Article ID Journal Published Year Pages File Type
414982 Computational Statistics & Data Analysis 2014 11 Pages PDF
Abstract

In a finite population setting, this paper considers a partially rank ordered set (PROS) sampling design. The PROS design selects a simple random sample (SRS) of MM units without replacement from a finite population and creates a partially rank ordered judgment subsets by dividing the units in SRS into subsets of a pre-specified size. The subsetting process creates a partial ordering among units in which each unit in subset hh is considered to be smaller than every unit in subset h′h′ for h′>hh′>h. The PROS design then selects a unit for full measurement from one of these subsets. Remaining units are returned to the population based on three replacement policies. For each replacement policy, we compute the first and second order inclusion probabilities and use them to construct the Horvitz–Thompson estimator and its variance for the estimation of the population total and mean. It is shown that the replacement policy that does not return any of the MM units, prior to selection of the next unit for full measurement, outperforms all other replacement policies.

Related Topics
Physical Sciences and Engineering Computer Science Computational Theory and Mathematics
Authors
, ,