Spatial data often display high levels of smoothness but can simultaneously present abrupt discontinuities, especially in urban environments. In this dissertation we adopt a Bayesian perspective to account for these two contrasting facts, using partitions of areal data, and we then focus on three challenges that arise in this setting. First, we consider the applied problem of modeling crime trends over time in Philadelphia, measured at a local neighborhood level. We find that spatially local shrinkage imposed by a conditional autoregressive (CAR) model has substantial benefits in terms of out-of-sample predictive accuracy of crime. We also detect spatial discontinuities between neighborhoods that represent barriers. Then, we extend our sear...
ABSTRACT: There is increasing attention being given to the spatial analysis of crime, particularly o...
This paper is a supplement paper to Knorr-Held and Rasser (1999), Discussion Paper 107. "Bayesian De...
This paper presents an alternative approach to the measurement of segregation that uses Bayesian sta...
Spatial data often display high levels of smoothness but can simultaneously present abrupt discontin...
Accurate estimation of the change in crime over time is a critical first step towards better underst...
Estimation of the spatial heterogeneity in crime incidence across an entire city is an important ste...
To obtain operational insights regarding the crime of burglary in London, we consider the estimation...
This work provides a Bayesian nonparametric modeling framework for spatial point processes to accoun...
Objectives: The influence of three hierarchical units of analysis on the total spatial variability o...
An interesting epidemiological problem is the analysis of geographical variation in rates of disease...
<p>In this thesis, temporal and spatial dependence are considered within nonparametric priors to hel...
Income inequality and crime are two social problems concerning many nations around the world. Such s...
The aim of this paper is to discuss the representation of space in statistical models of urban crime...
An interesting epidemiological problem is the analysis of geographical variation in rates of disease...
The spatial analysis of crime has occurred for nearly two centuries. Within criminology, research in...
ABSTRACT: There is increasing attention being given to the spatial analysis of crime, particularly o...
This paper is a supplement paper to Knorr-Held and Rasser (1999), Discussion Paper 107. "Bayesian De...
This paper presents an alternative approach to the measurement of segregation that uses Bayesian sta...
Spatial data often display high levels of smoothness but can simultaneously present abrupt discontin...
Accurate estimation of the change in crime over time is a critical first step towards better underst...
Estimation of the spatial heterogeneity in crime incidence across an entire city is an important ste...
To obtain operational insights regarding the crime of burglary in London, we consider the estimation...
This work provides a Bayesian nonparametric modeling framework for spatial point processes to accoun...
Objectives: The influence of three hierarchical units of analysis on the total spatial variability o...
An interesting epidemiological problem is the analysis of geographical variation in rates of disease...
<p>In this thesis, temporal and spatial dependence are considered within nonparametric priors to hel...
Income inequality and crime are two social problems concerning many nations around the world. Such s...
The aim of this paper is to discuss the representation of space in statistical models of urban crime...
An interesting epidemiological problem is the analysis of geographical variation in rates of disease...
The spatial analysis of crime has occurred for nearly two centuries. Within criminology, research in...
ABSTRACT: There is increasing attention being given to the spatial analysis of crime, particularly o...
This paper is a supplement paper to Knorr-Held and Rasser (1999), Discussion Paper 107. "Bayesian De...
This paper presents an alternative approach to the measurement of segregation that uses Bayesian sta...