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wiki_data.py
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# Copyright 2016 Google Inc. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
# ==============================================================================
"""Loads the WikiQuestions dataset.
An example consists of question, table. Additionally, we store the processed
columns which store the entries after performing number, date and other
preprocessing as done in the baseline.
columns, column names and processed columns are split into word and number
columns.
lookup answer (or matrix) is also split into number and word lookup matrix
Author: aneelakantan (Arvind Neelakantan)
"""
import math
import os
import re
import numpy as np
import unicodedata as ud
import tensorflow as tf
bad_number = -200000.0 #number that is added to a corrupted table entry in a number column
def is_nan_or_inf(number):
return math.isnan(number) or math.isinf(number)
def strip_accents(s):
u = unicode(s, "utf-8")
u_new = ''.join(c for c in ud.normalize('NFKD', u) if ud.category(c) != 'Mn')
return u_new.encode("utf-8")
def correct_unicode(string):
string = strip_accents(string)
string = re.sub("\xc2\xa0", " ", string).strip()
string = re.sub("\xe2\x80\x93", "-", string).strip()
#string = re.sub(ur'[\u0300-\u036F]', "", string)
string = re.sub("‚", ",", string)
string = re.sub("…", "...", string)
#string = re.sub("[·・]", ".", string)
string = re.sub("ˆ", "^", string)
string = re.sub("˜", "~", string)
string = re.sub("‹", "<", string)
string = re.sub("›", ">", string)
#string = re.sub("[‘’´`]", "'", string)
#string = re.sub("[“â€Â«Â»]", "\"", string)
#string = re.sub("[•†‡]", "", string)
#string = re.sub("[â€â€‘–—]", "-", string)
string = re.sub(ur'[\u2E00-\uFFFF]', "", string)
string = re.sub("\\s+", " ", string).strip()
return string
def simple_normalize(string):
string = correct_unicode(string)
# Citations
string = re.sub("\[(nb ?)?\d+\]", "", string)
string = re.sub("\*+$", "", string)
# Year in parenthesis
string = re.sub("\(\d* ?-? ?\d*\)", "", string)
string = re.sub("^\"(.*)\"$", "", string)
return string
def full_normalize(string):
#print "an: ", string
string = simple_normalize(string)
# Remove trailing info in brackets
string = re.sub("\[[^\]]*\]", "", string)
# Remove most unicode characters in other languages
string = re.sub(ur'[\u007F-\uFFFF]', "", string.strip())
# Remove trailing info in parenthesis
string = re.sub("\([^)]*\)$", "", string.strip())
string = final_normalize(string)
# Get rid of question marks
string = re.sub("\?", "", string).strip()
# Get rid of trailing colons (usually occur in column titles)
string = re.sub("\:$", " ", string).strip()
# Get rid of slashes
string = re.sub(r"/", " ", string).strip()
string = re.sub(r"\\", " ", string).strip()
# Replace colon, slash, and dash with space
# Note: need better replacement for this when parsing time
string = re.sub(r"\:", " ", string).strip()
string = re.sub("/", " ", string).strip()
string = re.sub("-", " ", string).strip()
# Convert empty strings to UNK
# Important to do this last or near last
if not string:
string = "UNK"
return string
def final_normalize(string):
# Remove leading and trailing whitespace
string = re.sub("\\s+", " ", string).strip()
# Convert entirely to lowercase
string = string.lower()
# Get rid of strangely escaped newline characters
string = re.sub("\\\\n", " ", string).strip()
# Get rid of quotation marks
string = re.sub(r"\"", "", string).strip()
string = re.sub(r"\'", "", string).strip()
string = re.sub(r"`", "", string).strip()
# Get rid of *
string = re.sub("\*", "", string).strip()
return string
def is_number(x):
try:
f = float(x)
return not is_nan_or_inf(f)
except ValueError:
return False
except TypeError:
return False
class WikiExample(object):
def __init__(self, id, question, answer, table_key):
self.question_id = id
self.question = question
self.answer = answer
self.table_key = table_key
self.lookup_matrix = []
self.is_bad_example = False
self.is_word_lookup = False
self.is_ambiguous_word_lookup = False
self.is_number_lookup = False
self.is_number_calc = False
self.is_unknown_answer = False
class TableInfo(object):
