When data are available for all nodes of a Gaussian graphical model, then, it is possible to use sample correlations and partial correlations to test to what extent the conditional independencies that encode the structure of the model are indeed verified by the data. In this paper, we give a heuristic rule useful in such a validation process: When the correlation subgraph involved in a conditional independence is balanced (i.e., all its cycles have an even number of negative edges), then a partial correlation is usually a contraction of the corresponding correlation, which often leads to conditional independence. In particular, the contraction rule can be made rigorous if we look at concentration subgraphs rather than correlation subgraphs....
<p>In an ecosystem, the abundance of any OTU is potentially dependent on the abundances of other OTU...
<p>Undirected graphical models are important in a number of modern applications that involve explori...
The construction of causal graphs from non-experimental data rests on a set of constraints that the ...
When data are available for all nodes of a Gaussian graphical model, then, it is possible to use sam...
Partial correlations are the natural interaction terms to be associated with the edges of the indepe...
As a powerful tool for analyzing full conditional (in-)dependencies between random variables, graphi...
A concentration graph associated with a random vector is an undirected graph where each vertex corre...
One of the common obstacles for learning causal models from data is that high-order conditional inde...
Title: Study of the dependence structure in economic and financial data Author: Radana Hlavandová De...
In this paper we study conditional independence structures arising from conditional probabilities an...
Graphical models are a powerful tool for causal model specification. Besides al-lowing for a hierarc...
The manner in which the conditional independence graph of a multiway contingency table effects the f...
We introduce a nonparametric method for estimating non-Gaussian graphical models based on a new stat...
<p>We consider the problem of modeling conditional independence structures in heterogenous data in t...
Structural vector autoregressions allow contemporaneous series dependence and assume errors with no ...
<p>In an ecosystem, the abundance of any OTU is potentially dependent on the abundances of other OTU...
<p>Undirected graphical models are important in a number of modern applications that involve explori...
The construction of causal graphs from non-experimental data rests on a set of constraints that the ...
When data are available for all nodes of a Gaussian graphical model, then, it is possible to use sam...
Partial correlations are the natural interaction terms to be associated with the edges of the indepe...
As a powerful tool for analyzing full conditional (in-)dependencies between random variables, graphi...
A concentration graph associated with a random vector is an undirected graph where each vertex corre...
One of the common obstacles for learning causal models from data is that high-order conditional inde...
Title: Study of the dependence structure in economic and financial data Author: Radana Hlavandová De...
In this paper we study conditional independence structures arising from conditional probabilities an...
Graphical models are a powerful tool for causal model specification. Besides al-lowing for a hierarc...
The manner in which the conditional independence graph of a multiway contingency table effects the f...
We introduce a nonparametric method for estimating non-Gaussian graphical models based on a new stat...
<p>We consider the problem of modeling conditional independence structures in heterogenous data in t...
Structural vector autoregressions allow contemporaneous series dependence and assume errors with no ...
<p>In an ecosystem, the abundance of any OTU is potentially dependent on the abundances of other OTU...
<p>Undirected graphical models are important in a number of modern applications that involve explori...
The construction of causal graphs from non-experimental data rests on a set of constraints that the ...