Hierarchical 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 progressively ...
Bayesian hierarchical spatio-temporal models are becoming increasingly important due to the increasi...
In the last two decades, increasing attention has been given to air pollution around the world, main...
This short paper introduces the special issue containing six selected papers coming from the Intern...
none3noHierarchical spatio-temporal models allow for the consideration and estimation of many source...
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 ...
Increasingly large volumes of space-time data are collected everywhere by mobile computing applicati...
A more sensible use of monitoring data for the evaluation and development of regional-scale atmosphe...
This thesis addresses spatial interpolation and temporal prediction using air pollution data by seve...
Despite the fact that the amount of datasets containing long economic time series with a spatial ref...
In this paper, hierarchical models are proposed as a general approach for spatio-temporal problems, ...
In this paper we propose a hierarchical spatio-temporal model for daily mean concentrations of PM10 ...
The entire dissertation/thesis text is included in the research.pdf file; the official abstract appe...
Bayesian hierarchical spatio-temporal models are becoming increasingly important due to the increasi...
In the last two decades, increasing attention has been given to air pollution around the world, main...
This short paper introduces the special issue containing six selected papers coming from the Intern...
none3noHierarchical spatio-temporal models allow for the consideration and estimation of many source...
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 ...
Increasingly large volumes of space-time data are collected everywhere by mobile computing applicati...
A more sensible use of monitoring data for the evaluation and development of regional-scale atmosphe...
This thesis addresses spatial interpolation and temporal prediction using air pollution data by seve...
Despite the fact that the amount of datasets containing long economic time series with a spatial ref...
In this paper, hierarchical models are proposed as a general approach for spatio-temporal problems, ...
In this paper we propose a hierarchical spatio-temporal model for daily mean concentrations of PM10 ...
The entire dissertation/thesis text is included in the research.pdf file; the official abstract appe...
Bayesian hierarchical spatio-temporal models are becoming increasingly important due to the increasi...
In the last two decades, increasing attention has been given to air pollution around the world, main...
This short paper introduces the special issue containing six selected papers coming from the Intern...