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Published in: The Annals of Regional Science 1/2021

12-08-2020 | Original Paper

Efficient estimation of heteroscedastic mixed geographically weighted regression models

Authors: Chang-Lin Mei, Feng Chen, Wen-Tao Wang, Peng-Cheng Yang, Si-Lian Shen

Published in: The Annals of Regional Science | Issue 1/2021

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Abstract

Mixed geographically weighted regression (MGWR) models are a useful tool to model a regression relationship where the impact of some explanatory variables on the response variable is global and that of the others is spatially varying. The existing estimation methods for MGWR models assume that the model errors are homoscedastic. However, heteroscedasticity is very common in geo-referenced data and ignoring heteroscedasticity may cause efficiency loss on the coefficient estimates. In this paper, we propose a re-weighting estimation method for heteroscedastic MGWR models, in which the variance function of the model errors is estimated by the kernel method with an adaptive bandwidth and the coefficients are re-estimated based on the weighted observations. The simulation study shows that the proposed method can substantially improve the estimation efficiency especially for the constant coefficients. A real-world example based on the Dublin voter turnout data is given to demonstrate the application of the proposed method.

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Metadata
Title
Efficient estimation of heteroscedastic mixed geographically weighted regression models
Authors
Chang-Lin Mei
Feng Chen
Wen-Tao Wang
Peng-Cheng Yang
Si-Lian Shen
Publication date
12-08-2020
Publisher
Springer Berlin Heidelberg
Published in
The Annals of Regional Science / Issue 1/2021
Print ISSN: 0570-1864
Electronic ISSN: 1432-0592
DOI
https://doi.org/10.1007/s00168-020-01016-z

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