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The Use of Geographically Weighted Regression for Spatial Prediction: An Evaluation of Models Using Simulated Data Sets

机译:地理加权回归在空间预测中的应用:使用模拟数据集的模型评估

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Increasingly, the geographically weighted regression (GWR) model is being used for spatial prediction rather than for inference. Our study compares GWR as a predictor to (a) its global counterpart of multiple linear regression (MLR); (b) traditional geostatistical models such as ordinary kriging (OK) and universal kriging (UK), with MLR as a mean component; and (c) hybrids, where kriging models are specified with GWR as a mean component. For this purpose, we test the performance of each model on data simulated with differing levels of spatial heterogeneity (with respect to data relationships in the mean process) and spatial autocorrelation (in the residual process). Our results demonstrate that kriging (in a UK form) should be the preferred predictor, reflecting its optimal statistical properties. However the GWR-kriging hybrids perform with merit and, as such, a predictor of this form may provide a worthy alternative to UK for particular (non-stationary relationship) situations when UK models cannot be reliably calibrated. GWR predictors tend to perform more poorly than their more complex GWR-kriging counterparts, but both GWR-based models are useful in that they provide extra information on the spatial processes generating the data that are being predicted.
机译:越来越多地,将地理加权回归(GWR)模型用于空间预测而不是推理。我们的研究将GWR与(a)多元线性回归(MLR)的全球对应物进行比较。 (b)传统地统计模型,例如普通克里格法(OK)和通用克里格法(英国),其中MLR为平均成分; (c)混合动力车,其中克里格模型以GWR为均值来指定。为此,我们在不同水平的空间异质性(相对于平均过程中的数据关系)和空间自相关(残差过程)中模拟的数据上测试每种模型的性能。我们的结果表明,克里金法(以英国形式)应该是首选的预测变量,反映了其最佳的统计特性。但是,GWR-kriging混合动力系统具有优异的性能,因此,对于英国模型无法可靠校准的特定(非平稳关系)情况,这种形式的预测变量可以为英国提供有价值的替代方案。 GWR预测器的性能往往比其更复杂的GWR-kriging对应器更差,但是这两种基于GWR的模型都非常有用,因为它们提供了有关生成被预测数据的空间过程的额外信息。

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