def __init__(self, word_columns, word_column_names, word_column_indices,
number_columns, number_column_names, number_column_indices,
processed_word_columns, processed_number_columns, orig_columns):
self.word_columns = word_columns
self.word_column_names = word_column_names
self.word_column_indices = word_column_indices
self.number_columns = number_columns
self.number_column_names = number_column_names
self.number_column_indices = number_column_indices
self.processed_word_columns = processed_word_columns
self.processed_number_columns = processed_number_columns
self.orig_columns = orig_columns
class WikiQuestionLoader(object):
def __init__(self, data_name, root_folder):
self.root_folder = root_folder
self.data_folder = os.path.join(self.root_folder, "data")
self.examples = []
self.data_name = data_name
def num_questions(self):
return len(self.examples)
def load_qa(self):
data_source = os.path.join(self.data_folder, self.data_name)
f = tf.gfile.GFile(data_source, "r")
id_regex = re.compile("\(id ([^\)]*)\)")
for line in f:
id_match = id_regex.search(line)
id = id_match.group(1)
self.examples.append(id)
def load(self):
self.load_qa()
def is_date(word):
if (not (bool(re.search("[a-z0-9]", word, re.IGNORECASE)))):
return False
if (len(word) != 10):
return False
if (word[4] != "-"):
return False
if (word[7] != "-"):
return False
for i in range(len(word)):
if (not (word[i] == "X" or word[i] == "x" or word[i] == "-" or re.search(
"[0-9]", word[i]))):
return False
return True
class WikiQuestionGenerator(object):
def __init__(self, train_name, dev_name, test_name, root_folder):
self.train_name = train_name
self.dev_name = dev_name
self.test_name = test_name
self.train_loader = WikiQuestionLoader(train_name, root_folder)
self.dev_loader = WikiQuestionLoader(dev_name, root_folder)
self.test_loader = WikiQuestionLoader(test_name, root_folder)
self.bad_examples = 0
self.root_folder = root_folder
self.data_folder = os.path.join(self.root_folder, "annotated/data")
self.annotated_examples = {}
self.annotated_tables = {}
self.annotated_word_reject = {}
self.annotated_word_reject["-lrb-"] = 1
self.annotated_word_reject["-rrb-"] = 1
self.annotated_word_reject["UNK"] = 1
def is_money(self, word):
if (not (bool(re.search("[a-z0-9]", word, re.IGNORECASE)))):
return False
for i in range(len(word)):
if (not (word[i] == "E" or word[i] == "." or re.search("[0-9]",
word[i]))):
return False
return True
def remove_consecutive(self, ner_tags, ner_values):
for i in range(len(ner_tags)):
if ((ner_tags[i] == "NUMBER" or ner_tags[i] == "MONEY" or
ner_tags[i] == "PERCENT" or ner_tags[i] == "DATE") and
i + 1 < len(ner_tags) and ner_tags[i] == ner_tags[i + 1] and
ner_values[i] == ner_values[i + 1] and ner_values[i] != ""):
word = ner_values[i]
word = word.replace(">", "").replace("<", "").replace("=", "").replace(
"%", "").replace("~", "").replace("$", "").replace("£", "").replace(
"€", "")
if (re.search("[A-Z]", word) and not (is_date(word)) and not (
self.is_money(word))):
ner_values[i] = "A"
else:
ner_values[i] = ","
return ner_tags, ner_values
def pre_process_sentence(self, tokens, ner_tags, ner_values):
sentence = []
tokens = tokens.split("|")
ner_tags = ner_tags.split("|")
ner_values = ner_values.split("|")
ner_tags, ner_values = self.remove_consecutive(ner_tags, ner_values)
#print "old: ", tokens
for i in range(len(tokens)):
word = tokens[i]
if (ner_values[i] != "" and
(ner_tags[i] == "NUMBER" or ner_tags[i] == "MONEY" or
ner_tags[i] == "PERCENT" or ner_tags[i] == "DATE")):
word = ner_values[i]
word = word.replace(">", "").replace("<", "").replace("=", "").replace(
"%", "").replace("~", "").replace("$", "").replace("£", "").replace(
"€", "")
if (re.search("[A-Z]", word) and not (is_date(word)) and not (
self.is_money(word))):
word = tokens[i]
if (is_number(ner_values[i])):
word = float(ner_values[i])
elif (is_number(word)):
word = float(word)
if (tokens[i] == "score"):
word = "score"
if (is_number(word)):
word = float(word)
if (not (self.annotated_word_reject.has_key(word))):
if (is_number(word) or is_date(word) or self.is_money(word)):
sentence.append(word)
else:
word = full_normalize(word)
if (not (self.annotated_word_reject.has_key(word)) and
