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Local least absolute deviation estimation of spatially varying coefficient models: robust geographically weighted regression approaches

机译:空间变化系数模型的局部最小绝对偏差估计:鲁棒的地理加权回归方法

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摘要

The geographically weighted regression (GWR) has been widely applied to many practical fields for exploring spatial non-stationarity of a regression relationship. However, this method is inherently not robust to outliers due to the least squares criterion in the process of estimation. Outliers commonly exist in data sets and may lead to a distorted estimate of the underlying regression relationship. Using the least absolute deviation criterion, we propose two robust scenarios of the GWR approaches to handle outliers. One is based on the basic GWR and the other is based on the local linear GWR (LGWR). The proposed methods can automatically reduce the impact of outliers on the estimates of the regression coefficients and can be easily implemented with modern computer software for dealing with the linear programming problems. We then conduct simulations to assess the performance of the proposed methods and the results demonstrate that the methods are quite robust to outliers and can retrieve the underlying coefficient surfaces satisfactorily even though the data are seriously contaminated or contain severe outliers.
机译:地理加权回归(GWR)已广泛应用于许多实际领域,以探索回归关系的空间非平稳性。但是,由于估计过程中的最小二乘准则,该方法固有地对异常值不具有鲁棒性。异常值通常存在于数据集中,并且可能导致基本回归关系的估计失真。使用最小绝对偏差准则,我们提出了两种GWR方法的健壮方案来处理异常值。一种基于基本GWR,另一种基于局部线性GWR(LGWR)。所提出的方法可以自动减少离群值对回归系数估计值的影响,并且可以使用现代计算机软件轻松实现,以处理线性规划问题。然后,我们进行仿真以评估所提出方法的性能,结果表明,该方法对异常值非常鲁棒,即使数据受到严重污染或包含严重异常值,也可以令人满意地检索基础系数表面。

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