A spatial point process is a stochastic model determining the locations of events in some region A ⊂ realsd. Events may be nests in a breeding colony of birds, tress in a forest, or cities in a country. One goal of spatial statistics is to model the underlying process and thus interpret a complicated point process through some parameter estimates based on the known locations of events from some spatial point processes;Techniques have been developed for estimating the parameters of spatial point process, given data at either the aggregate or point levels. However, it remains unclear how to model aggregate data (i.e., counts for sections) with a subset of point data (i.e., exact locations of some events). This study investigates a nonhomogene...
This paper describes a technique for computing approximate maximum pseudolikelihood estimates of the...
A spatial marked point process describes the locations of randomly distributed events in a region, w...
Spatial point pattern data are routinely encountered. A flexible regression model for the underlying...
A spatial point pattern consists of the locations of events in some sample window A ⊂ IR[superscript...
The paper presents introduction to spatial point processes and their characteristics. The reader is ...
[[abstract]]In the statistical analysis of spatial point patterns, it is often important to investig...
We summarize and discuss the current state of spatial point process theory and directions for future...
This work provides a Bayesian nonparametric modeling framework for spatial point processes to accoun...
This work provides a Bayesian nonparametric modeling framework for spatial point processes to accoun...
In Part I of this thesis, we briefly summarize some theory of point processes which is crucial for ...
Spatial point pattern data are routinely encountered. A flexible regression model for the underlying...
Spatial point pattern data are routinely encountered. A flexible regression model for the underlying...
In the statistical analysis of spatial point patterns, it is often important to investigate whether ...
We summarize and discuss the current state of spatial point processtheory and directions for future ...
This paper describes a technique for computing approximate maximum pseudolikelihood estimates of the...
This paper describes a technique for computing approximate maximum pseudolikelihood estimates of the...
A spatial marked point process describes the locations of randomly distributed events in a region, w...
Spatial point pattern data are routinely encountered. A flexible regression model for the underlying...
A spatial point pattern consists of the locations of events in some sample window A ⊂ IR[superscript...
The paper presents introduction to spatial point processes and their characteristics. The reader is ...
[[abstract]]In the statistical analysis of spatial point patterns, it is often important to investig...
We summarize and discuss the current state of spatial point process theory and directions for future...
This work provides a Bayesian nonparametric modeling framework for spatial point processes to accoun...
This work provides a Bayesian nonparametric modeling framework for spatial point processes to accoun...
In Part I of this thesis, we briefly summarize some theory of point processes which is crucial for ...
Spatial point pattern data are routinely encountered. A flexible regression model for the underlying...
Spatial point pattern data are routinely encountered. A flexible regression model for the underlying...
In the statistical analysis of spatial point patterns, it is often important to investigate whether ...
We summarize and discuss the current state of spatial point processtheory and directions for future ...
This paper describes a technique for computing approximate maximum pseudolikelihood estimates of the...
This paper describes a technique for computing approximate maximum pseudolikelihood estimates of the...
A spatial marked point process describes the locations of randomly distributed events in a region, w...
Spatial point pattern data are routinely encountered. A flexible regression model for the underlying...