Modeling Spatial Interactions between Areas to Assess the Burglary Risk
Abstract
It is generally acknowledged that the urban environment presents different types of risk
factors, but how the structural effects of areas influence the risk levels in neighboring areas has been
less widely investigated. This research assesses the local effects of burglary contributory factors on
burglary over small areas in a large metropolitan region. A comparative framework is developed
for analyzing the effects of geographic dependence on burglary rates, and for assessing how such
dependence conditions the community context and the urban land use. A local indicators spatial
autocorrelation analysis assesses burglaries over five years (2011–2015) to identify risk clusters.
Thereafter, effects of different variables (e.g., unemployment, building density) on burglary frequency
are estimated in a series of regression models while controlling for changes in the risk levels of nearby
surrounding areas. Results uncover strong evidence that the configuration of the surroundings
influences risk. After controlling for area-based interaction, patterns are identified that contrast
with the previous literature, such as lower burglary frequency in areas with higher tenancy in social
housing units. Together the findings demonstrate that the spatial arrangement of areas is as crucial as
contextual crime factors, particularly when assessing the risk for small areas
Collections
- School of Technology [38]