Terrence P. HuiReza ModarresGang Zheng
Abstract It is well-known that when ranked set sampling (RSS) scheme is employed to estimate the mean of a population, it is more efficient than simple random sampling (SRS) with the same sample size. One can use a RSS analog of SRS regression estimator to estimate the population mean of Y using its concomitant variable X when they are linearly related. Unfortunately, the variance of this estimate cannot be evaluated unless the distribution of X is known. We investigate the use of resampling methods to establish confidence intervals for the regression estimation of the population mean. Simulation studies show that the proposed methods perform well in a variety of situations when the assumption of linearity holds, and decently well under mild non-linearity. Keywords: Ranked set samplingRegression estimatorBootstrap confidence intervalConcomitant variable Acknowledgements We thank the associate editor and a referee for their helpful comments and suggestions.
Timothy D. PerezJeffrey S. Pontius