北京
机器学习
可解释性
决策树
人工智能
计算机科学
Boosting(机器学习)
期限(时间)
梯度升压
集成学习
比例(比率)
随机森林
数据挖掘
算法
中国
地理
地图学
物理
考古
量子力学
作者
Yanji Zhang,Liang Cai,Guangwen Song,Chunwu Zhu
标识
DOI:10.1177/00111287231180102
摘要
To advance the interpretability of machine learning for long-term crime prediction in China, we compared the performance of multiple machine learning algorithms in predicting the spatial pattern of theft in Beijing. Gradient boosting decision tree emerged as the algorithm with best predictive accuracy. After identifying the importance of criminogenic features, we extended the interpreter SHAP to reveal nonlinear and spatially heterogeneous associations between environmental features and theft and we summarized six relation types of such associations at the global scale. At the local scale, we clustered six area types according to the contribution of environmental attributes to theft prediction in each grid. Policy makers should adopt place-based crime prevention measures based on the specific type of each grid belongs to.
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