bool(re.search("[a-z0-9]", word, re.IGNORECASE))):
m = re.search(",", word)
sentence.append(word.replace(",", ""))
if (len(sentence) == 0):
sentence.append("UNK")
return sentence
def load_annotated_data(self, in_file):
self.annotated_examples = {}
self.annotated_tables = {}
f = tf.gfile.GFile(in_file, "r")
counter = 0
for line in f:
if (counter > 0):
line = line.strip()
(question_id, utterance, context, target_value, tokens, lemma_tokens,
pos_tags, ner_tags, ner_values, target_canon) = line.split("\t")
question = self.pre_process_sentence(tokens, ner_tags, ner_values)
target_canon = target_canon.split("|")
self.annotated_examples[question_id] = WikiExample(
question_id, question, target_canon, context)
self.annotated_tables[context] = []
counter += 1
print "Annotated examples loaded ", len(self.annotated_examples)
f.close()
def is_number_column(self, a):
for w in a:
if (len(w) != 1):
return False
if (not (is_number(w[0]))):
return False
return True
def convert_table(self, table):
answer = []
for i in range(len(table)):
temp = []
for j in range(len(table[i])):
temp.append(" ".join([str(w) for w in table[i][j]]))
answer.append(temp)
return answer
def load_annotated_tables(self):
for table in self.annotated_tables.keys():
annotated_table = table.replace("csv", "annotated")
orig_columns = []
processed_columns = []
f = tf.gfile.GFile(os.path.join(self.root_folder, annotated_table), "r")
counter = 0
for line in f:
if (counter > 0):
line = line.strip()
line = line + "\t" * (13 - len(line.split("\t")))
(row, col, read_id, content, tokens, lemma_tokens, pos_tags, ner_tags,
ner_values, number, date, num2, read_list) = line.split("\t")
counter += 1
f.close()
max_row = int(row)
max_col = int(col)
for i in range(max_col + 1):
orig_columns.append([])
processed_columns.append([])
for j in range(max_row + 1):
orig_columns[i].append(bad_number)
processed_columns[i].append(bad_number)
#print orig_columns
f = tf.gfile.GFile(os.path.join(self.root_folder, annotated_table), "r")
counter = 0
column_names = []
for line in f:
if (counter > 0):
line = line.strip()
line = line + "\t" * (13 - len(line.split("\t")))
(row, col, read_id, content, tokens, lemma_tokens, pos_tags, ner_tags,
ner_values, number, date, num2, read_list) = line.split("\t")
entry = self.pre_process_sentence(tokens, ner_tags, ner_values)
if (row == "-1"):
column_names.append(entry)
else:
orig_columns[int(col)][int(row)] = entry
if (len(entry) == 1 and is_number(entry[0])):
processed_columns[int(col)][int(row)] = float(entry[0])
else:
for single_entry in entry:
if (is_number(single_entry)):
processed_columns[int(col)][int(row)] = float(single_entry)
break
nt = ner_tags.split("|")
nv = ner_values.split("|")
for i_entry in range(len(tokens.split("|"))):
if (nt[i_entry] == "DATE" and
is_number(nv[i_entry].replace("-", "").replace("X", ""))):
processed_columns[int(col)][int(row)] = float(nv[
i_entry].replace("-", "").replace("X", ""))
#processed_columns[int(col)][int(row)] = float(nv[i_entry])
if (len(entry) == 1 and (is_number(entry[0]) or is_date(entry[0]) or
self.is_money(entry[0]))):
if (len(entry) == 1 and not (is_number(entry[0])) and
is_date(entry[0])):
entry[0] = entry[0].replace("X", "x")
counter += 1
word_columns = []
processed_word_columns = []
word_column_names = []
word_column_indices = []
number_columns = []
processed_number_columns = []
number_column_names = []
number_column_indices = []
for i in range(max_col + 1):
if (self.is_number_column(orig_columns[i])):
number_column_indices.append(i)
number_column_names.append(column_names[i])
temp = []
for w in orig_columns[i]:
if (is_number(w[0])):
temp.append(w[0])
number_columns.append(temp)
processed_number_columns.append(processed_columns[i])
else:
word_column_indices.append(i)
word_column_names.append(column_names[i])
word_columns.append(orig_columns[i])
processed_word_columns.append(processed_columns[i])
table_info = TableInfo(
word_columns, word_column_names, word_column_indices, number_columns,
number_column_names, number_column_indices, processed_word_columns,
processed_number_columns, orig_columns)
self.annotated_tables[table] = table_info
f.close()
def answer_classification(self):
