Measuring Bandwidth Uncertainty in Multiscale Geographically Weighted Regression Using Akaike Weights

Bandwidth, a key parameter in geographically weighted regression models, is closely related to the spatial scale at which the underlying spatially heterogeneous processes being examined take place. Generally, a single optimal bandwidth (geographically weighted regression) or a set of covariate-speci...

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Bibliographic Details
Published inAnnals of the American Association of Geographers Vol. 110; no. 5; pp. 1500 - 1520
Main Authors Li, Ziqi, Fotheringham, A. Stewart, Oshan, Taylor M., Wolf, Levi John
Format Journal Article
LanguageEnglish
Published Washington Routledge 02.09.2020
Taylor & Francis Ltd
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ISSN2469-4452
2469-4460
DOI10.1080/24694452.2019.1704680

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Summary:Bandwidth, a key parameter in geographically weighted regression models, is closely related to the spatial scale at which the underlying spatially heterogeneous processes being examined take place. Generally, a single optimal bandwidth (geographically weighted regression) or a set of covariate-specific optimal bandwidths (multiscale geographically weighted regression) is chosen based on some criterion, such as the Akaike information criterion (AIC), and then parameter estimation and inference are conditional on the choice of this bandwidth. In this article, we find that bandwidth selection is subject to uncertainty in both single-scale and multiscale geographically weighted regression models and demonstrate that this uncertainty can be measured and accounted for. Based on simulation studies and an empirical example of obesity rates in Phoenix, we show that bandwidth uncertainties can be quantitatively measured by Akaike weights and confidence intervals for bandwidths can be obtained. Understanding bandwidth uncertainty offers important insights about the scales over which different processes operate, especially when comparing covariate-specific bandwidths. Additionally, unconditional parameter estimates can be computed based on Akaike weights accounts for bandwidth selection uncertainty.
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ISSN:2469-4452
2469-4460
DOI:10.1080/24694452.2019.1704680