Public decision support for low population density areas: An imbalance-aware hyper-ensemble for spatio-temporal crime prediction

作者:

Highlights:

• Predictive policing reduces crime rates through prediction and decision support.

• Crime prediction was previously only developed for metropolitan areas.

• Existing frameworks struggle with unequally-distributed crime of rural areas.

• We propose an imbalance-aware hyper-ensemble for spatio-temporal prediction.

摘要

Crime events are known to reveal spatio-temporal patterns, which can be used for predictive modeling and subsequent decision support. While the focus has hitherto been placed on areas with high population density, we address the challenging undertaking of predicting crime hotspots in regions with low population densities and highly unequally-distributed crime. This results in a severe sparsity (i. e., class imbalance) of the outcome variable, which impedes predictive modeling. To alleviate this, we develop machine learning models for spatio-temporal prediction that are specifically adjusted for an imbalanced distribution of the class labels and test them in an actual setting with state-of-the-art predictors (i. e., socio-economic, geographical, temporal, meteorological, and crime variables in fine resolution). The proposed imbalance-aware hyper-ensemble increases the hit ratio considerably from 18.1% to 24.6% when aiming for the top 5% of hotspots, and from 53.1% to 60.4% when aiming for the top 20% of hotspots. As direct implications, the findings help decision-makers in law enforcement and contribute to public decision support in low population density regions.

论文关键词:Crime prediction,Machine learning,Imbalanced data,Spatio-temporal modeling,Public decision support

论文评审过程:Received 26 September 2018, Revised 27 January 2019, Accepted 7 March 2019, Available online 14 March 2019, Version of Record 3 April 2019.

论文官网地址:https://doi.org/10.1016/j.dss.2019.03.001