Crime Prediction Modeling
Crime prediction modeling forecasts where and when crime is most likely to occur next, so that limited resources can be directed before incidents happen rather than after. It spans simple historical hot-spot extrapolation, statistical self-exciting point processes that treat crimes as triggering further crimes, and modern machine-learning models that blend spatial, temporal, and environmental features. The statistical foundation was sharpened by Mohler and colleagues' 2011 demonstration that earthquake-style self-exciting (Hawkes) point processes — in which each crime raises the short-term risk of nearby crimes — forecast urban crime more accurately than conventional hot-spot maps.
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来源
- Mohler, G. O., Short, M. B., Brantingham, P. J., Schoenberg, F. P., & Tita, G. E. (2011). Self-exciting point process modeling of crime. Journal of the American Statistical Association, 106(493), 100–108. DOI: 10.1198/jasa.2011.ap09546 ↗
- Perry, W. L., McInnis, B., Price, C. C., Smith, S. C., & Hollywood, J. S. (2013). Predictive Policing: The Role of Crime Forecasting in Law Enforcement Operations. RAND Corporation. ISBN: 9780833081483
如何引用本页
ScholarGate. (2026, June 22). Predictive Modeling of Crime Risk (Predictive Policing). ScholarGate. https://scholargate.app/zh/criminology/crime-prediction-modeling
选用哪种方法?
将本方法与其最相近的同类并置,并排研读——本馆将书籍铺陈于案上,取舍则由您定夺。
- Crime Hot Spot AnalysisCriminology↔ 比较
- Crime MappingCriminology↔ 比较
- Near-Repeat AnalysisCriminology↔ 比较
- Risk Terrain Modeling (Criminology)Criminology↔ 比较