Graphical models have long been studied in statistics as a tool for inferring conditional independence relationships among a large set of random variables. The most existing works in graphical modeling focus on the cases that the data are Gaussian or mixed and the variables are linearly dependent. In this paper, we propose a double regression method for learning graphical models under the high-dimensional nonlinear and non-Gaussian setting, and prove that the proposed method is consistent under mild conditions. The proposed method works by performing a series of nonparametric conditional independence tests. The conditioning set of each test is reduced via a double regression procedure where a model-free sure independence screening procedure...
Gaussian graphical regression is a powerful means that regresses the precision matrix of a Gaussian ...
Gaussian graphical models (GGMs) are a popular tool to learn the dependence structure in the form of...
This thesis introduces a new method for solving the linear regression problem where the number of ob...
We introduce a sufficient graphical model by applying the recently developed nonlinear sufficient di...
Undirected probabilistic graphical models represent the conditional dependencies, or Markov properti...
We present two methodologies to deal with high-dimensional data with mixed variables, the strongly d...
Graphical models have recently regained interest in the statistical literature for describing associ...
A graphical model captures conditional relationships among a set of random variables via a graph. Un...
In recent years, there has been considerable interest in estimating conditional independence graphs ...
Networks with a very large number of nodes appear in many application areas and pose challenges for ...
We consider the problem of estimating a sparse dynamic Gaussian graphical model with L1 penalized ma...
Gaussian Graphical Models (GGMs) are extensively used in many research areas, such as genomics, prot...
Gaussian double Markovian models consist of covariance matrices constrained by a pair of graphs spec...
We introduce a nonparametric method for estimating non-Gaussian graphical models based on a new stat...
Graphical models have attracted increasing attention in recent years, especially in settings involvi...
Gaussian graphical regression is a powerful means that regresses the precision matrix of a Gaussian ...
Gaussian graphical models (GGMs) are a popular tool to learn the dependence structure in the form of...
This thesis introduces a new method for solving the linear regression problem where the number of ob...
We introduce a sufficient graphical model by applying the recently developed nonlinear sufficient di...
Undirected probabilistic graphical models represent the conditional dependencies, or Markov properti...
We present two methodologies to deal with high-dimensional data with mixed variables, the strongly d...
Graphical models have recently regained interest in the statistical literature for describing associ...
A graphical model captures conditional relationships among a set of random variables via a graph. Un...
In recent years, there has been considerable interest in estimating conditional independence graphs ...
Networks with a very large number of nodes appear in many application areas and pose challenges for ...
We consider the problem of estimating a sparse dynamic Gaussian graphical model with L1 penalized ma...
Gaussian Graphical Models (GGMs) are extensively used in many research areas, such as genomics, prot...
Gaussian double Markovian models consist of covariance matrices constrained by a pair of graphs spec...
We introduce a nonparametric method for estimating non-Gaussian graphical models based on a new stat...
Graphical models have attracted increasing attention in recent years, especially in settings involvi...
Gaussian graphical regression is a powerful means that regresses the precision matrix of a Gaussian ...
Gaussian graphical models (GGMs) are a popular tool to learn the dependence structure in the form of...
This thesis introduces a new method for solving the linear regression problem where the number of ob...