Mapping the Risk Terrain for Crime Using Machine Learning
We illustrate how a machine learning algorithm, Random Forests, can provide accurate long-term predictions of crime at micro places relative to other popular techniques. We also show how recent advances in model summaries can help to open the ‘black box’ of Random Forests, considerably improving the...
1. VerfasserIn: | |
---|---|
Beteiligte: | |
Medienart: | Elektronisch Aufsatz |
Sprache: | Englisch |
Veröffentlicht: |
[2021]
|
In: |
Journal of quantitative criminology
Jahr: 2021, Band: 37, Heft: 2, Seiten: 445-480 |
Online-Zugang: |
Vermutlich kostenfreier Zugang Volltext (lizenzpflichtig) |
Journals Online & Print: | |
Verfügbarkeit prüfen: | HBZ Gateway |
Schlagwörter: |
Zusammenfassung: | We illustrate how a machine learning algorithm, Random Forests, can provide accurate long-term predictions of crime at micro places relative to other popular techniques. We also show how recent advances in model summaries can help to open the ‘black box’ of Random Forests, considerably improving their interpretability. |
---|---|
ISSN: | 1573-7799 |
DOI: | 10.1007/s10940-020-09457-7 |