Learning Graphs from Data via Spectral Constraints


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Documentation for package ‘spectralGraphTopology’ version 0.2.0

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spectralGraphTopology-package Package spectralGraphTopology
A Computes the Adjacency linear operator which maps a vector of weights into a valid Adjacency matrix.
block_diag Constructs a block diagonal matrix from a list of square matrices
cluster_k_component_graph Cluster a k-component graph from data using the Constrained Laplacian Rank algorithm Cluster a k-component graph on the basis of an observed data matrix. Check out https://mirca.github.io/spectralGraphTopology for code examples.
fscore Computes the fscore between two matrices
L Computes the Laplacian linear operator which maps a vector of weights into a valid Laplacian matrix.
learn_bipartite_graph Learn a bipartite graph Learns a bipartite graph on the basis of an observed data matrix
learn_bipartite_k_component_graph Learns a bipartite k-component graph Jointly learns the Laplacian and Adjacency matrices of a graph on the basis of an observed data matrix
learn_combinatorial_graph_laplacian Learn the Combinatorial Graph Laplacian from data Learns a graph Laplacian matrix using the Combinatorial Graph Laplacian (CGL) algorithm proposed by Egilmez et. al. (2017)
learn_k_component_graph Learn the Laplacian matrix of a k-component graph Learns a k-component graph on the basis of an observed data matrix. Check out https://mirca.github.io/spectralGraphTopology for code examples.
learn_laplacian_gle_admm Learn the weighted Laplacian matrix of a graph using the ADMM method
learn_laplacian_gle_mm Learn the weighted Laplacian matrix of a graph using the MM method
relative_error Computes the relative error between two matrices