Abstract

ABSTRACT Law enforcement and security agencies around the globe have integrated geospatial analysis into their intelligence workflow to profile serial offenders, track suspects, and direct crime reduction/prevention efforts. Expansion to spatio-temporal analyses may yield significant and relevant information to better understand the underlying factors of crime. Among the current spatio-temporal methods to associate crimes is near repeat analysis. The premise of the near repeat phenomenon is that if a given location is the target of a crime, nearby locations will have an increased chance of being targeted for a limited time with the level of risk decaying with distance from the original target and over time. Robust analytical methods were developed to discover and further understand spatio-temporal clustering of crime incidents. The open source nature of these functions facilitate transparency and reproducibility in the analytical method and implementation across agencies/police management systems. Firstly, a new method for near repeat analysis is presented which expands current techniques through graphical linkage of crime incidents given spatio-temporal proximity. Next, this method is used to evaluate the prevalence of near repeats across cities of scale. Given this, a method for determining optimal parameters is presented and utilised to determine the optimal parameters (inter-incident time/distance).

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