The copula Gaussian graphical model (CGGM) is one of the major mathematical models for high dimensional biological networks which provides a graphical representation, espe-cially, for sparse networks. Basically, this model uses a regression of the Gaussian graphical model (GGM) whose precision matrix describes the conditional dependence between the variables to estimate the coefficients of the linear regression model. The Bayesian inference for the model parameters is used to overcome the dimensional limitation of GGM under sparse networks and small sample sizes. But from the application in bench-mark data sets, it is seen that although CGGM is successful in certain systems, it may not fit well for non-normal multivariate observations. In t...
Copulas allow to learn marginal distributions separately from the multivariate dependence structure ...
Due to technological breakthrough in recent decades and the rapid increase in the availability of mu...
We propose a semiparametric approach called the nonparanormal SKEPTIC for efficiently and robustly e...
A proper understanding of complex biological networks facilitates a better perception of those disea...
Naturally, genes interact with each other by forming a complicated network and the relationship betw...
Many biological and biomedical research areas such as drug design require analyzing the Gene Regulat...
The mathematical description of biological networks can be performed mainly by stochastic and determ...
We present a new methodology for selecting a Bayesian network for continuous data outside the widely...
Copulas are important models that allow to capture the dependence among variables. There are many ty...
The PC algorithm is the most popular algorithm used to infer the structure of a Bayesian network di...
In recent years, particularly, on the studies about the complex system’s diseases, better understand...
We propose a sparse high-dimensional time series chain graphical model for reconstructing genetic ne...
Gaussian graphical model (GGM) is an useful tool to describe the undirected associ-ations among the ...
In statistical literature, gene networks are represented by graphical models, known by their sparsit...
Multi-scale graphical models have attracted a lot of interests in solving real world problems, espec...
Copulas allow to learn marginal distributions separately from the multivariate dependence structure ...
Due to technological breakthrough in recent decades and the rapid increase in the availability of mu...
We propose a semiparametric approach called the nonparanormal SKEPTIC for efficiently and robustly e...
A proper understanding of complex biological networks facilitates a better perception of those disea...
Naturally, genes interact with each other by forming a complicated network and the relationship betw...
Many biological and biomedical research areas such as drug design require analyzing the Gene Regulat...
The mathematical description of biological networks can be performed mainly by stochastic and determ...
We present a new methodology for selecting a Bayesian network for continuous data outside the widely...
Copulas are important models that allow to capture the dependence among variables. There are many ty...
The PC algorithm is the most popular algorithm used to infer the structure of a Bayesian network di...
In recent years, particularly, on the studies about the complex system’s diseases, better understand...
We propose a sparse high-dimensional time series chain graphical model for reconstructing genetic ne...
Gaussian graphical model (GGM) is an useful tool to describe the undirected associ-ations among the ...
In statistical literature, gene networks are represented by graphical models, known by their sparsit...
Multi-scale graphical models have attracted a lot of interests in solving real world problems, espec...
Copulas allow to learn marginal distributions separately from the multivariate dependence structure ...
Due to technological breakthrough in recent decades and the rapid increase in the availability of mu...
We propose a semiparametric approach called the nonparanormal SKEPTIC for efficiently and robustly e...