Horvitz-thompson estimator of population mean under inverse sampling designs
Abstract
Inverse sampling design is generally considered to be an appropriate technique when the population is divided into two subpopulations, one of which contains only a few units. Here, we de- rive the Horvitz-Thompson estimator for the population mean un- der inverse sampling designs, where subpopulation sizes are known. We then introduce an alternative unbiased estimator, correspond- ing to post-stratification approach. Both of these are not location- invariant, but this is ignorable for alternative estimator. Using a simulation study, we find that the Horvitz-Thompson estimator is an efficient estimator when the mean of the off-interest sub population is close to zero, while the alternative estimator appears to be an efficient estimator in general.
DOI/handle
http://hdl.handle.net/10576/48158Collections
- Mathematics, Statistics & Physics [738 items ]