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Geographically weighted regression (GWR) takes a prominent role in spatial regression analysis, providing a nuanced perspective on the intricate interplay of variables within geographical landscapes (Brunsdon et al., 1998). However, it is essential to have a strong rationale for employing GWR, either as an addition to, or a complementary analysis alongside, non-spatial (global) regression models (Kiani, Mamiya et al., 2023). Moreover, the proper selection of bandwidth, weighting function or kernel types, and variable choices constitute the most critical configurations in GWR analysis (Wheeler, 2021). [...].

Original publication

DOI

10.4081/gh.2024.1271

Type

Journal

Geospatial health

Publication Date

02/2024

Volume

19

Addresses

UQ Centre for Clinical Research, The University of Queensland, Brisbane. B.kiani@uq.edu.au.

Keywords

Geography, Spatial Analysis, Spatial Regression