summary:The paper deals with Cox point processes in time and space with Lévy based driving intensity. Using the generating functional, formulas for theoretical characteristics are available. Because of potential applications in biology a Cox process sampled by a curve is discussed in detail. The filtering of the driving intensity based on observed point process events is developed in space and time for a parametric model with a background driving compound Poisson field delimited by special test sets. A hierarchical Bayesian model with point process densities yields the posterior. Markov chain Monte Carlo "Metropolis within Gibbs" algorithm enables simultaneous filtering and parameter estimation. Posterior predictive distributions are used f...
summary:Doubly stochastic point processes driven by non-Gaussian Ornstein–Uhlenbeck type processes a...
summary:Doubly stochastic point processes driven by non-Gaussian Ornstein–Uhlenbeck type processes a...
This paper introduces an R package for spatial and spatio-temporal prediction and forecasting for lo...
summary:The paper deals with Cox point processes in time and space with Lévy based driving intensity...
summary:The paper deals with Cox point processes in time and space with Lévy based driving intensity...
Title: Spatio-temporal point processes Author: Blažena Frcalová Department: Department of Probabilit...
Title: Spatio-temporal point processes Author: Blažena Frcalová Department: Department of Probabilit...
The background theory of point processes, spatio-temporal point processes, random measures and rando...
Les processus ponctuels sont souvent utilisés comme modèles de répartitions spatiales ou spatio-temp...
Les processus ponctuels sont souvent utilisés comme modèles de répartitions spatiales ou spatio-temp...
Probabilistic properties of Cox processes of relevance for statistical modelling and inference are s...
The thesis deals with Cox point processes driven by processes of Ornstein-Uhlenbeck (OU) type. Proce...
The thesis deals with Cox point processes driven by processes of Ornstein-Uhlenbeck (OU) type. Proce...
Probabilistic properties of Cox processes of relevance for statistical modelling and inference are s...
Spatio-temporal Cox point process models with a multiplicative structure for the driving random inte...
summary:Doubly stochastic point processes driven by non-Gaussian Ornstein–Uhlenbeck type processes a...
summary:Doubly stochastic point processes driven by non-Gaussian Ornstein–Uhlenbeck type processes a...
This paper introduces an R package for spatial and spatio-temporal prediction and forecasting for lo...
summary:The paper deals with Cox point processes in time and space with Lévy based driving intensity...
summary:The paper deals with Cox point processes in time and space with Lévy based driving intensity...
Title: Spatio-temporal point processes Author: Blažena Frcalová Department: Department of Probabilit...
Title: Spatio-temporal point processes Author: Blažena Frcalová Department: Department of Probabilit...
The background theory of point processes, spatio-temporal point processes, random measures and rando...
Les processus ponctuels sont souvent utilisés comme modèles de répartitions spatiales ou spatio-temp...
Les processus ponctuels sont souvent utilisés comme modèles de répartitions spatiales ou spatio-temp...
Probabilistic properties of Cox processes of relevance for statistical modelling and inference are s...
The thesis deals with Cox point processes driven by processes of Ornstein-Uhlenbeck (OU) type. Proce...
The thesis deals with Cox point processes driven by processes of Ornstein-Uhlenbeck (OU) type. Proce...
Probabilistic properties of Cox processes of relevance for statistical modelling and inference are s...
Spatio-temporal Cox point process models with a multiplicative structure for the driving random inte...
summary:Doubly stochastic point processes driven by non-Gaussian Ornstein–Uhlenbeck type processes a...
summary:Doubly stochastic point processes driven by non-Gaussian Ornstein–Uhlenbeck type processes a...
This paper introduces an R package for spatial and spatio-temporal prediction and forecasting for lo...