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空间时间核密度估计 (ST-KDE)×Getis-Ord Gi* 热点分析×
领域空间分析空间分析
方法族Regression modelRegression model
起源年份2010 (space-time extension); 1956 (KDE origin)1992
提出者Nakaya & Yano (space-time formulation); KDE foundation by Rosenblatt and ParzenArthur Getis and J. Keith Ord
类型Non-parametric density estimationLocal spatial statistic
开创性文献Nakaya, T., & Yano, K. (2010). Visualising crime clusters in a space-time cube: An exploratory data-analysis approach using space-time kernel density estimation and scan statistics. Transactions in GIS, 14(3), 223-239. DOI ↗Getis, A., & Ord, J. K. (1992). The analysis of spatial association by use of distance statistics. Geographical Analysis, 24(3), 189-206. DOI ↗
别名ST-KDE, spatiotemporal kernel density estimation, space-time KDE, 3D kernel density estimationGetis-Ord Gi* statistic, spatial hot spot detection, cluster and outlier analysis, HSA
相关55
摘要Space-Time Kernel Density Estimation extends classical KDE into three dimensions — two spatial and one temporal — to reveal how the intensity of point events (crimes, accidents, disease cases) varies continuously across both geographic space and time. It produces a smooth probabilistic surface that highlights where and when events concentrate most densely.Hot Spot Analysis uses the Getis-Ord Gi* local spatial statistic to identify geographic locations where high or low attribute values cluster together to a degree that is statistically significant. Each feature is evaluated in relation to its neighbours, producing a z-score that flags genuine spatial hot spots and cold spots against a background of random variation.
ScholarGate数据集
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  1. v1
  2. 2 来源
  3. PUBLISHED

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ScholarGate方法对比: Space-Time Kernel Density Estimation · Hot Spot Analysis. 于 2026-06-17 检索自 https://scholargate.app/zh/compare