lookup_questions = 0
number_lookup_questions = 0
word_lookup_questions = 0
ambiguous_lookup_questions = 0
number_questions = 0
bad_questions = 0
ice_bad_questions = 0
tot = 0
got = 0
ice = {}
with tf.gfile.GFile(
self.root_folder + "/arvind-with-norms-2.tsv", mode="r") as f:
lines = f.readlines()
for line in lines:
line = line.strip()
if (not (self.annotated_examples.has_key(line.split("\t")[0]))):
continue
if (len(line.split("\t")) == 4):
line = line + "\t" * (5 - len(line.split("\t")))
if (not (is_number(line.split("\t")[2]))):
ice_bad_questions += 1
(example_id, ans_index, ans_raw, process_answer,
matched_cells) = line.split("\t")
if (ice.has_key(example_id)):
ice[example_id].append(line.split("\t"))
else:
ice[example_id] = [line.split("\t")]
for q_id in self.annotated_examples.keys():
tot += 1
example = self.annotated_examples[q_id]
table_info = self.annotated_tables[example.table_key]
# Figure out if the answer is numerical or lookup
n_cols = len(table_info.orig_columns)
n_rows = len(table_info.orig_columns[0])
example.lookup_matrix = np.zeros((n_rows, n_cols))
exact_matches = {}
for (example_id, ans_index, ans_raw, process_answer,
matched_cells) in ice[q_id]:
for match_cell in matched_cells.split("|"):
if (len(match_cell.split(",")) == 2):
(row, col) = match_cell.split(",")
row = int(row)
col = int(col)
if (row >= 0):
exact_matches[ans_index] = 1
answer_is_in_table = len(exact_matches) == len(example.answer)
if (answer_is_in_table):
for (example_id, ans_index, ans_raw, process_answer,
matched_cells) in ice[q_id]:
for match_cell in matched_cells.split("|"):
if (len(match_cell.split(",")) == 2):
(row, col) = match_cell.split(",")
row = int(row)
col = int(col)
example.lookup_matrix[row, col] = float(ans_index) + 1.0
example.lookup_number_answer = 0.0
if (answer_is_in_table):
lookup_questions += 1
if len(example.answer) == 1 and is_number(example.answer[0]):
example.number_answer = float(example.answer[0])
number_lookup_questions += 1
example.is_number_lookup = True
else:
#print "word lookup"
example.calc_answer = example.number_answer = 0.0
word_lookup_questions += 1
example.is_word_lookup = True
else:
if (len(example.answer) == 1 and is_number(example.answer[0])):
example.number_answer = example.answer[0]
example.is_number_calc = True
else:
bad_questions += 1
example.is_bad_example = True
example.is_unknown_answer = True
example.is_lookup = example.is_word_lookup or example.is_number_lookup
if not example.is_word_lookup and not example.is_bad_example:
number_questions += 1
example.calc_answer = example.answer[0]
example.lookup_number_answer = example.calc_answer
# Split up the lookup matrix into word part and number part
number_column_indices = table_info.number_column_indices
word_column_indices = table_info.word_column_indices
example.word_columns = table_info.word_columns
example.number_columns = table_info.number_columns
example.word_column_names = table_info.word_column_names
example.processed_number_columns = table_info.processed_number_columns
example.processed_word_columns = table_info.processed_word_columns
example.number_column_names = table_info.number_column_names
example.number_lookup_matrix = example.lookup_matrix[:,
number_column_indices]
example.word_lookup_matrix = example.lookup_matrix[:, word_column_indices]
def load(self):
train_data = []
dev_data = []
test_data = []
self.load_annotated_data(
os.path.join(self.data_folder, "training.annotated"))
self.load_annotated_tables()
self.answer_classification()
self.train_loader.load()
self.dev_loader.load()
for i in range(self.train_loader.num_questions()):
example = self.train_loader.examples[i]
example = self.annotated_examples[example]
train_data.append(example)
for i in range(self.dev_loader.num_questions()):
example = self.dev_loader.examples[i]
dev_data.append(self.annotated_examples[example])
self.load_annotated_data(
os.path.join(self.data_folder, "pristine-unseen-tables.annotated"))
self.load_annotated_tables()
self.answer_classification()
self.test_loader.load()
for i in range(self.test_loader.num_questions()):
example = self.test_loader.examples[i]
test_data.append(self.annotated_examples[example])
return train_data, dev_data, test_data