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unsupervised.py
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unsupervised.py
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import torch as th
import dgl
from dgl.data import GINDataset
from dgl.dataloading import GraphDataLoader
from model import InfoGraph
from evaluate_embedding import evaluate_embedding
import argparse
def argument():
parser = argparse.ArgumentParser(description='InfoGraph')
# data source params
parser.add_argument('--dataname', type=str, default='MUTAG', help='Name of dataset.')
# training params
parser.add_argument('--gpu', type=int, default=-1, help='GPU index, default:-1, using CPU.')
parser.add_argument('--epochs', type=int, default=20, help='Training epochs.')
parser.add_argument('--batch_size', type=int, default=128, help='Training batch size.')
parser.add_argument('--lr', type=float, default=0.01, help='Learning rate.')
parser.add_argument('--log_interval', type=int, default=1, help='Interval between two evaluations.')
# model params
parser.add_argument('--n_layers', type=int, default=3, help='Number of graph convolution layers before each pooling.')
parser.add_argument('--hid_dim', type=int, default=32, help='Hidden layer dimensionalities.')
args = parser.parse_args()
# check cuda
if args.gpu != -1 and th.cuda.is_available():
args.device = 'cuda:{}'.format(args.gpu)
else:
args.device = 'cpu'
return args
def collate(samples):
''' collate function for building graph dataloader'''
graphs, labels = map(list, zip(*samples))
# generate batched graphs and labels
batched_graph = dgl.batch(graphs)
batched_labels = th.tensor(labels)
n_graphs = len(graphs)
graph_id = th.arange(n_graphs)
graph_id = dgl.broadcast_nodes(batched_graph, graph_id)
batched_graph.ndata['graph_id'] = graph_id
return batched_graph, batched_labels
if __name__ == '__main__':
# Step 1: Prepare graph data ===================================== #
args = argument()
print(args)
# load dataset from dgl.data.GINDataset
dataset = GINDataset(args.dataname, self_loop = False)
# get graphs and labels
graphs, labels = map(list, zip(*dataset))
# generate a full-graph with all examples for evaluation
wholegraph = dgl.batch(graphs)
wholegraph.ndata['attr'] = wholegraph.ndata['attr'].to(th.float32)
# create dataloader for batch training
dataloader = GraphDataLoader(dataset,
batch_size=args.batch_size,
collate_fn=collate,
drop_last=False,
shuffle=True)
in_dim = wholegraph.ndata['attr'].shape[1]
# Step 2: Create model =================================================================== #
model = InfoGraph(in_dim, args.hid_dim, args.n_layers)
model = model.to(args.device)
# Step 3: Create training components ===================================================== #
optimizer = th.optim.Adam(model.parameters(), lr=args.lr)
print('===== Before training ======')
wholegraph = wholegraph.to(args.device)
wholefeat = wholegraph.ndata['attr']
emb = model.get_embedding(wholegraph, wholefeat).cpu()
res = evaluate_embedding(emb, labels, args.device)
''' Evaluate the initialized embeddings '''
''' using logistic regression and SVM(non-linear) '''
print('logreg {:4f}, svc {:4f}'.format(res[0], res[1]))
best_logreg = 0
best_logreg_epoch = 0
best_svc = 0
best_svc_epoch = 0
# Step 4: training epochs =============================================================== #
for epoch in range(args.epochs):
loss_all = 0
model.train()
for graph, label in dataloader:
graph = graph.to(args.device)
feat = graph.ndata['attr']
graph_id = graph.ndata['graph_id']
n_graph = label.shape[0]
optimizer.zero_grad()
loss = model(graph, feat, graph_id)
loss.backward()
optimizer.step()
loss_all += loss.item()
print('Epoch {}, Loss {:.4f}'.format(epoch, loss_all))
if epoch % args.log_interval == 0:
# evaluate embeddings
model.eval()
emb = model.get_embedding(wholegraph, wholefeat).cpu()
res = evaluate_embedding(emb, labels, args.device)
if res[0] > best_logreg:
best_logreg = res[0]
best_logreg_epoch = epoch
if res[1] > best_svc:
best_svc = res[1]
best_svc_epoch = epoch
print('best logreg {:4f}, epoch {} | best svc: {:4f}, epoch {}'.format(best_logreg, best_logreg_epoch, best_svc, best_svc_epoch))
print('Training End')
print('best logreg {:4f} ,best svc {:4f}'.format(best_logreg, best_svc))