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| """ | |
| ========= | |
| Subgraphs | |
| ========= | |
| Example of partitioning a directed graph with nodes labeled as | |
| supported and unsupported nodes into a list of subgraphs | |
| that contain only entirely supported or entirely unsupported nodes. | |
| Adopted from | |
| https://github.com/lobpcg/python_examples/blob/master/networkx_example.py | |
| """ | |
| import networkx as nx | |
| import matplotlib.pyplot as plt | |
| def graph_partitioning(G, plotting=True): | |
| """Partition a directed graph into a list of subgraphs that contain | |
| only entirely supported or entirely unsupported nodes. | |
| """ | |
| # Categorize nodes by their node_type attribute | |
| supported_nodes = {n for n, d in G.nodes(data="node_type") if d == "supported"} | |
| unsupported_nodes = {n for n, d in G.nodes(data="node_type") if d == "unsupported"} | |
| # Make a copy of the graph. | |
| H = G.copy() | |
| # Remove all edges connecting supported and unsupported nodes. | |
| H.remove_edges_from( | |
| (n, nbr, d) | |
| for n, nbrs in G.adj.items() | |
| if n in supported_nodes | |
| for nbr, d in nbrs.items() | |
| if nbr in unsupported_nodes | |
| ) | |
| H.remove_edges_from( | |
| (n, nbr, d) | |
| for n, nbrs in G.adj.items() | |
| if n in unsupported_nodes | |
| for nbr, d in nbrs.items() | |
| if nbr in supported_nodes | |
| ) | |
| # Collect all removed edges for reconstruction. | |
| G_minus_H = nx.DiGraph() | |
| G_minus_H.add_edges_from(set(G.edges) - set(H.edges)) | |
| if plotting: | |
| # Plot the stripped graph with the edges removed. | |
| _node_colors = [c for _, c in H.nodes(data="node_color")] | |
| _pos = nx.spring_layout(H) | |
| plt.figure(figsize=(8, 8)) | |
| nx.draw_networkx_edges(H, _pos, alpha=0.3, edge_color="k") | |
| nx.draw_networkx_nodes(H, _pos, node_color=_node_colors) | |
| nx.draw_networkx_labels(H, _pos, font_size=14) | |
| plt.axis("off") | |
| plt.title("The stripped graph with the edges removed.") | |
| plt.show() | |
| # Plot the the edges removed. | |
| _pos = nx.spring_layout(G_minus_H) | |
| plt.figure(figsize=(8, 8)) | |
| ncl = [G.nodes[n]["node_color"] for n in G_minus_H.nodes] | |
| nx.draw_networkx_edges(G_minus_H, _pos, alpha=0.3, edge_color="k") | |
| nx.draw_networkx_nodes(G_minus_H, _pos, node_color=ncl) | |
| nx.draw_networkx_labels(G_minus_H, _pos, font_size=14) | |
| plt.axis("off") | |
| plt.title("The removed edges.") | |
| plt.show() | |
| # Find the connected components in the stripped undirected graph. | |
| # And use the sets, specifying the components, to partition | |
| # the original directed graph into a list of directed subgraphs | |
| # that contain only entirely supported or entirely unsupported nodes. | |
| subgraphs = [ | |
| H.subgraph(c).copy() for c in nx.connected_components(H.to_undirected()) | |
| ] | |
| return subgraphs, G_minus_H | |
| ############################################################################### | |
| # Create an example directed graph. | |
| # --------------------------------- | |
| # | |
| # This directed graph has one input node labeled `in` and plotted in blue color | |
| # and one output node labeled `out` and plotted in magenta color. | |
| # The other six nodes are classified as four `supported` plotted in green color | |
| # and two `unsupported` plotted in red color. The goal is computing a list | |
| # of subgraphs that contain only entirely `supported` or `unsupported` nodes. | |
| G_ex = nx.DiGraph() | |
| G_ex.add_nodes_from(["In"], node_type="input", node_color="b") | |
| G_ex.add_nodes_from(["A", "C", "E", "F"], node_type="supported", node_color="g") | |
| G_ex.add_nodes_from(["B", "D"], node_type="unsupported", node_color="r") | |
| G_ex.add_nodes_from(["Out"], node_type="output", node_color="m") | |
| G_ex.add_edges_from( | |
| [ | |
| ("In", "A"), | |
| ("A", "B"), | |
| ("B", "C"), | |
| ("B", "D"), | |
| ("D", "E"), | |
| ("C", "F"), | |
| ("E", "F"), | |
| ("F", "Out"), | |
| ] | |
| ) | |
| ############################################################################### | |
| # Plot the original graph. | |
| # ------------------------ | |
| # | |
| node_color_list = [nc for _, nc in G_ex.nodes(data="node_color")] | |
| pos = nx.spectral_layout(G_ex) | |
| plt.figure(figsize=(8, 8)) | |
| nx.draw_networkx_edges(G_ex, pos, alpha=0.3, edge_color="k") | |
| nx.draw_networkx_nodes(G_ex, pos, alpha=0.8, node_color=node_color_list) | |
| nx.draw_networkx_labels(G_ex, pos, font_size=14) | |
| plt.axis("off") | |
| plt.title("The original graph.") | |
| plt.show() | |
| ############################################################################### | |
| # Calculate the subgraphs with plotting all results of intemediate steps. | |
| # ----------------------------------------------------------------------- | |
| # | |
| subgraphs_of_G_ex, removed_edges = graph_partitioning(G_ex, plotting=True) | |
| ############################################################################### | |
| # Plot the results: every subgraph in the list. | |
| # --------------------------------------------- | |
| # | |
| for subgraph in subgraphs_of_G_ex: | |
| _pos = nx.spring_layout(subgraph) | |
| plt.figure(figsize=(8, 8)) | |
| nx.draw_networkx_edges(subgraph, _pos, alpha=0.3, edge_color="k") | |
| node_color_list_c = [nc for _, nc in subgraph.nodes(data="node_color")] | |
| nx.draw_networkx_nodes(subgraph, _pos, node_color=node_color_list_c) | |
| nx.draw_networkx_labels(subgraph, _pos, font_size=14) | |
| plt.axis("off") | |
| plt.title("One of the subgraphs.") | |
| plt.show() | |
| ############################################################################### | |
| # Put the graph back from the list of subgraphs | |
| # --------------------------------------------- | |
| # | |
| G_ex_r = nx.DiGraph() | |
| # Composing all subgraphs. | |
| for subgraph in subgraphs_of_G_ex: | |
| G_ex_r = nx.compose(G_ex_r, subgraph) | |
| # Adding the previously stored edges. | |
| G_ex_r.add_edges_from(removed_edges.edges()) | |
| ############################################################################### | |
| # Check that the original graph and the reconstructed graphs are isomorphic. | |
| # -------------------------------------------------------------------------- | |
| # | |
| assert nx.is_isomorphic(G_ex, G_ex_r) | |
| ############################################################################### | |
| # Plot the reconstructed graph. | |
| # ----------------------------- | |
| # | |
| node_color_list = [nc for _, nc in G_ex_r.nodes(data="node_color")] | |
| pos = nx.spectral_layout(G_ex_r) | |
| plt.figure(figsize=(8, 8)) | |
| nx.draw_networkx_edges(G_ex_r, pos, alpha=0.3, edge_color="k") | |
| nx.draw_networkx_nodes(G_ex_r, pos, alpha=0.8, node_color=node_color_list) | |
| nx.draw_networkx_labels(G_ex_r, pos, font_size=14) | |
| plt.axis("off") | |
| plt.title("The reconstructed graph.") | |
| plt.show() | |