Many causal processes have spatial and temporal dimensions. Yet the classic causal inference framework is not directly applicable when the treatment and outcome variables are generated by spatio-temporal point processes. We extend the potential outcomes framework to these settings by formulating the treatment point process as a stochastic intervention. Our causal estimands include the expected number of outcome events in a specified area under a particular stochastic treatment assignment strategy. Our methodology allows for arbitrary patterns of spatial spillover and temporal carryover effects. Using martingale theory, we show that the proposed estimator is consistent and asymptotically normal as the number of time periods increases. We pro...
We consider design-based causal inference in settings where randomized treatments have effects that ...
Machine learning models based on temporal point processes are the state of the art in a wide variety...
In recent decades there has been tremendous growth in new statistical methods and applications for m...
The scientific rigor and computational methods of causal inference have had great impacts on many di...
We develop flexible multivariate spatio-temporal Hawkes process models to analyze patterns of terror...
Many events and policies (treatments) occur at specific spatial locations, with researchers interest...
A spatial marked point process describes the locations of randomly distributed events in a region, w...
Spatio-temporal hierarchical modeling is an extremely attractive way to model the spread of crime or...
Terrorism persists as a worldwide threat, as exemplified by the ongoing lethal attacks perpetrated b...
This thesis illustrates and puts in context two of the main research projects I worked on during my ...
This dissertation focuses on prediction and inference problems for complex spatiotemporal systems. I...
Spatio-temporal hierarchical modeling is an extremely attractive way to model the spread of crime or...
The methodological development of this paper is motivated by the need to address the following scien...
Terrorism persists as a worldwide threat, as exemplified by the on‐going lethal attacks perpetrated ...
Terrorism persists as a worldwide threat, as exemplified by the on‐going lethal attacks perpetrated ...
We consider design-based causal inference in settings where randomized treatments have effects that ...
Machine learning models based on temporal point processes are the state of the art in a wide variety...
In recent decades there has been tremendous growth in new statistical methods and applications for m...
The scientific rigor and computational methods of causal inference have had great impacts on many di...
We develop flexible multivariate spatio-temporal Hawkes process models to analyze patterns of terror...
Many events and policies (treatments) occur at specific spatial locations, with researchers interest...
A spatial marked point process describes the locations of randomly distributed events in a region, w...
Spatio-temporal hierarchical modeling is an extremely attractive way to model the spread of crime or...
Terrorism persists as a worldwide threat, as exemplified by the ongoing lethal attacks perpetrated b...
This thesis illustrates and puts in context two of the main research projects I worked on during my ...
This dissertation focuses on prediction and inference problems for complex spatiotemporal systems. I...
Spatio-temporal hierarchical modeling is an extremely attractive way to model the spread of crime or...
The methodological development of this paper is motivated by the need to address the following scien...
Terrorism persists as a worldwide threat, as exemplified by the on‐going lethal attacks perpetrated ...
Terrorism persists as a worldwide threat, as exemplified by the on‐going lethal attacks perpetrated ...
We consider design-based causal inference in settings where randomized treatments have effects that ...
Machine learning models based on temporal point processes are the state of the art in a wide variety...
In recent decades there has been tremendous growth in new statistical methods and applications for m...