Communities are affected adversely by a range of social harm events, such as crime, traffic crashes, medical emergencies, and drug use. The police, fire, health and social service departments are tasked with mitigating such social harm through various types of interventions. While various different social harm indices have been proposed for allocating resources to spatially fixed hotspots, the risk of social harm events is dynamic, and new algorithms and software systems that are capable of quickly identifying risks and triggering appropriate public safety responses are needed. We propose a novel modulated Hawkes process for this purpose that offers flexible approaches to both (i) the incorporation of spatial covariates and leading indicato...
This research introduces a dynamic methodology that can be used to monitor social issues using spati...
corresponding author This chapter aims at identifying accident hot spots by means of a local indicat...
Objective. To develop a conceptual computational agent-based model (ABM) to explore community-wide v...
As more and more datasets with self-exciting properties become available, the demand for robust mode...
Social harm involves incidents resulting in physical, financial, and emotional hardships such as cri...
The counting process is the fundamental of many real-world problems with event data. Poisson process...
Communities are adversely affected by heterogeneous social harm events (e.g., crime, traffic crashes...
The counting process is the fundamental of many real-world problems with event data. Poisson pr...
Recent studies suggest the effective application of Hawkes point process models to describe the self...
Many real life processes that we would like to model have a self-exciting property, i.e. the occurre...
Self-exciting point processes are widely used to model events occurring in time and space whose rate...
In recent decades there has been tremendous growth in new statistical methods and applications for m...
Motivated by the analysis of crime data in Bucaramanga (Colombia), we propose a spatio-temporal Hawk...
We present a model to predict spatial hotspots, defined as the regions in a future time period that ...
We report on the adaptation of an immune-inspired instance selection technique to solve a real-world...
This research introduces a dynamic methodology that can be used to monitor social issues using spati...
corresponding author This chapter aims at identifying accident hot spots by means of a local indicat...
Objective. To develop a conceptual computational agent-based model (ABM) to explore community-wide v...
As more and more datasets with self-exciting properties become available, the demand for robust mode...
Social harm involves incidents resulting in physical, financial, and emotional hardships such as cri...
The counting process is the fundamental of many real-world problems with event data. Poisson process...
Communities are adversely affected by heterogeneous social harm events (e.g., crime, traffic crashes...
The counting process is the fundamental of many real-world problems with event data. Poisson pr...
Recent studies suggest the effective application of Hawkes point process models to describe the self...
Many real life processes that we would like to model have a self-exciting property, i.e. the occurre...
Self-exciting point processes are widely used to model events occurring in time and space whose rate...
In recent decades there has been tremendous growth in new statistical methods and applications for m...
Motivated by the analysis of crime data in Bucaramanga (Colombia), we propose a spatio-temporal Hawk...
We present a model to predict spatial hotspots, defined as the regions in a future time period that ...
We report on the adaptation of an immune-inspired instance selection technique to solve a real-world...
This research introduces a dynamic methodology that can be used to monitor social issues using spati...
corresponding author This chapter aims at identifying accident hot spots by means of a local indicat...
Objective. To develop a conceptual computational agent-based model (ABM) to explore community-wide v...