Directional data arise in various contexts such as oceanography (wave directions) and meteorology (wind directions), as well as with measurements on a periodic scale (weekdays, hours etc.). Our contribution is to introduce a model-based approach to handle periodic data in the case of measurements taken at spatial locations, anticipating structured dependence between these measurements. We formulate a wrapped Gaussian spatial process model for this setting, induced from a customary \textit{linear} Gaussian process.We build a hierarchical model to handle this situation and show that the fitting of such a model is possible using standard Markov chain Monte Carlo methods. Our approach enables spatial interpolation (and can accommodate measureme...
In this paper we first describe the class of log-Gaussian Cox processes (LGCPs) as models for spatia...
CircSpaceTime is the only R package, currently available, that implements Bayesian models for spatia...
This paper describes a method of improving spatial analyses by using a process model to define the s...
Directional data arise in various contexts such as oceanography (wave directions) and meteorology (w...
In the present work we review modeling strategies based on wrapped Gaussian processes defined to mod...
In the present work we review modeling strategies based on wrapped Gaussian processes defined to mod...
<p>Directional data, i.e., data collected in the form of angles or natural directions arise in many ...
In application we often find directional data that is associated with locations in space and time. ...
We consider modeling of angular or directional data viewed as a linear variable wrapped onto a unit...
We consider modeling of angular or directional data viewed as a linear variable wrapped onto a unit...
In various marine operations, it is useful to have a better understanding of factors that influence ...
CircSpaceTime is the only R package, currently available, that implements Bayesian models for spatia...
CircSpaceTime is the only R package, currently available, that implements Bayesian models for spatia...
A spatial marked point process describes the locations of randomly distributed events in a region, w...
In this paper we first describe the class of log-Gaussian Cox processes (LGCPs) as models for spatia...
In this paper we first describe the class of log-Gaussian Cox processes (LGCPs) as models for spatia...
CircSpaceTime is the only R package, currently available, that implements Bayesian models for spatia...
This paper describes a method of improving spatial analyses by using a process model to define the s...
Directional data arise in various contexts such as oceanography (wave directions) and meteorology (w...
In the present work we review modeling strategies based on wrapped Gaussian processes defined to mod...
In the present work we review modeling strategies based on wrapped Gaussian processes defined to mod...
<p>Directional data, i.e., data collected in the form of angles or natural directions arise in many ...
In application we often find directional data that is associated with locations in space and time. ...
We consider modeling of angular or directional data viewed as a linear variable wrapped onto a unit...
We consider modeling of angular or directional data viewed as a linear variable wrapped onto a unit...
In various marine operations, it is useful to have a better understanding of factors that influence ...
CircSpaceTime is the only R package, currently available, that implements Bayesian models for spatia...
CircSpaceTime is the only R package, currently available, that implements Bayesian models for spatia...
A spatial marked point process describes the locations of randomly distributed events in a region, w...
In this paper we first describe the class of log-Gaussian Cox processes (LGCPs) as models for spatia...
In this paper we first describe the class of log-Gaussian Cox processes (LGCPs) as models for spatia...
CircSpaceTime is the only R package, currently available, that implements Bayesian models for spatia...
This paper describes a method of improving spatial analyses by using a process model to define the s...