Gaussian Multiscale graphical models are powerful tools to describe high-dimensional spatial data; they capture longrange statistical dependencies among distant sites by introducing coarser scales. However, such models are only applicable to Gaussian data. In this paper, a new class of copula Gaussian multiscale graphical models is proposed which possesses rich modeling capabilities and computational efficiency while eliminating the Gaussian assumption. Numerical results are presented for synthetic data as well as data from a few applications in geophysics - models of sea surface temperature and Asian rainfall patterns.Published versio
Research on extreme events modeling has grown in prominence due to the destructive influence and inc...
For multivariate spatial Gaussian process (GP) models, customary specifications of cross-covariance ...
A Bayesian hierarchical framework with a Gaussian copula and a generalized extreme value (GEV) margi...
Gaussian Multiscale graphical models are powerful tools to describe high-dimensional spatial data; t...
Conference on Information Fusion (FUSION) and is made available as an electronic reprint (preprint) ...
Multi-scale graphical models have attracted a lot of interests in solving real world problems, espec...
Graphical models, which can be viewed as a marriage of graph theory and probability theory, provide ...
Copula Gaussian graphical models are powerful tools to describe dependencies between a large scale o...
<p>We propose a new copula model that can be used with replicated spatial data. Unlike the multivari...
Graduation date: 2012A copula is the representation of a multivariate distribution. Copulas are use...
Abstract—We propose a new statistical model that captures the conditional dependence among extreme e...
We propose a new statistical model that captures the conditional dependence among extreme events in ...
Gaussian hidden variable graphical models are powerful tools to describe high-dimensional data; they...
This is the dataset used in the submitted manuscript entitled "Multivariate Modeling of Spatial Extr...
This paper demonstrates how empirical copulas can be used to describe and model spatial dependence s...
Research on extreme events modeling has grown in prominence due to the destructive influence and inc...
For multivariate spatial Gaussian process (GP) models, customary specifications of cross-covariance ...
A Bayesian hierarchical framework with a Gaussian copula and a generalized extreme value (GEV) margi...
Gaussian Multiscale graphical models are powerful tools to describe high-dimensional spatial data; t...
Conference on Information Fusion (FUSION) and is made available as an electronic reprint (preprint) ...
Multi-scale graphical models have attracted a lot of interests in solving real world problems, espec...
Graphical models, which can be viewed as a marriage of graph theory and probability theory, provide ...
Copula Gaussian graphical models are powerful tools to describe dependencies between a large scale o...
<p>We propose a new copula model that can be used with replicated spatial data. Unlike the multivari...
Graduation date: 2012A copula is the representation of a multivariate distribution. Copulas are use...
Abstract—We propose a new statistical model that captures the conditional dependence among extreme e...
We propose a new statistical model that captures the conditional dependence among extreme events in ...
Gaussian hidden variable graphical models are powerful tools to describe high-dimensional data; they...
This is the dataset used in the submitted manuscript entitled "Multivariate Modeling of Spatial Extr...
This paper demonstrates how empirical copulas can be used to describe and model spatial dependence s...
Research on extreme events modeling has grown in prominence due to the destructive influence and inc...
For multivariate spatial Gaussian process (GP) models, customary specifications of cross-covariance ...
A Bayesian hierarchical framework with a Gaussian copula and a generalized extreme value (GEV) margi...