none2noIn this paper, the problem of combining information from different data sources is considered. We focus our attention on spatially misaligned data, where available information (typically counts or rates from administrative sources) refers to spatial units that are different from the ones of interest. A hierarchical Bayesian perspective is considered, as proposed by Mugglin et al. in 2000, to provide a fully model-based approach in an inferential, and not only descriptive, sense. In particular, explanatory covariates are arranged to be modeled according to spatial correlations through a conditionally autoregressive prior structure. In order to assess model performance and its robustness we generate artificial data inspired by ...
Details of the data analyzed using our proposed Bayesian hierarchical model for combining sources at...
Spatial data are now prevalent in a wide range of fields including environmental and health science....
The present work is concerned with the study of the properties of a model for spatially misaligned d...
In this paper, the problem of combining information from different data sources is considered. We f...
In this paper, the problem of combining information from different data sources is considered. We fo...
In this paper we consider inference using multivariate data that are spatially misaligned, i.e., inv...
The degree of segregation between two or more sub-populations has been studied since the 1950s, and ...
Spatio-temporal statistical methods are developing into an important research topic that goes beyond...
AbstractThe degree of segregation between two or more sub-populations has been studied since the 195...
Multilevel or Hierarchical models are statistical models that allow for parameter estimation at more...
Spatial misalignment occurs when at least one of multiple outcome variables is missing at an observe...
La crescente disponibilitàdi dati georeferenziati implica anche lo sviluppo di opportuni metodi ...
Apparent spatial dependence might arise in either of two dierent ways: from spatial correlation, or ...
The aim of this paper is to evaluate the spatial and hierarchical models for data generating process...
In spatial epidemiology, a scaling effect due to an aggre-gation of data from a finer to a coarser l...
Details of the data analyzed using our proposed Bayesian hierarchical model for combining sources at...
Spatial data are now prevalent in a wide range of fields including environmental and health science....
The present work is concerned with the study of the properties of a model for spatially misaligned d...
In this paper, the problem of combining information from different data sources is considered. We f...
In this paper, the problem of combining information from different data sources is considered. We fo...
In this paper we consider inference using multivariate data that are spatially misaligned, i.e., inv...
The degree of segregation between two or more sub-populations has been studied since the 1950s, and ...
Spatio-temporal statistical methods are developing into an important research topic that goes beyond...
AbstractThe degree of segregation between two or more sub-populations has been studied since the 195...
Multilevel or Hierarchical models are statistical models that allow for parameter estimation at more...
Spatial misalignment occurs when at least one of multiple outcome variables is missing at an observe...
La crescente disponibilitàdi dati georeferenziati implica anche lo sviluppo di opportuni metodi ...
Apparent spatial dependence might arise in either of two dierent ways: from spatial correlation, or ...
The aim of this paper is to evaluate the spatial and hierarchical models for data generating process...
In spatial epidemiology, a scaling effect due to an aggre-gation of data from a finer to a coarser l...
Details of the data analyzed using our proposed Bayesian hierarchical model for combining sources at...
Spatial data are now prevalent in a wide range of fields including environmental and health science....
The present work is concerned with the study of the properties of a model for spatially misaligned d...