This article develops a set of tools for smoothing and prediction with dependent point event patterns. The methodology is motivated by the problem of tracking weekly maps of violent crime events, but is designed to be straightforward to adapt to a wide variety of alternative settings. In particular, a Bayesian semiparametric framework is introduced for modeling correlated time series of marked spatial Poisson processes. The likelihood is factored into two independent components: the set of total integrated intensities and a series of process densities. For the former it is assumed that Poisson intensities are realizations from a dynamic linear model. In the latter case, a novel class of dependent stick-breaking mixture models are proposed t...
Multivariate count models are rare in political science, despite the presence of many count time ser...
The non-homogeneous Poisson process provides a generalised framework for the modelling of random poi...
Spatial point pattern data are routinely encountered. A flexible regression model for the underlying...
This work provides a Bayesian nonparametric modeling framework for spatial point processes to accoun...
Self-exciting point processes are widely used to model events occurring in time and space whose rate...
The paper develops mixture models for spatially indexed data. We confine attention to the case of fi...
ABSTRACT: We propose a general modeling framework for marked Poisson processes observed over time or...
To obtain operational insights regarding the crime of burglary in London, we consider the estimation...
Crime is a negative phenomenon that affects the daily life of the population and its development. Wh...
We propose modeling for Poisson processes over time, exploiting the connection of the Poisson proces...
In recent decades there has been tremendous growth in new statistical methods and applications for m...
We present a model using process convolutions,which describes spatial and temporal variations of the...
This paper considers the problem of defining a time-dependent nonparametric prior for use in Bayesia...
Spatio-temporal hierarchical modeling is an extremely attractive way to model the spread of crime or...
Spatio-temporal hierarchical modeling is an extremely attractive way to model the spread of crime or...
Multivariate count models are rare in political science, despite the presence of many count time ser...
The non-homogeneous Poisson process provides a generalised framework for the modelling of random poi...
Spatial point pattern data are routinely encountered. A flexible regression model for the underlying...
This work provides a Bayesian nonparametric modeling framework for spatial point processes to accoun...
Self-exciting point processes are widely used to model events occurring in time and space whose rate...
The paper develops mixture models for spatially indexed data. We confine attention to the case of fi...
ABSTRACT: We propose a general modeling framework for marked Poisson processes observed over time or...
To obtain operational insights regarding the crime of burglary in London, we consider the estimation...
Crime is a negative phenomenon that affects the daily life of the population and its development. Wh...
We propose modeling for Poisson processes over time, exploiting the connection of the Poisson proces...
In recent decades there has been tremendous growth in new statistical methods and applications for m...
We present a model using process convolutions,which describes spatial and temporal variations of the...
This paper considers the problem of defining a time-dependent nonparametric prior for use in Bayesia...
Spatio-temporal hierarchical modeling is an extremely attractive way to model the spread of crime or...
Spatio-temporal hierarchical modeling is an extremely attractive way to model the spread of crime or...
Multivariate count models are rare in political science, despite the presence of many count time ser...
The non-homogeneous Poisson process provides a generalised framework for the modelling of random poi...
Spatial point pattern data are routinely encountered. A flexible regression model for the underlying...