Files
dmlc--dgl/examples/pytorch/graphsaint/utils.py
T
2026-07-13 13:35:51 +08:00

121 lines
3.6 KiB
Python

import json
import os
from functools import namedtuple
import dgl
import numpy as np
import scipy.sparse
import torch
from sklearn.metrics import f1_score
from sklearn.preprocessing import StandardScaler
class Logger(object):
"""A custom logger to log stdout to a logging file."""
def __init__(self, path):
"""Initialize the logger.
Parameters
---------
path : str
The file path to be stored in.
"""
self.path = path
def write(self, s):
with open(self.path, "a") as f:
f.write(str(s))
print(s)
return
def save_log_dir(args):
log_dir = "./log/{}/{}".format(args.dataset, args.log_dir)
os.makedirs(log_dir, exist_ok=True)
return log_dir
def calc_f1(y_true, y_pred, multilabel):
if multilabel:
y_pred[y_pred > 0] = 1
y_pred[y_pred <= 0] = 0
else:
y_pred = np.argmax(y_pred, axis=1)
return f1_score(y_true, y_pred, average="micro"), f1_score(
y_true, y_pred, average="macro"
)
def evaluate(model, g, labels, mask, multilabel=False):
model.eval()
with torch.no_grad():
logits = model(g)
logits = logits[mask]
labels = labels[mask]
f1_mic, f1_mac = calc_f1(
labels.cpu().numpy(), logits.cpu().numpy(), multilabel
)
return f1_mic, f1_mac
# load data of GraphSAINT and convert them to the format of dgl
def load_data(args, multilabel):
if not os.path.exists("graphsaintdata") and not os.path.exists("data"):
raise ValueError("The directory graphsaintdata does not exist!")
elif os.path.exists("graphsaintdata") and not os.path.exists("data"):
os.rename("graphsaintdata", "data")
prefix = "data/{}".format(args.dataset)
DataType = namedtuple("Dataset", ["num_classes", "train_nid", "g"])
adj_full = scipy.sparse.load_npz("./{}/adj_full.npz".format(prefix)).astype(
np.bool_
)
g = dgl.from_scipy(adj_full)
num_nodes = g.num_nodes()
adj_train = scipy.sparse.load_npz(
"./{}/adj_train.npz".format(prefix)
).astype(np.bool_)
train_nid = np.array(list(set(adj_train.nonzero()[0])))
role = json.load(open("./{}/role.json".format(prefix)))
mask = np.zeros((num_nodes,), dtype=bool)
train_mask = mask.copy()
train_mask[role["tr"]] = True
val_mask = mask.copy()
val_mask[role["va"]] = True
test_mask = mask.copy()
test_mask[role["te"]] = True
feats = np.load("./{}/feats.npy".format(prefix))
scaler = StandardScaler()
scaler.fit(feats[train_nid])
feats = scaler.transform(feats)
class_map = json.load(open("./{}/class_map.json".format(prefix)))
class_map = {int(k): v for k, v in class_map.items()}
if multilabel:
# Multi-label binary classification
num_classes = len(list(class_map.values())[0])
class_arr = np.zeros((num_nodes, num_classes))
for k, v in class_map.items():
class_arr[k] = v
else:
num_classes = max(class_map.values()) - min(class_map.values()) + 1
class_arr = np.zeros((num_nodes,))
for k, v in class_map.items():
class_arr[k] = v
g.ndata["feat"] = torch.tensor(feats, dtype=torch.float)
g.ndata["label"] = torch.tensor(
class_arr, dtype=torch.float if multilabel else torch.long
)
g.ndata["train_mask"] = torch.tensor(train_mask, dtype=torch.bool)
g.ndata["val_mask"] = torch.tensor(val_mask, dtype=torch.bool)
g.ndata["test_mask"] = torch.tensor(test_mask, dtype=torch.bool)
data = DataType(g=g, num_classes=num_classes, train_nid=train_nid)
return data