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Diagnostic tools and a remedial method for collinearity in geographically weighted regression

机译:地理加权回归中共线性的诊断工具和补救方法

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Geographically weighted regression (GWR) is drawing attention as a statistical method to estimate regression models with spatially varying relationships between explanatory variables and a response variable. Local collinearity in weighted explanatory variables leads to GWR coefficient estimates that are correlated locally and across space, have inflated variances, and are at times counterintuitive and contradictory in sign to the global regression estimates. The presence of local collinearity in the absence of global collinearity necessitates the use of diagnostic tools in the local regression model building process to highlight areas in which the results are not reliable for statistical inference. The method of ridge regression can also be integrated into the GWR framework to constrain and stabilize regression coefficients and lower prediction error. This paper presents numerous diagnostic tools and ridge regression in GWR and demonstrates the utility of these techniques with an example using the Columbus crime dataset.
机译:地理加权回归(GWR)作为一种统计方法正在引起人们的注意,该方法用于估计在解释变量和响应变量之间具有空间变化关系的回归模型。加权解释变量中的局部共线性导致GWR系数估计在局部和整个空间相关,具有夸大的方差,有时与全局回归估计相反,具有直觉性和矛盾性。在不存在全局共线性的情况下,存在局​​部共线性需要在局部回归模型构建过程中使用诊断工具来突出显示结果对于统计推断不可靠的区域。岭回归的方法也可以集成到GWR框架中,以约束和稳定回归系数并降低预测误差。本文介绍了GWR中的许多诊断工具和岭回归,并使用哥伦布犯罪数据集举例说明了这些技术的实用性。

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