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Using geographically weighted regression to explore spatial variation in survey data

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Figure

Table 2: ANOVA for Model 3
Figure 1 and 2 On the left the coefficients for population density estimated with GWR, on the right standard errors for the estimates
Figure 3 and 4 On the left the coefficients for heterogeneity estimated with GWR, on the right standard errors for the estimates

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