GWRBoost:A geographically weighted gradient boosting method for
explainable quantification of spatially-varying relationships
- URL: http://arxiv.org/abs/2212.05814v2
- Date: Thu, 15 Dec 2022 06:02:33 GMT
- Title: GWRBoost:A geographically weighted gradient boosting method for
explainable quantification of spatially-varying relationships
- Authors: Han Wang, Zhou Huang, Ganmin Yin, Yi Bao, Xiao Zhou, Yong Gao
- Abstract summary: We propose a geographically gradient boosting weighted regression model, GWRBoost, to alleviate underfitting problems.
Our proposed model can reduce the RMSE by 18.3% in parameter estimation accuracy and AICc by 67.3% in the goodness of fit.
- Score: 11.025779617297946
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: 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.
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