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首页> 外文期刊>Journal of geographical systems >Alleviating the effect of collinearity in geographically weighted regression
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Alleviating the effect of collinearity in geographically weighted regression

机译:减轻共线性在地理加权回归中的影响

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摘要

Geographically weighted regression (GWR) is a popular technique to deal with spatially varying relationships between a response variable and predictors. Problems, however, have been pointed out (see Wheeler and Tiefelsdorf in J Geogr Syst 7(2):161–187, 2005), which appear to be related to locally poor designs, with severe impact on the estimation of coefficients. Different remedies have been proposed. We propose two regularization methods. The first one is generalized ridge regression, which can also be seen as an empirical Bayes method. We show that it can be implemented using ordinary GWR software with an appropriate choice of the weights. The second one augments the local sample as needed while running GWR. We illustrate both methods along with ordinary GWR on an example of housing prices in the city of Bilbao (Spain) and using simulations.
机译:地理加权回归(GWR)是一种流行的技术,用于处理响应变量和预测变量之间的空间变化关系。但是,已经指出了一些问题(请参见Wheeler and Tiefelsdorf in J Geogr Syst 7(2):161-187,2005),这些问题似乎与局部不良的设计有关,对系数的估计产生了严重影响。已经提出了不同的补救措施。我们提出两种正则化方法。第一个是广义岭回归,也可以看作是经验贝叶斯方法。我们展示了可以使用普通的GWR软件并适当选择权重来实现它。第二个在运行GWR时根据需要增加本地样本。我们以西班牙毕尔巴鄂市的房价为例,并通过模拟说明了这两种方法以及普通的GWR。

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