• Media type: E-Article
  • Title: Forecasting Spatio-Temporal Variation in Residential Burglary with the Integrated Laplace Approximation Framework: Effects of Crime Generators, Street Networks, and Prior Crimes
  • Contributor: Mahfoud, Maria [VerfasserIn]; Bernasco, Wim [VerfasserIn]; Bhulai, Sandjai [VerfasserIn]; Mei, Rob [VerfasserIn]
  • imprint: 2021
  • Published in: Journal of quantitative criminology ; 37(2021), 4, Seite 835-862
  • Language: English
  • DOI: 10.1007/s10940-020-09469-3
  • ISSN: 1573-7799
  • Identifier:
  • Keywords: Residential burglary ; Centrality measures ; Bayesian spatio-temporal models ; Forecasting ; Predictive analytics
  • Origination:
  • Footnote:
  • Description: Objectives We investigate the spatio-temporal variation of monthly residential burglary frequencies across neighborhoods as a function of crime generators, street network features and temporally and spatially lagged burglary frequencies. In addition, we evaluate the performance of the model as a forecasting tool. Methods We analyze 48 months of police-recorded residential burglaries across 20 neighborhoods in Amsterdam, the Netherlands, in combination with data on the locations of urban facilities (crime generators), frequencies of other crime types, and street network data. We apply the Integrated Laplace Approximation method, a Bayesian forecasting framework that is less computationally demanding than prior frameworks. Results The local number of retail stores, the number of street robberies perpetrated and the closeness of the local street network are positively related to residential burglary. Inclusion of a general spatio-temporal interaction component significantly improves forecasting performance, but inclusion of spatial proximity or temporal recency components does not. Discussion Our findings on crime generators and street network characteristics support evidence in the literature on environmental correlates of burglary. The significance of spatio-temporal interaction indicates that residential burglary is spatio-temporally concentrated. Our finding that recency and proximity of prior burglaries do not contribute to the performance of the forecast, probably indicates that relevant spatio-temporal interaction is limited to fine-grained spatial and temporal units of analysis, such as days and street blocks.
  • Access State: Open Access