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Precision enhancement in variance estimation for complex environmental populations using adaptive cluster sampling.
Qureshi, Muhammad Nouman; Ahelali, Marwan H; Iftikhar, Soofia; Hassan, Amal; Alamri, Osama Abdulaziz; Manzoor, Summaira; Hanif, Muhammad.
  • Qureshi MN; School of Statistics, University of Minnesota, Minneapolis, USA.
  • Ahelali MH; Institute for Social Research, University of Michigan, Ann Arbor, MI, USA.
  • Iftikhar S; Department of Statistics, University of Tabuk, Tabuk, Saudi Arabia.
  • Hassan A; Department of Statistics, Shaheed Benazir Bhutto Women University Peshawar, Peshawar, Pakistan.
  • Alamri OA; School of Statistics, University of Minnesota, Minneapolis, USA.
  • Manzoor S; Department of Statistics, University of Tabuk, Tabuk, Saudi Arabia.
  • Hanif M; Department of Statistics, University of Azad Jammu and Kashmir, Pakistan.
Heliyon ; 10(11): e32355, 2024 Jun 15.
Article en En | MEDLINE | ID: mdl-38961979
ABSTRACT
Estimating dispersion in populations that are extremely rare, hidden, geographically clustered, and hard to access is a well-known challenge. Conventional sampling approaches tend to overestimate the variance, even though it should be genuinely reduced. In this environment, adaptive cluster sampling is considered to be the most efficient sampling technique as it provides generally a lower variance than the other conventional probability sampling designs for the assessment of rare and geographically gathered population parameters like mean, total, variance, etc. The use of auxiliary data is very common to obtain the precise estimates of the estimators by taking advantage of the correlation between the survey variable and the auxiliary data. In this article, we introduced a generalized estimator for estimating the variance of populations that are rare, hidden, geographically clustered and hard-to-reached. The proposed estimator leverages both actual and transformed auxiliary data through adaptive cluster sampling. The expressions of approximate bias and mean square error of the proposed estimator are derived up to the first-order approximation using Taylor expansion. Some special cases are also obtained using the known parameters associated with the auxiliary variable. The proposed class of estimators is compared with available estimators using simulation and real data applications.
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