Produces a low-dimensional representation of the input graph.
Calculates the ECTD1 of the graph and reduces its dimension using PCA. The result is an embedding of the graph nodes as vectors in a low-dimensional space.
Graph data in this repository is courtesy of the mind-blowingly cool University of Florida Sparse Matrix Collection.
Python 3.x and 2.6+.
See the API docs: https://brandones.github.io/graphpca/
Draw a graph, including edges, from a mat file :
>>> import scipy.io
>>> import networkx as nx
>>> import graphpca
>>> mat = scipy.io.loadmat('test/bcspwr01.mat')
>>> A = mat['Problem'][0][0][1].todense() # that's just how the file came
>>> G = nx.from_numpy_matrix(A)
>>> graphpca.draw_graph(G)
Get a 2D PCA of a high-dimensional graph and plot it. :
>>> import networkx as nx
>>> import graphpca
>>> g = nx.erdos_renyi_graph(1000, 0.2)
>>> g_2 = graphpca.reduce_graph(g, 2)
>>> graphca.plot_2d(g_2)
Issues and Pull requests are very welcome! [On GitHub](https://github.com/brandones/graphpca).