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A spatiotemporal weighted regression model (STWR v1.0) for analyzing local nonstationarity in space and time

机译:用于分析空间和时间的本地非间抗性的时空加权回归模型(STWR V1.0)

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Local spatiotemporal nonstationarity occurs in various natural and socioeconomic processes. Many studies have attempted to introduce time as a new dimension into a geographically weighted regression (GWR) model, but the actual results are sometimes not satisfying or even worse than the original GWR model. The core issue here is a mechanism for weighting the effects of both temporal variation and spatial variation. In many geographical and temporal weighted regression (GTWR) models, the concept of time distance has been inappropriately treated as a time interval. Consequently, the combined effect of temporal and spatial variation is often inaccurate in the resulting spatiotemporal kernel function. This limitation restricts the configuration and performance of spatiotemporal weights in many existing GTWR models. To address this issue, we propose a new spatiotemporal weighted regression (STWR) model and the calibration method for it. A highlight of STWR is a new temporal kernel function, wherein the method for temporal weighting is based on the degree of impact from each observed point to a regression point. The degree of impact, in turn, is based on the rate of value variation of the nearby observed point during the time interval. The updated spatiotemporal kernel function is based on a weighted combination of the temporal kernel with a commonly used spatial kernel (Gaussian or bi-square) by specifying a linear function of spatial bandwidth versus time. Three simulated datasets of spatiotemporal processes were used to test the performance of GWR, GTWR, and STWR. Results show that STWR significantly improves the quality of fit and accuracy. Similar results were obtained by using real-world data for precipitation hydrogen isotopes (δ2H) in the northeastern United States. The leave-one-out cross-validation (LOOCV) test demonstrates that, compared with GWR, the total prediction error of STWR is reduced by using recent observed points. Prediction surfaces of models in this case study show that STWR is more localized than GWR. Our research validates the ability of STWR to take full advantage of all the value variation of past observed points. We hope STWR can bring fresh ideas and new capabilities for analyzing and interpreting local spatiotemporal nonstationarity in many disciplines.
机译:在各种自然和社会经济过程中发生局部时空非间抗。许多研究已经尝试将时间作为一个新的维度引入地理加权回归(GWR)模型,但实际结果有时不满意甚至比原始GWR模型更差。这里的核心问题是一种加权时间变化和空间变化的影响的机制。在许多地理和时间加权回归(GTWR)模型中,时间距离的概念被视为时间间隔。因此,在得到的时空核函数中,时间和空间变化的组合效应通常是不准确的。这种限制限制了许多现有GTWR模型中时空重量的配置和性能。为了解决这个问题,我们提出了一种新的时空加权回归(STWR)模型及其校准方法。 STWR的亮点是一个新的时间内核功能,其中用于时间加权的方法基于来自每个观察到的点到回归点的冲击程度。反过来,影响程度基于时间间隔内附近观察点的值变化率。更新的时空内核功能基于时间内核的加权组合,通过指定空间带宽与时间的线性函数来基于具有常用的空间内核(高斯或Bi-Square)的加权组合。用于测试GWR,GTWR和STWR的三种模拟数据集。结果表明,STWR显着提高了适应性和准确性的质量。通过在美国东北部的沉淀氢同位素(Δ2h)的实际数据获得类似的结果。休假交叉验证(LOOCV)测试表明,与GWR相比,通过使用最近观察点来减少STWR的总预测误差。在这种情况下,模型的预测表面表明,STWR比GWR更为局部。我们的研究验证了STWR以充分利用过去观察点的所有价值变化的能力。我们希望STWR可以在许多学科中分析和解释当地时空非间抗性的新思想和新能力。

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