其中 nn 表示样本大小,σ^\hat{\sigma} 定义为误差项的标准差,tr(S)\operatorname{tr}(\boldsymbol{S}) 是帽子矩阵的迹。选定带宽后,可以进一步计算权重,并在每个校准位置拟合 GWR 模型,以获得一组局部系数。通过取每个校准位置的局部 R2R^{2} 的平均值,可以获得 GWR 模型的总体 R2R^{2} 值。

【原 文】 Fotheringham, A. Stewart and Yang, Wenbai and Kang, Wei. Multiscale Geographically Weighted Regression (MGWR) 2017. Annals of the American Association of Geographers , Vol. 107, No. 6 p. 1247-1265.

【阅后感】 本文作者是地理加权回归方法的提出者之一,也是《地理加权回归:空间可变关系的分析》一书的作者。在提出地理加权回归十余年后,作者发现原来的方法对于尺度缺乏建模能力(即解释变量可能来自于不同尺度的空间数据),进而深入研究了与尺度结合的地理加权回归,提出了自己的一套新方法。

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