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gcn_concat.py
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"""
Semi-Supervised Classification with Graph Convolutional Networks
Paper: https://arxiv.org/abs/1609.02907
Code: https://github.com/tkipf/gcn
GCN with batch processing
"""
import argparse
import time
import dgl
import dgl.function as fn
import mxnet as mx
import numpy as np
from dgl.data import (
CiteseerGraphDataset,
CoraGraphDataset,
PubmedGraphDataset,
register_data_args,
)
from mxnet import gluon
class GCNLayer(gluon.Block):
def __init__(self, g, out_feats, activation, dropout):
super(GCNLayer, self).__init__()
self.g = g
self.dense = gluon.nn.Dense(out_feats, activation)
self.dropout = dropout
def forward(self, h):
self.g.ndata["h"] = h * self.g.ndata["out_norm"]
self.g.update_all(
fn.copy_u(u="h", out="m"), fn.sum(msg="m", out="accum")
)
accum = self.g.ndata.pop("accum")
accum = self.dense(accum * self.g.ndata["in_norm"])
if self.dropout:
accum = mx.nd.Dropout(accum, p=self.dropout)
h = self.g.ndata.pop("h")
h = mx.nd.concat(h / self.g.ndata["out_norm"], accum, dim=1)
return h
class GCN(gluon.Block):
def __init__(self, g, n_hidden, n_classes, n_layers, activation, dropout):
super(GCN, self).__init__()
self.inp_layer = gluon.nn.Dense(n_hidden, activation)
self.dropout = dropout
self.layers = gluon.nn.Sequential()
for i in range(n_layers):
self.layers.add(GCNLayer(g, n_hidden, activation, dropout))
self.out_layer = gluon.nn.Dense(n_classes)
def forward(self, features):
emb_inp = [features, self.inp_layer(features)]
if self.dropout:
emb_inp[-1] = mx.nd.Dropout(emb_inp[-1], p=self.dropout)
h = mx.nd.concat(*emb_inp, dim=1)
for layer in self.layers:
h = layer(h)
h = self.out_layer(h)
return h
def evaluate(model, features, labels, mask):
pred = model(features).argmax(axis=1)
accuracy = ((pred == labels) * mask).sum() / mask.sum().asscalar()
return accuracy.asscalar()
def main(args):
# load and preprocess dataset
if args.dataset == "cora":
data = CoraGraphDataset()
elif args.dataset == "citeseer":
data = CiteseerGraphDataset()
elif args.dataset == "pubmed":
data = PubmedGraphDataset()
else:
raise ValueError("Unknown dataset: {}".format(args.dataset))
g = data[0]
if args.gpu < 0:
cuda = False
ctx = mx.cpu(0)
else:
cuda = True
ctx = mx.gpu(args.gpu)
g = g.to(ctx)
features = g.ndata["feat"]
labels = mx.nd.array(g.ndata["label"], dtype="float32", ctx=ctx)
train_mask = g.ndata["train_mask"]
val_mask = g.ndata["val_mask"]
test_mask = g.ndata["test_mask"]
in_feats = features.shape[1]
n_classes = data.num_labels
n_edges = data.graph.number_of_edges()
print(
"""----Data statistics------'
#Edges %d
#Classes %d
#Train samples %d
#Val samples %d
#Test samples %d"""
% (
n_edges,
n_classes,
train_mask.sum().asscalar(),
val_mask.sum().asscalar(),
test_mask.sum().asscalar(),
)
)
# add self loop
if args.self_loop:
g = dgl.remove_self_loop(g)
g = dgl.add_self_loop(g)
# normalization
in_degs = g.in_degrees().astype("float32")
out_degs = g.out_degrees().astype("float32")
in_norm = mx.nd.power(in_degs, -0.5)
out_norm = mx.nd.power(out_degs, -0.5)
if cuda:
in_norm = in_norm.as_in_context(ctx)
out_norm = out_norm.as_in_context(ctx)
g.ndata["in_norm"] = mx.nd.expand_dims(in_norm, 1)
g.ndata["out_norm"] = mx.nd.expand_dims(out_norm, 1)
model = GCN(
g,
args.n_hidden,
n_classes,
args.n_layers,
"relu",
args.dropout,
)
model.initialize(ctx=ctx)
n_train_samples = train_mask.sum().asscalar()
loss_fcn = gluon.loss.SoftmaxCELoss()
# use optimizer
print(model.collect_params())
trainer = gluon.Trainer(
model.collect_params(),
"adam",
{"learning_rate": args.lr, "wd": args.weight_decay},
)
# initialize graph
dur = []
for epoch in range(args.n_epochs):
if epoch >= 3:
t0 = time.time()
# forward
with mx.autograd.record():
pred = model(features)
loss = loss_fcn(pred, labels, mx.nd.expand_dims(train_mask, 1))
loss = loss.sum() / n_train_samples
loss.backward()
trainer.step(batch_size=1)
if epoch >= 3:
dur.append(time.time() - t0)
acc = evaluate(model, features, labels, val_mask)
print(
"Epoch {:05d} | Time(s) {:.4f} | Loss {:.4f} | Accuracy {:.4f} | "
"ETputs(KTEPS) {:.2f}".format(
epoch,
np.mean(dur),
loss.asscalar(),
acc,
n_edges / np.mean(dur) / 1000,
)
)
# test set accuracy
acc = evaluate(model, features, labels, test_mask)
print("Test accuracy {:.2%}".format(acc))
if __name__ == "__main__":
parser = argparse.ArgumentParser(description="GCN")
register_data_args(parser)
parser.add_argument(
"--dropout", type=float, default=0.5, help="dropout probability"
)
parser.add_argument("--gpu", type=int, default=-1, help="gpu")
parser.add_argument("--lr", type=float, default=1e-2, help="learning rate")
parser.add_argument(
"--n-epochs", type=int, default=200, help="number of training epochs"
)
parser.add_argument(
"--n-hidden", type=int, default=16, help="number of hidden gcn units"
)
parser.add_argument(
"--n-layers", type=int, default=1, help="number of hidden gcn layers"
)
parser.add_argument(
"--normalization",
choices=["sym", "left"],
default=None,
help="graph normalization types (default=None)",
)
parser.add_argument(
"--self-loop",
action="store_true",
help="graph self-loop (default=False)",
)
parser.add_argument(
"--weight-decay", type=float, default=5e-4, help="Weight for L2 loss"
)
args = parser.parse_args()
print(args)
main(args)