t_rex / process.py
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""" Process raw T-Rex file.
mkdir data_raw
cd data_raw
wget https://figshare.com/ndownloader/files/8760241
unzip 8760241
cd ../
"""
import json
import string
import re
import os
from glob import glob
from tqdm import tqdm
import pandas as pd
# process raw data
if not os.path.exists('data/t_rex.raw.jsonl'):
os.makedirs('data', exist_ok=True)
f_writer = open('data/t_rex.raw.jsonl', 'w')
for i in tqdm(glob("data_raw/*.json")):
with open(i) as f:
data = json.load(f)
for _data in data:
for triple in _data['triples']:
p = triple['predicate']['surfaceform']
if p is None:
p = os.path.basename(triple['predicate']['uri'])
o = triple['object']['surfaceform']
s = triple['subject']['surfaceform']
if o is None or s is None:
input(triple)
out = {"predicate": p, "object": o, "subject": s, "title": _data["title"], "text": _data["text"]}
f_writer.write(json.dumps(out) + "\n")
f_writer.close()
# apply filtering to remove noisy instances
stopwords = ["he", "she", "they", "it"]
list_alnum = string.ascii_lowercase + '0123456789 '
def filtering(entry):
def _subfilter(token):
if len(re.findall(rf'[^{list_alnum}]+', token)) != 0:
return False
if token in stopwords:
return False
if token.startswith("www"):
return False
if token.startswith("."):
return False
if token.startswith(","):
return False
if token.startswith("$"):
return False
if token.startswith("+"):
return False
if token.startswith("#"):
return False
return True
if not _subfilter(entry["object"].lower()):
return False
if not _subfilter(entry["subject"].lower()):
return False
if entry['object'].islower() and entry['subject'].islower():
return False
return True
with open(f"data/t_rex.raw.jsonl") as f:
data = [json.loads(i) for i in f.read().split('\n') if len(i) > 0]
print(f"[raw dataset]: {len(data)} triples, {len(set([i['predicate'] for i in data]))} predicates")
data = [i for i in data if filtering(i)]
df = pd.DataFrame(data)
df = df.drop_duplicates()
print(f"[entity only] : {len(df)} triples, {len(df['predicate'].unique())} predicates")
count = df.groupby("predicate")['title'].count()
df = df[[count[p] >= 3 for p in df['predicate']]]
print(f"[remove rare predicate] : {len(df)} triples, {len(df['predicate'].unique())} predicates")
with open(f"data/t_rex.filter.jsonl", 'w') as f:
for _, i in df.iterrows():
f.write(json.dumps(i.to_dict()) + '\n')