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Articles

Geographically weighted regression model-assisted estimation in survey sampling

, &
Pages 906-925
Received 01 May 2017
Accepted 25 Jun 2018
Published online: 27 Jul 2018
 

ABSTRACT

A geographically weighted regression model-assisted method is proposed to estimate the finite population totals using survey data with the aid of spatial and other auxiliary information. The local linear method is used to the estimation of geographically weighted regression model. Our proposed GWR-assisted (geographically weighted regression model-assisted) estimators are more efficient than the well-known Horvitz–Thompson estimators. These estimators are calibrated and asymptotically design-unbiased. Some theoretical results have been established for GWR-assisted estimators. Simulation experiments show that the GWR-assisted estimators are more efficient than the LM-assisted (linear regression model-assisted) estimators and NP-assisted (nonparametric regression model-assisted) estimators. Finally, the Boston housing data are used in the simulation study to demonstrate the importance of location information in spatial modelling.

Disclosure statement

No potential conflict of interest was reported by the authors.

Additional information

Funding

Chuanhua Wei's research was supported by the National Natural Science Foundation of China [grant number 11301565], Yunan Su's research was supported by the National Social Science Foundation of China [grant number 16CTJ011].