We describe a model-based approach to analyse space–time count data. Such data can arise as a number of time series of counts, each representing a specific geographical area, i.e. as spatial time series, or as a number of spatial maps at different time points, i.e. as temporal spatial processes. We propose a Bayesian hierarchical formulation capable of embracing both cases, with principal kriging functions combined with latent parameters having prior distributions able to deal with spatial/temporal dependence. The methodology is applied to monitoring problems in environmental and epidemiological applications
An infectious disease spreads through contact between an individual who has the disease and one wh...
Data sets concerning economic indicators are usually organized by units of time such as months, quar...
This thesis illustrates and puts in context two of the main research projects I worked on during my ...
We describe a model-based approach to analyse space–time count data. Such data can arise as a number...
We describe a model-based approach to analyse space\u2013time count data. Such data can arise as a n...
Spatial-temporal processes are prevalent especially in environmental sciences where, under most circ...
To contribute to a better understanding of the fundamental process behind the spatial and temporal ...
This paper discusses three modelling techniques, which apply to multiple time series data that corre...
Despite the fact that the amount of datasets containing long economic time series with a spatial ref...
Many branches within geography deal with variables that vary not only in space but also in time. The...
Model-based approaches for the analysis of areal count data are commonplace in spatiotemporal analys...
We describe an approach for identifying groups of dynamically similar locations in spatial time-seri...
Crime is a negative phenomenon that affects the daily life of the population and its development. Wh...
This thesis has contributed to the advancement of knowledge in disease modelling by addressing inter...
This paper proposes a general procedure to analyse high-dimensional spatio-temporal count data, with...
An infectious disease spreads through contact between an individual who has the disease and one wh...
Data sets concerning economic indicators are usually organized by units of time such as months, quar...
This thesis illustrates and puts in context two of the main research projects I worked on during my ...
We describe a model-based approach to analyse space–time count data. Such data can arise as a number...
We describe a model-based approach to analyse space\u2013time count data. Such data can arise as a n...
Spatial-temporal processes are prevalent especially in environmental sciences where, under most circ...
To contribute to a better understanding of the fundamental process behind the spatial and temporal ...
This paper discusses three modelling techniques, which apply to multiple time series data that corre...
Despite the fact that the amount of datasets containing long economic time series with a spatial ref...
Many branches within geography deal with variables that vary not only in space but also in time. The...
Model-based approaches for the analysis of areal count data are commonplace in spatiotemporal analys...
We describe an approach for identifying groups of dynamically similar locations in spatial time-seri...
Crime is a negative phenomenon that affects the daily life of the population and its development. Wh...
This thesis has contributed to the advancement of knowledge in disease modelling by addressing inter...
This paper proposes a general procedure to analyse high-dimensional spatio-temporal count data, with...
An infectious disease spreads through contact between an individual who has the disease and one wh...
Data sets concerning economic indicators are usually organized by units of time such as months, quar...
This thesis illustrates and puts in context two of the main research projects I worked on during my ...