Statistical Methods for Graphs


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Documentation for package ‘statGraph’ version 0.5.0

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statGraph-package Statistical Methods for Graphs
anogva ANOGVA Analysis Of Graph Variability
cerqueira.test Andressa Cerqueira, Daniel Fraiman, Claudia D. Vargas and Florencia Leonardi non-parametric test of hypotheses to verify if two samples of random graphs were originated from the same probability distribution.
fast.eigenvalue.probability Degree-based eigenvalue probability
fast.graph.param.estimator Degree-based graph parameter estimator
fast.spectral.density Degree-based spectral density
fraiman.test Daniel Fraiman and Ricardo Fraiman test for network differences between groups with an analysis of variance test (ANOVA).
ghoshdastidar.test Ghoshdastidar hypothesis testing for large random graphs.
GIC Graph Information Criterion (GIC)
graph.acf Auto Correlation Function Estimation for Graphs
graph.cem Clustering Expectation-Maximization for Graphs (graph.cem)
graph.cor.test Test for Association / Correlation Between Paired Samples of Graphs
graph.entropy Graph spectral entropy
graph.hclust Hierarchical cluster analysis on a list of graphs.
graph.kmeans K-means for Graphs
graph.model.selection Graph model selection
graph.mult.scaling Multidimensional scaling of graphs
graph.param.estimator Graph parameter estimator
sp.anogva Semi-Parametric Analysis Of Graph Variability (ANOGVA)
statGraph Statistical Methods for Graphs
takahashi.test Test for the Jensen-Shannon divergence between graphs
tang.test Tang hypothesis testing for random graphs.