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Self-exciting point process modelling of crimes on linear networks

Nicoletta D’Angelo, David Payares, Giada Adelfio, Jorge Mateu

2022Statistical Modelling15 citationsDOIOpen Access PDF

Abstract

Although there are recent developments for the analysis of first and second-order characteristics of point processes on networks, there are very few attempts in introducing models for network data. Motivated by the analysis of crime data in Bucaramanga (Colombia), we propose a spatiotemporal Hawkes point process model adapted to events living on linear networks. We first consider a non-parametric modelling strategy, for which we follow a non-parametric estimation of both the background and the triggering components. Then we consider a semi-parametric version, including a parametric estimation of the background based on covariates, and a non-parametric one of the triggering effects. Our model can be easily adapted to multi-type processes. Our network model outperforms a planar version, improving the fitting of the self-exciting point process model.

Topics & Concepts

Point processParametric statisticsComputer scienceParametric modelCovariatePoint (geometry)Process (computing)EconometricsMachine learningMathematicsStatisticsOperating systemGeometryPoint processes and geometric inequalities