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Geographically Weighted Regression using a non-euclidean distance metric with simulation data

机译:使用具有仿真数据的非欧几里德距离度量的地理加权回归

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In this study, we investigate the performance of a non-Euclidean distance metric in calibrating a Geographically Weighted Regression (GWR) model with a simulated data set. Random predictor variable and spatially varying coefficients are generated on a square grid of size 20∗20. We respectively apply Manhattan and Euclidean distance metrics for the GWR calibrations. The preliminary findings show that Manhattan distance performs significantly better than the traditional choice for GWR — Euclidean distance. In particular, it outperforms in the accuracy of coefficient estimates.
机译:在本研究中,我们调查非欧几里德距离度量在用模拟数据集校准地理上加权回归(GWR)模型的性能。在大小20 * 20的正方形网格上产生随机预测变量和空间变化系数。我们分别适用于GWR校准的曼哈顿和欧几里德距离指标。初步调查结果表明,曼哈顿距离比GWR - 欧几里德距离的传统选择表现得显着。特别是,它以系数估计的准确性优于优势。

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