none3noHierarchical spatio-temporal models allow for the consideration and estimation of many sources of variability. A general spatio-temporal model can be written as the sum of a spatio-temporal trend and a spatio-temporal random effect. When spatial locations are considered to be homogeneous with respect to some exogenous features, the groups of locations may share a common spatial domain. Differences between groups can be highlighted both in the large-scale, spatio-temporal component and in the spatio-temporal dependence structure. When these differences are not included in the model specification, model performance and spatio-temporal predictions may be weak. This paper proposes a method for evaluating and comparing models that progre...
none2noWe describe a model-based approach to analyse space–time count data. Such data can arise as a...
We introduce a Bayesian multivariate hierarchical framework to estimate a space-time process model ...
This short paper introduces the special issue containing six selected papers coming from the Intern...
Hierarchical spatio-temporal models allow for the consideration and estimation of many sources of va...
Hierarchical spatio-temporal models permit to estimate many sources of variability. In many environm...
Spatio-temporal statistical methods are developing into an important research topic that goes beyond...
Spatial-temporal processes are prevalent especially in environmental sciences where, under most circ...
The statistical evaluation of an air quality model is part of a broader process, generally referred ...
A more sensible use of monitoring data for the evaluation and development of regional-scale atmosphe...
Despite the fact that the amount of datasets containing long economic time series with a spatial ref...
Bayesian hierarchical spatio-temporal models are becoming increasingly important due to the increasi...
This thesis addresses spatial interpolation and temporal prediction using air pollution data by seve...
Increasingly large volumes of space-time data are collected everywhere by mobile computing applicati...
In this paper we propose a hierarchical spatio-temporal model for daily mean concentrations of PM10 ...
none4The past two decades have witnessed an increasing interest in the use of space-time models for ...
none2noWe describe a model-based approach to analyse space–time count data. Such data can arise as a...
We introduce a Bayesian multivariate hierarchical framework to estimate a space-time process model ...
This short paper introduces the special issue containing six selected papers coming from the Intern...
Hierarchical spatio-temporal models allow for the consideration and estimation of many sources of va...
Hierarchical spatio-temporal models permit to estimate many sources of variability. In many environm...
Spatio-temporal statistical methods are developing into an important research topic that goes beyond...
Spatial-temporal processes are prevalent especially in environmental sciences where, under most circ...
The statistical evaluation of an air quality model is part of a broader process, generally referred ...
A more sensible use of monitoring data for the evaluation and development of regional-scale atmosphe...
Despite the fact that the amount of datasets containing long economic time series with a spatial ref...
Bayesian hierarchical spatio-temporal models are becoming increasingly important due to the increasi...
This thesis addresses spatial interpolation and temporal prediction using air pollution data by seve...
Increasingly large volumes of space-time data are collected everywhere by mobile computing applicati...
In this paper we propose a hierarchical spatio-temporal model for daily mean concentrations of PM10 ...
none4The past two decades have witnessed an increasing interest in the use of space-time models for ...
none2noWe describe a model-based approach to analyse space–time count data. Such data can arise as a...
We introduce a Bayesian multivariate hierarchical framework to estimate a space-time process model ...
This short paper introduces the special issue containing six selected papers coming from the Intern...