Scientists have developed a software that can quickly process real-time data and predict where illegal activities are likely to occur, giving police departments the upper hand in their fight against crime. Police departments across the world are facing increasing pressures on their resources, a reality that is fuelling the growth of predictive policing software that helps authorities make decisions on where to focus their efforts.
One popular method is to fit an Epidemic Type Aftershock Sequence (ETAS) model to urban crime data – a grid-map-based approach that has been able to predict two times as much crime as a single dedicated analyst. Researchers from University of Surrey and Georgia Institute of Technology in the US detail a new approach similar to that used in weather forecasting and the Apollo space missions, which supplements ETAS.
Researchers were able to use this approach to develop a novel algorithm the Ensemble Poisson Kalman Filter (EnPKF) that is able to combine, in real-time, urban crime data and the ETAS model. EnPKF is able to provide real-time forecasts for the crime rate and give an indication to how likely crime could repeat in a certain area.
The algorithm can also give police departments suggestions as to where short-term crime hotspots could arise, and what additional resources are needed to address such a rise. Mathematicians tested their algorithm against data on more than 1,000 violent gang crimes in Los Angeles, from 1999 until 2002 – a dataset that features 33 known gangs.
Researchers believe that the algorithm has a wide range of possible uses as the EnPKF can make forecasts using models other than ETAS. It is thought that EnPKF can be used to monitor train delays, earthquake aftershocks and even insurance claims in sub-Saharan Africa.