Community Detection via Fused Principal Component Analysis


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Documentation for package ‘FusedPCA’ version 0.2

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fpca Fused Principal Component Analysis path.
fpca.cluster Clustering the estimators along the path.
fpca.cut The ratio cut and normalised cut values along the path
fpca.mod The modularity values based on the DCBM and SBM assumptions along the path
fpca.nonscore Fused Principal Component Analysis path.
fpca.nonscore.cluster Clustering the estimators along the path.
fpca.score Fused Principal Component Analysis path.
fpca.score.cluster Clustering the estimators along the path.
fpca.start Fused Principal Component Analysis path.
fused.trans The graph based penalty transformation matrix
gen.cr generate adjacency matrix of stochastic blockmodel, degree-corrected block model or cockroach graph model.
gen.dcbm generate adjacency matrix of stochastic blockmodel, degree-corrected block model or cockroach graph model.
gen.sbm generate adjacency matrix of stochastic blockmodel, degree-corrected block model or cockroach graph model.
get.cluster Final estimators of the community labels
isolate Isolated nodes collection
laplacian Laplacian matrix
single.cut Ratio cut and normalised cut values
single.mod Modularity based on DCBM and SBM assumptions