Given a discrete sample of event locations, we wish to produce a probability density that models the relative probability of events occurring in a spatial domain. Standard density estimation techniques do not incorporate priors informed by spatial data. Such methods can result in assigning significant positive probability to locations where events cannot realistically occur. In particular, when modelling residential burglaries, standard density estimation can predict residential burglaries occurring where there are no residences. Incorporating the spatial data can inform the valid region for the density. When modelling very few events, additional priors can help to correctly fill in the gaps. Learning and enforcing correlation between spati...
SUMMARY: Burglary location, poverty, education, income, and population density data were collected f...
Utilizing statistical methods as a risk assessment tool can lead to potentially effective solutions ...
Incredible amounts of crime data are freely available to the public through open data initiatives. T...
Given a discrete sample of event locations, we wish to produce a probability density that models the...
The spatial features within a region influence many processes in human activity. Mountains, lakes, ...
In this dissertation, numerical optimization methods for three different classes of problems are pr...
We propose a nonparametric method for density estimation over (possibly complicated) spatial domains...
<p>This study considers semiparametric spatial autoregressive models that allow for endogenous regre...
Likelihood surface methods for geographic offender profiling rely on several assumptions regarding t...
Intelligent crime analysis allows for a greater understanding of the dynamics of unlawful activities...
Self-exciting point processes have been proposed as models for the location of criminal events in sp...
Abstract. We consider the problem of estimating the probability density of the “anchor point” (resid...
We develop a panel count model with a latent spatio-temporal heterogeneous state process for monthly...
There are multiple geographical crime prediction techniques to use and comparing different predictio...
ABSTRACT This paper focuses on finding spatial and temporal criminal hotspots. It analyses two diff...
SUMMARY: Burglary location, poverty, education, income, and population density data were collected f...
Utilizing statistical methods as a risk assessment tool can lead to potentially effective solutions ...
Incredible amounts of crime data are freely available to the public through open data initiatives. T...
Given a discrete sample of event locations, we wish to produce a probability density that models the...
The spatial features within a region influence many processes in human activity. Mountains, lakes, ...
In this dissertation, numerical optimization methods for three different classes of problems are pr...
We propose a nonparametric method for density estimation over (possibly complicated) spatial domains...
<p>This study considers semiparametric spatial autoregressive models that allow for endogenous regre...
Likelihood surface methods for geographic offender profiling rely on several assumptions regarding t...
Intelligent crime analysis allows for a greater understanding of the dynamics of unlawful activities...
Self-exciting point processes have been proposed as models for the location of criminal events in sp...
Abstract. We consider the problem of estimating the probability density of the “anchor point” (resid...
We develop a panel count model with a latent spatio-temporal heterogeneous state process for monthly...
There are multiple geographical crime prediction techniques to use and comparing different predictio...
ABSTRACT This paper focuses on finding spatial and temporal criminal hotspots. It analyses two diff...
SUMMARY: Burglary location, poverty, education, income, and population density data were collected f...
Utilizing statistical methods as a risk assessment tool can lead to potentially effective solutions ...
Incredible amounts of crime data are freely available to the public through open data initiatives. T...