论文标题
GWRBOOST:一种地理加权的梯度提升方法,用于解释空间变化的关系
GWRBoost:A geographically weighted gradient boosting method for explainable quantification of spatially-varying relationships
论文作者
论文摘要
地理加权回归(GWR)是估计地理环境中相关变量和自变量之间关系的空间变化的重要工具。但是,GWR遇到了一个问题:构成GWR模型的经典线性回归更容易拟合,尤其是对于大量的数量和复杂的非线性数据而言,导致比较较低的比较性能。然而,一些高级模型(例如决策树和支持向量机器)可以从复杂数据中学习功能,而它们无法为局部关系的空间变化提供可解释的量化。为了解决上述问题,我们提出了一种地理梯度增强加权回归模型GWRBOOST,该模型GWRBOOST应用了局部添加剂模型和梯度增强优化方法来减轻不足的问题,并保留可解释的量化能力,以在地理位置位置的变量之间进行空间变化的关系。此外,我们为所提出的模型制定了Akaike信息得分的计算方法,以使用经典的GWR算法进行比较分析。仿真实验和经验案例研究用于证明GWRBOOST的有效性能和实践值。结果表明,我们提出的模型可以将RMSE的参数估计精度降低18.3%,而AICC的拟合优度则可以将RMSE降低67.3%。
The geographically weighted regression (GWR) is an essential tool for estimating the spatial variation of relationships between dependent and independent variables in geographical contexts. However, GWR suffers from the problem that classical linear regressions, which compose the GWR model, are more prone to be underfitting, especially for significant volume and complex nonlinear data, causing inferior comparative performance. Nevertheless, some advanced models, such as the decision tree and the support vector machine, can learn features from complex data more effectively while they cannot provide explainable quantification for the spatial variation of localized relationships. To address the above issues, we propose a geographically gradient boosting weighted regression model, GWRBoost, that applies the localized additive model and gradient boosting optimization method to alleviate underfitting problems and retains explainable quantification capability for spatially-varying relationships between geographically located variables. Furthermore, we formulate the computation method of the Akaike information score for the proposed model to conduct the comparative analysis with the classic GWR algorithm. Simulation experiments and the empirical case study are applied to prove the efficient performance and practical value of GWRBoost. The results show that our proposed model can reduce the RMSE by 18.3% in parameter estimation accuracy and AICc by 67.3% in the goodness of fit.