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Calculates a dependency graph using repeated Gaussian stepwise selection
fgr2st(x,p0=0.01,ind=0,nu=1,kmn=0,kmx=0,nedge=10^5,inr=T,xinr=F)
Matrix of covariates
Cut-off P-value
Restricts the dependent nodes to this subset
The order statistic of Gaussian covariates used for comparison.
The minimum number of selected variables for each node irrespective of cut-off P-value
The maximum number of selected variables for each node irrespective of cut-off P-value
Maximum number of edges
Logical, if TRUE include an intercept
Logical, if TRUE intercept already included
ned Number of edges
edg List of edges giving nodes (covariates), the approximations for each node, the covariates in the approximation and the corresponding P-values.
# NOT RUN { data(redwine) a<-fgr2st(redwine[,1:11],ind=4:8) # }
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