Efficient selection of undirected graphical models for high-dimensional datasets


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Documentation for package ‘gRapHD’ version 0.2.0

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gRapHD-package The gRapHD package
adjMat Adjacency matrix
as.gRapHD Coerces to an object of type "gRapHD"
calcStat Pairwise weights
ccoeff Clustering coefficient
chStat Internal use
CI.test Test of conditional independence
convData Converts dataset
convertClass Converts object between classes
Degree Degree
DFS Depth-first search
dsCont Test dataset
dsDiscr Test dataset
dsMixed Test dataset
findEd Finds add-eligible edges
fit Log-likelihood, AIC, BIC
gRapHD The gRapHD package
is.gRapHD Tests whether an object is of "gRapHD" class
jTree Junction tree
MCS Maximum cardinality search
minForest Minimum forest
modelDim Model's dimension
modelFormula Model's formula
neighbourhood Neighbourhood of a vertex
neighbours Finds all direct neighbours
perfSets Finds a perfect sequence
plot.gRapHD Plots a gRapHD object
print.gRapHD Prints an object of class "gRapHD"
randTree Random tree
rowProds Row products
shortPath Shortest path
sortMat Sort matrix
stepw Stepwise forward selection
SubGraph Generates a subgraph
summary.gRapHD Summarizes model