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地理加权随机森林×空间滞后模型(SAR / 空间自回归)×
领域空间分析空间分析
方法族Machine learningRegression model
起源年份20211988
提出者Stefanos Georganos et al.Anselin (textbook formalisation); LeSage & Pace
类型Spatially local ensemble learning methodSpatial autoregressive regression
开创性文献Georganos, S., et al. (2021). Geographical random forests: a spatial extension of the random forest algorithm. Geocarto International, 36(2), 121–136. link ↗Anselin, L. (1988). Spatial Econometrics: Methods and Models. Kluwer Academic. DOI ↗
别名Geographical Random Forest, GRF, Spatial Random Forest, Cografi Agirlikli Rastgele OrmanSAR model, spatial autoregressive model, spatial lag, Uzamsal Gecikme Modeli (SAR / Spatial Lag)
相关35
摘要Geographically Weighted Random Forest (GWRF) is a spatially local ensemble learning method that fits an independent Random Forest model at each observation location, weighting nearby training samples more heavily than distant ones through a spatial kernel function. It was introduced by Stefanos Georganos and colleagues in 2019 (published 2021) as an extension of Breiman's Random Forest to handle spatial non-stationarity — the phenomenon where predictor–response relationships vary across geographic space.The Spatial Lag Model is an autoregressive regression that assumes spatial dependence in the dependent variable itself: the outcome values of neighbouring units enter the model as an explanatory term (ρWy). It was formalised in Anselin's Spatial Econometrics (1988) and developed further by LeSage and Pace (2009), and it decomposes spillover effects into direct, indirect, and total impacts.
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ScholarGate方法对比: Geographically Weighted Random Forest · Spatial Lag Model. 于 2026-06-18 检索自 https://scholargate.app/zh/compare