient than the other estimators. The CE is also shown to be more robust for estimating the
finite population mean Y¯N, since it is insensitive to outliers and to misspecification of the distribution.We
give a real life example.
Keywords :
Winsorized mean , Trimmed mean , modifiedmaximum-likelihood estimator , trimmed L-mean , Huber estimator , Hodges–Lehmann estimator , Least squares estimator
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS