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data_preprocess.py
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import os
import ssl
from six.moves import urllib
import pandas as pd
import numpy as np
import torch
import dgl
# === Below data preprocessing code are based on
# https://github.com/twitter-research/tgn
# Preprocess the raw data split each features
def preprocess(data_name):
u_list, i_list, ts_list, label_list = [], [], [], []
feat_l = []
idx_list = []
with open(data_name) as f:
s = next(f)
for idx, line in enumerate(f):
e = line.strip().split(',')
u = int(e[0])
i = int(e[1])
ts = float(e[2])
label = float(e[3]) # int(e[3])
feat = np.array([float(x) for x in e[4:]])
u_list.append(u)
i_list.append(i)
ts_list.append(ts)
label_list.append(label)
idx_list.append(idx)
feat_l.append(feat)
return pd.DataFrame({'u': u_list,
'i': i_list,
'ts': ts_list,
'label': label_list,
'idx': idx_list}), np.array(feat_l)
# Re index nodes for DGL convience
def reindex(df, bipartite=True):
new_df = df.copy()
if bipartite:
assert (df.u.max() - df.u.min() + 1 == len(df.u.unique()))
assert (df.i.max() - df.i.min() + 1 == len(df.i.unique()))
upper_u = df.u.max() + 1
new_i = df.i + upper_u
new_df.i = new_i
new_df.u += 1
new_df.i += 1
new_df.idx += 1
else:
new_df.u += 1
new_df.i += 1
new_df.idx += 1
return new_df
# Save edge list, features in different file for data easy process data
def run(data_name, bipartite=True):
PATH = './data/{}.csv'.format(data_name)
OUT_DF = './data/ml_{}.csv'.format(data_name)
OUT_FEAT = './data/ml_{}.npy'.format(data_name)
OUT_NODE_FEAT = './data/ml_{}_node.npy'.format(data_name)
df, feat = preprocess(PATH)
new_df = reindex(df, bipartite)
empty = np.zeros(feat.shape[1])[np.newaxis, :]
feat = np.vstack([empty, feat])
max_idx = max(new_df.u.max(), new_df.i.max())
rand_feat = np.zeros((max_idx + 1, 172))
new_df.to_csv(OUT_DF)
np.save(OUT_FEAT, feat)
np.save(OUT_NODE_FEAT, rand_feat)
# === code from twitter-research-tgn end ===
# If you have new dataset follow by same format in Jodie,
# you can directly use name to retrieve dataset
def TemporalDataset(dataset):
if not os.path.exists('./data/{}.bin'.format(dataset)):
if not os.path.exists('./data/{}.csv'.format(dataset)):
if not os.path.exists('./data'):
os.mkdir('./data')
url = 'https://snap.stanford.edu/jodie/{}.csv'.format(dataset)
print("Start Downloading File....")
context = ssl._create_unverified_context()
data = urllib.request.urlopen(url, context=context)
with open("./data/{}.csv".format(dataset), "wb") as handle:
handle.write(data.read())
print("Start Process Data ...")
run(dataset)
raw_connection = pd.read_csv('./data/ml_{}.csv'.format(dataset))
raw_feature = np.load('./data/ml_{}.npy'.format(dataset))
# -1 for re-index the node
src = raw_connection['u'].to_numpy()-1
dst = raw_connection['i'].to_numpy()-1
# Create directed graph
g = dgl.graph((src, dst))
g.edata['timestamp'] = torch.from_numpy(
raw_connection['ts'].to_numpy())
g.edata['label'] = torch.from_numpy(raw_connection['label'].to_numpy())
g.edata['feats'] = torch.from_numpy(raw_feature[1:, :]).float()
dgl.save_graphs('./data/{}.bin'.format(dataset), [g])
else:
print("Data is exist directly loaded.")
gs, _ = dgl.load_graphs('./data/{}.bin'.format(dataset))
g = gs[0]
return g
def TemporalWikipediaDataset():
# Download the dataset
return TemporalDataset('wikipedia')
def TemporalRedditDataset():
return TemporalDataset('reddit')