Crime Prediction by Data-Driven Green's Function method
Abstract
We develop an algorithm that forecasts cascading events, by employing a Green's function scheme on the basis of the self-exciting point process model. This method is applied to open data of 10 types of crimes happened in Chicago. It shows a good prediction accuracy superior to or comparable to the standard methods which are the expectation-maximization method and prospective hotspot maps method. We find a cascade influence of the crimes that has a long-time, logarithmic tail; this result is consistent with an earlier study on burglaries. This long-tail feature cannot be reproduced by the other standard methods. In addition, a merit of the Green's function method is the low computational cost in the case of high density of events and/or large amount of the training data.
Cite
@article{arxiv.1704.00240,
title = {Crime Prediction by Data-Driven Green's Function method},
author = {Mami Kajita and Seiji Kajita},
journal= {arXiv preprint arXiv:1704.00240},
year = {2019}
}
Comments
22 pages, 3 figure