https://github.com/cran/BDgraph
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Tip revision: 9a5b09f17fa36d74988adc2e1f01b73eb57dc91f authored by Reza Mohammadi on 21 January 2019, 12:10:11 UTC
version 2.54
Tip revision: 9a5b09f
print.bdgraph.Rd
\name{print.bdgraph}
\alias{print.bdgraph}

\title{Print function for \code{S3} class \code{"bdgraph"} }

\description{
Prints the information about the selected graph which could be a graph with links for which their estimated posterior probabilities are greater than 0.5
or graph with the highest posterior probability.
It provides adjacency matrix, size and posterior probability of the selected graph.
}

\usage{\method{print}{bdgraph}( x, round = 2, ... )}

\arguments{
  \item{x}{ An object of \code{S3} class \code{"bdgraph"}, from function \code{\link{bdgraph}}. }
  \item{round}{A value to round the probabilities to the specified number of decimal places.}
 
  \item{\dots}{System reserved (no specific usage). }
}

\references{
Mohammadi, A. and Wit, E. C. (2015). Bayesian Structure Learning in Sparse Gaussian Graphical Models, \emph{Bayesian Analysis}, 10(1):109-138

Mohammadi, A. and Wit, E. C. (2017). \pkg{BDgraph}: An \code{R} Package for Bayesian Structure Learning in Graphical Models, \emph{arXiv preprint arXiv:1501.05108v5} 

Letac, G., Massam, H. and Mohammadi, R. (2018). The Ratio of Normalizing Constants for Bayesian Graphical Gaussian Model Selection, \emph{arXiv preprint arXiv:1706.04416v2} 

Dobra, A. and Mohammadi, R. (2018). Loglinear Model Selection and Human Mobility, \emph{Annals of Applied Statistics}, 12(2):815-845

Mohammadi, A. et al (2017). Bayesian modelling of Dupuytren disease by using Gaussian copula graphical models, \emph{Journal of the Royal Statistical Society: Series C}, 66(3):629-645 
}

\author{ Reza Mohammadi \email{a.mohammadi@uva.nl} and Ernst Wit }

\seealso{ \code{\link{bdgraph}}, \code{\link{bdgraph.mpl}} }

\examples{
\dontrun{
# Generating multivariate normal data from a 'random' graph
data.sim <- bdgraph.sim( n = 50, p = 6, vis = TRUE )
  
bdgraph.obj <- bdgraph( data = data.sim )
   
print( bdgraph.obj )
}
}
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