Exploring data assimilation and forecasting issues for an urban crime model
Authored by Martin B Short, David J B Lloyd, Naratip Santitissadeekorn
Date Published: 2016
DOI: 10.1017/s0956792515000625
Sponsors:
United Kingdom Engineering and Physical Sciences Research Council (EPSRC)
Platforms:
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Model Documentation:
Other Narrative
Mathematical description
Model Code URLs:
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Abstract
In this paper, we explore some of the various issues that may occur in
attempting to fit a dynamical systems (either agent-or continuum-based)
model of urban crime to data on just the attack times and locations. We
show how one may carry out a regression analysis for the model described
by Short et al. (2008, Math. Mod. Meth. Appl. Sci.) by using simulated
attack data from the agent-based model. It is discussed how one can
incorporate the attack data into the partial differential equations for
the expected attractiveness to burgle and the criminal density to
predict crime rates between attacks. Using this predicted crime rate, we
derive a likelihood function that one can maximise in order to fit
parameters and/or initial conditions for the model. We focus on carrying
out data assimilation for two different parameter regions, namely in the
case where stationary and non-stationary crime hotspots form. It is
found that the likelihood function is `flat' for large ranges of
parameters, and that this has major implications for crime forecasting.
Hence, we look at how one might carry out a goodness-of-fit and
forecasting analysis for crime rates given the range of parameter fits.
We show how one can use the Kolmogorov-Smirnov statistic to assess the
goodness-of-fit. The dynamical systems analysis of the partial
differential equations proves invaluable to understanding how the crime
rate forecasts depend on the parameters and their sensitivity. Finally, we outline several interesting directions for future research in this
area where we believe that the combination of dynamical systems
modelling, analysis, and data assimilation can prove effective in
developing policing strategies for urban crime.
Tags
patterns
hotspots
Criminal behavior