Journal of Statistical Computation and Simulation | 2019

Generalized estimator for the estimation of rare and clustered population variance in adaptive cluster sampling

 
 
 

Abstract


ABSTRACT Adaptive cluster sampling (ACS) is considered to be the most suitable sampling design for the estimation of rare, hidden, clustered and hard-to-reach population units. The main characteristic of this design is that it may select more meaningful samples and provide more efficient estimates for the field investigator as compare to the other conventional sampling designs. In this paper, we proposed a generalized estimator with a single auxiliary variable for the estimation of rare, hidden and highly clustered population variance under ACS design. The expressions of approximate bias and mean square error are derived and the efficiency comparisons have been made with other existing estimators. A numerical study is carried out on a real population of aquatic birds together with an artificial population generated by Poisson cluster process. Related results of numerical study show that the proposed generalized variance estimator is able to provide considerably better results over the competing estimators.

Volume 89
Pages 2084 - 2101
DOI 10.1080/00949655.2019.1608205
Language English
Journal Journal of Statistical Computation and Simulation

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