Full Citation
Title: Predicting Model Improvement by Accounting for Spatial Autocorrelation: A Socioeconomic Perspective
Citation Type: Journal Article
Publication Year: 2021
ISBN:
ISSN:
DOI: 10.1080/00330124.2020.1812408
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Abstract: In geographical literature, numerous studies have demonstrated the differences that arise if spatial autocorrelation (SAC) is incorporated into a conventional nonspatial modeling procedure, but little is known about when these differences might be magnified. This study addressed this query by conducting two sets of regression modeling for 561 variables representing housing prices, metropolitan industry, health, crime, education, and (un)employment across various parts of the United States: (1) nonspatial ordinary least squares (OLS) using a set of selected independent variables and (2) spatial regression incorporating spatial filters into the nonspatial OLS as additional independent variables. This incorporation generally improved the model outcomes through decreases in residual autocorrelation and Akaike’s information criterion (AIC). The degree of improvement correlated positively with the level of SAC inherent in the dependent variables. That is, strongly autocorrelated socioeconomic variables underwent greater decreases in residual autocorrelation and AIC than those variables with weaker SAC. The results imply that spatial modeling outcomes are sensitive to and potentially predictable by the level of SAC possessed by dependent variables. Therefore, the degree of SAC present in a socioeconomic variable can serve as a direct indicator of how much improvement a nonspatial OLS will experience if that SAC is properly accounted for.
Url: https://www.tandfonline.com/doi/full/10.1080/00330124.2020.1812408?scroll=top&needAccess=true
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Authors: Kim, Daehyun; Song, Insang
Periodical (Full): The Professional Geographer
Issue: 1
Volume: 73
Pages: 131-149
Data Collections: IPUMS NHGIS
Topics: Other, Population Mobility and Spatial Demography
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