| import dgl |
| from dgl.data import AmazonCoBuyComputerDataset |
| import torch |
| import pickle |
| from copy import deepcopy |
| import scipy.sparse as sp |
| import numpy as np |
| import os |
|
|
|
|
| def mask_test_edges(adj_orig, val_frac, test_frac): |
|
|
| |
| adj = deepcopy(adj_orig) |
| |
| adj.setdiag(0) |
| adj.eliminate_zeros() |
| |
| |
|
|
| adj_triu = sp.triu(adj, 1) |
| edges = sparse_to_tuple(adj_triu)[0] |
| num_test = int(np.floor(edges.shape[0] * test_frac)) |
| num_val = int(np.floor(edges.shape[0] * val_frac)) |
|
|
| all_edge_idx = list(range(edges.shape[0])) |
| np.random.shuffle(all_edge_idx) |
| val_edge_idx = all_edge_idx[:num_val] |
| test_edge_idx = all_edge_idx[num_val : (num_val + num_test)] |
| test_edges = edges[test_edge_idx] |
| val_edges = edges[val_edge_idx] |
| train_edges = edges[all_edge_idx[num_val + num_test :]] |
|
|
| noedge_mask = np.ones(adj.shape) - adj |
| noedges = np.asarray(sp.triu(noedge_mask, 1).nonzero()).T |
| all_edge_idx = list(range(noedges.shape[0])) |
| np.random.shuffle(all_edge_idx) |
| val_edge_idx = all_edge_idx[:num_val] |
| test_edge_idx = all_edge_idx[num_val : (num_val + num_test)] |
| test_edges_false = noedges[test_edge_idx] |
| val_edges_false = noedges[val_edge_idx] |
|
|
| data = np.ones(train_edges.shape[0]) |
| adj_train = sp.csr_matrix( |
| (data, (train_edges[:, 0], train_edges[:, 1])), shape=adj.shape |
| ) |
| adj_train = adj_train + adj_train.T |
|
|
| train_mask = np.ones(adj_train.shape) |
| for edges_tmp in [val_edges, val_edges_false, test_edges, test_edges_false]: |
| for e in edges_tmp: |
| assert e[0] < e[1] |
| train_mask[edges_tmp.T[0], edges_tmp.T[1]] = 0 |
| train_mask[edges_tmp.T[1], edges_tmp.T[0]] = 0 |
|
|
| train_edges = np.asarray(sp.triu(adj_train, 1).nonzero()).T |
| train_edges_false = np.asarray( |
| (sp.triu(train_mask, 1) - sp.triu(adj_train, 1)).nonzero() |
| ).T |
|
|
| |
| return ( |
| train_edges, |
| train_edges_false, |
| val_edges, |
| val_edges_false, |
| test_edges, |
| test_edges_false, |
| ) |
|
|
|
|
| def sparse_to_tuple(sparse_mx): |
| if not sp.isspmatrix_coo(sparse_mx): |
| sparse_mx = sparse_mx.tocoo() |
| coords = np.vstack((sparse_mx.row, sparse_mx.col)).transpose() |
| values = sparse_mx.data |
| shape = sparse_mx.shape |
| return coords, values, shape |
|
|
|
|
| if __name__ == "__main__": |
| os.mkdir("links") |
| os.mkdir("pretrain_labels") |
| g = AmazonCoBuyComputerDataset()[0] |
| total_pos_edges = torch.randperm(g.num_edges()) |
| adj_train = g.adjacency_matrix(scipy_fmt="csr") |
| ( |
| train_edges, |
| train_edges_false, |
| val_edges, |
| val_edges_false, |
| test_edges, |
| test_edges_false, |
| ) = mask_test_edges(adj_train, 0.1, 0.2) |
| tvt_edges_file = "links/co_computer_tvtEdges.pkl" |
| pickle.dump( |
| ( |
| train_edges, |
| train_edges_false, |
| val_edges, |
| val_edges_false, |
| test_edges, |
| test_edges_false, |
| ), |
| open(tvt_edges_file, "wb"), |
| ) |
| node_assignment = dgl.metis_partition_assignment(g, 10) |
| torch.save(node_assignment, "pretrain_labels/metis_label_co_computer.pt") |