234 lines
7.0 KiB
Python
234 lines
7.0 KiB
Python
import os
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import graph_tool as gt
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import graph_tool.topology as gt_topology
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import networkx as nx
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import numpy as np
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import torch
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from dgl.data.utils import load_graphs, save_graphs
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from ogb.graphproppred import DglGraphPropPredDataset
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from tqdm import tqdm
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def to_undirected(edge_index):
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row, col = edge_index.transpose(1, 0)
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row, col = torch.cat([row, col], dim=0), torch.cat([col, row], dim=0)
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edge_index = torch.stack([row, col], dim=0)
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return edge_index.transpose(1, 0).tolist()
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def induced_edge_automorphism_orbits(edge_list):
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##### node automorphism orbits #####
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graph = gt.Graph(directed=False)
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graph.add_edge_list(edge_list)
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gt.stats.remove_self_loops(graph)
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gt.stats.remove_parallel_edges(graph)
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# compute the node automorphism group
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aut_group = gt_topology.subgraph_isomorphism(
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graph, graph, induced=False, subgraph=True, generator=False
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)
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orbit_membership = {}
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for v in graph.get_vertices():
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orbit_membership[v] = v
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# whenever two nodes can be mapped via some automorphism, they are assigned the same orbit
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for aut in aut_group:
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for original, node in enumerate(aut):
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role = min(original, orbit_membership[node])
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orbit_membership[node] = role
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orbit_membership_list = [[], []]
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for node, om_curr in orbit_membership.items():
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orbit_membership_list[0].append(node)
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orbit_membership_list[1].append(om_curr)
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# make orbit list contiguous (i.e. 0,1,2,...O)
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_, contiguous_orbit_membership = np.unique(
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orbit_membership_list[1], return_inverse=True
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)
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orbit_membership = {
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node: contiguous_orbit_membership[i]
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for i, node in enumerate(orbit_membership_list[0])
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}
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aut_count = len(aut_group)
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##### induced edge automorphism orbits (according to the node automorphism group) #####
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edge_orbit_partition = dict()
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edge_orbit_membership = dict()
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edge_orbits2inds = dict()
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ind = 0
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edge_list = to_undirected(torch.tensor(graph.get_edges()))
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# infer edge automorphisms from the node automorphisms
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for i, edge in enumerate(edge_list):
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edge_orbit = frozenset(
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[orbit_membership[edge[0]], orbit_membership[edge[1]]]
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)
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if edge_orbit not in edge_orbits2inds:
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edge_orbits2inds[edge_orbit] = ind
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ind_edge_orbit = ind
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ind += 1
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else:
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ind_edge_orbit = edge_orbits2inds[edge_orbit]
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if ind_edge_orbit not in edge_orbit_partition:
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edge_orbit_partition[ind_edge_orbit] = [tuple(edge)]
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else:
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edge_orbit_partition[ind_edge_orbit] += [tuple(edge)]
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edge_orbit_membership[i] = ind_edge_orbit
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print(
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"Edge orbit partition of given substructure: {}".format(
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edge_orbit_partition
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)
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)
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print("Number of edge orbits: {}".format(len(edge_orbit_partition)))
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print("Graph (node) automorphism count: {}".format(aut_count))
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return graph, edge_orbit_partition, edge_orbit_membership, aut_count
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def subgraph_isomorphism_edge_counts(edge_index, subgraph_dict):
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##### edge structural identifiers #####
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edge_index = edge_index.transpose(1, 0).cpu().numpy()
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edge_dict = {}
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for i, edge in enumerate(edge_index):
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edge_dict[tuple(edge)] = i
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subgraph_edges = to_undirected(
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torch.tensor(subgraph_dict["subgraph"].get_edges().tolist())
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)
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G_gt = gt.Graph(directed=False)
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G_gt.add_edge_list(list(edge_index))
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gt.stats.remove_self_loops(G_gt)
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gt.stats.remove_parallel_edges(G_gt)
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# compute all subgraph isomorphisms
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sub_iso = gt_topology.subgraph_isomorphism(
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subgraph_dict["subgraph"],
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G_gt,
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induced=True,
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subgraph=True,
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generator=True,
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)
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counts = np.zeros(
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(edge_index.shape[0], len(subgraph_dict["orbit_partition"]))
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)
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for sub_iso_curr in sub_iso:
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mapping = sub_iso_curr.get_array()
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for i, edge in enumerate(subgraph_edges):
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# for every edge in the graph H, find the edge in the subgraph G_S to which it is mapped
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# (by finding where its endpoints are matched).
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# Then, increase the count of the matched edge w.r.t. the corresponding orbit
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# Repeat for the reverse edge (the one with the opposite direction)
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edge_orbit = subgraph_dict["orbit_membership"][i]
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mapped_edge = tuple([mapping[edge[0]], mapping[edge[1]]])
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counts[edge_dict[mapped_edge], edge_orbit] += 1
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counts = counts / subgraph_dict["aut_count"]
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counts = torch.tensor(counts)
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return counts
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def prepare_dataset(name):
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# maximum size of cycle graph
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k = 8
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path = os.path.join("./", "dataset", name)
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data_folder = os.path.join(path, "processed")
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os.makedirs(data_folder, exist_ok=True)
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data_file = os.path.join(
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data_folder, "cycle_graph_induced_{}.bin".format(k)
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)
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# try to load
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if os.path.exists(data_file): # load
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print("Loading dataset from {}".format(data_file))
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g_list, split_idx = load_graphs(data_file)
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else: # generate
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g_list, split_idx = generate_dataset(path, name)
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print("Saving dataset to {}".format(data_file))
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save_graphs(data_file, g_list, split_idx)
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return g_list, split_idx
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def generate_dataset(path, name):
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### compute the orbits of each substructure in the list, as well as the node automorphism count
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subgraph_dicts = []
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edge_lists = []
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for k in range(3, 8 + 1):
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graphs_nx = nx.cycle_graph(k)
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edge_lists.append(list(graphs_nx.edges))
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for edge_list in edge_lists:
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(
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subgraph,
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orbit_partition,
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orbit_membership,
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aut_count,
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) = induced_edge_automorphism_orbits(edge_list=edge_list)
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subgraph_dicts.append(
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{
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"subgraph": subgraph,
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"orbit_partition": orbit_partition,
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"orbit_membership": orbit_membership,
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"aut_count": aut_count,
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}
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)
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### load and preprocess dataset
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dataset = DglGraphPropPredDataset(name=name, root=path)
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split_idx = dataset.get_idx_split()
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# computation of subgraph isomorphisms & creation of data structure
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graphs_dgl = list()
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split_idx["label"] = []
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for i, datapoint in tqdm(enumerate(dataset)):
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g, label = datapoint
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g = _prepare(g, subgraph_dicts)
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graphs_dgl.append(g)
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split_idx["label"].append(label)
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split_idx["label"] = torch.stack(split_idx["label"])
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return graphs_dgl, split_idx
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def _prepare(g, subgraph_dicts):
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edge_index = torch.stack(g.edges())
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identifiers = None
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for subgraph_dict in subgraph_dicts:
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counts = subgraph_isomorphism_edge_counts(edge_index, subgraph_dict)
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identifiers = (
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counts
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if identifiers is None
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else torch.cat((identifiers, counts), 1)
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)
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g.edata["subgraph_counts"] = identifiers.long()
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return g
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if __name__ == "__main__":
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prepare_dataset("ogbg-molpcba")
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