2020
DOI: 10.31219/osf.io/u7j29
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Targeting the spatial context of obesity determinants via multiscale geographically weighted regression

Abstract: Background: Obesity rates are recognized to be at epidemic levels throughout much of the world, posing significant threats to both the health and financial security of many nations. The causes of obesity can vary but are often complex and multifactorial, and while many contributing factors can be targeted for intervention, an understanding of where these interventions are needed is necessary in order to implement effective policy. This has prompted an interest in incorporating spatial context into the analysis… Show more

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Cited by 2 publications
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“…Then, we computed the VIF values and conducted spatial autocorrelation tests for all the variables. The resulting VIF values were all found to be below 10, with most even below 5, indicating a state of low multicollinearity between the selected variables and thus providing a safer threshold for their inclusion [57,58]. Table 3 shows the results of the VIF and Moran's I index test for each variable.…”
Section: Ols Model Resultsmentioning
confidence: 99%
“…Then, we computed the VIF values and conducted spatial autocorrelation tests for all the variables. The resulting VIF values were all found to be below 10, with most even below 5, indicating a state of low multicollinearity between the selected variables and thus providing a safer threshold for their inclusion [57,58]. Table 3 shows the results of the VIF and Moran's I index test for each variable.…”
Section: Ols Model Resultsmentioning
confidence: 99%