# How to draw the Gaussian graphical model in R

I have got the Correlation coefficient matrix R, and the Partial correlation coefficient matrix Rp, then how could I draw the Gaussian graphical model in R?

It would be better if recommending some books introduction about the Gaussian graphical model, indeed, I don't know what is it, but the first thing I need to do is to draw it out. Many thanks!

#the Correlation coefficient matrix
R=c(1,0.55,0.55,0.41,0.39,0.55,1,0.61,0.49,0.44,0.55,0.61,1,0.71,
0.66,0.41,0.49,0.71,1,0.61,0.39,0.44,0.66,0.61,1)
dim(R)=c(5,5)

#the Partial correlation coefficient matrix
library("corpcor")
Rp=cor2pcor(R)

Then how could I draw the Gaussian graphical model?

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If you want to plot the corresponding graph, you can use the igraph package.

library(igraph)
g <- graph.adjacency( abs(Rp)>.1, mode="undirected", diag=FALSE )
plot(g, layout=layout.fruchterman.reingold)
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Why abs(Rp)>.1 ? –  PepsiCo Apr 20 '12 at 7:47
Otherwise you will always have a complete graph, which is rather uninformative. Alternatively, one could use a fainter colour when the correlation is low, as in Sacha's answer. –  Vincent Zoonekynd Apr 20 '12 at 8:27

I am not familiar with the term "Gaussian graphical model" although I feel I should be (I'll read up on it, thanks).

But to visualize (partial) correlation matrices you could use the qgraph package, which is designed to do just that. For example:

library("qgraph")
qgraph(round(Rp,5),edge.labels=TRUE)

Computing partial correlations are built in with the graph argument:

qgraph(round(R,5),edge.labels=TRUE,graph="concentration")

Gives the same result.

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I was fail to get the package "qgraph": Error in library.dynam(lib, package, package.lib) : you need the DLL'plyr' –  PepsiCo Apr 20 '12 at 8:26
Installing via CRAN should install plyr as well automatically. install.packages("qgraph",dep=TRUE). Make sure your R version is up to date (2.15). –  Sacha Epskamp Apr 20 '12 at 8:58