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preprocess-entail.py
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preprocess-entail.py
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#!/usr/bin/env python
# -*- coding: utf-8 -*-
"""Create the data for entailment
"""
import os
import sys
import argparse
import numpy as np
import h5py
import itertools
from collections import defaultdict
class Indexer:
def __init__(self, symbols = ["<blank>","<unk>","<s>","</s>"]):
self.vocab = defaultdict(int)
self.PAD = symbols[0]
self.UNK = symbols[1]
self.BOS = symbols[2]
self.EOS = symbols[3]
self.d = {self.PAD: 1, self.UNK: 2, self.BOS: 3, self.EOS: 4}
def add_w(self, ws):
for w in ws:
if w not in self.d:
self.d[w] = len(self.d) + 1
def convert(self, w):
return self.d[w] if w in self.d else self.d['<oov' + str(np.random.randint(1,100)) + '>']
def convert_sequence(self, ls):
return [self.convert(l) for l in ls]
def clean(self, s):
s = s.replace(self.PAD, "")
s = s.replace(self.BOS, "")
s = s.replace(self.EOS, "")
return s
def write(self, outfile):
out = open(outfile, "w")
items = [(v, k) for k, v in self.d.iteritems()]
items.sort()
for v, k in items:
print >>out, k, v
out.close()
def prune_vocab(self, k, cnt=False):
vocab_list = [(word, count) for word, count in self.vocab.iteritems()]
if cnt:
self.pruned_vocab = {pair[0]:pair[1] for pair in vocab_list if pair[1] > k}
else:
vocab_list.sort(key = lambda x: x[1], reverse=True)
k = min(k, len(vocab_list))
self.pruned_vocab = {pair[0]:pair[1] for pair in vocab_list[:k]}
for word in self.pruned_vocab:
if word not in self.d:
self.d[word] = len(self.d) + 1
def load_vocab(self, vocab_file):
self.d = {}
for line in open(vocab_file, 'r'):
v, k = line.strip().split()
self.d[v] = int(k)
def pad(ls, length, symbol, pad_back = True):
if len(ls) >= length:
return ls[:length]
if pad_back:
return ls + [symbol] * (length -len(ls))
else:
return [symbol] * (length -len(ls)) + ls
def get_glove_words(f):
glove_words = set()
for line in open(f, "r"):
word = line.split()[0].strip()
glove_words.add(word)
return glove_words
def get_data(args):
word_indexer = Indexer(["<blank>","<unk>","<s>","</s>"])
label_indexer = Indexer(["<blank>","<unk>","<s>","</s>"])
label_indexer.d = {}
glove_vocab = get_glove_words(args.glove)
for i in range(1,101): #hash oov words to one of 100 random embeddings, per Parikh et al. 2016
oov_word = '<oov'+ str(i) + '>'
word_indexer.vocab[oov_word] += 1
def make_vocab(srcfile, targetfile, labelfile, seqlength):
num_sents = 0
for _, (src_orig, targ_orig, label_orig) in \
enumerate(itertools.izip(open(srcfile,'r'),
open(targetfile,'r'), open(labelfile, 'r'))):
src_orig = word_indexer.clean(src_orig.strip())
targ_orig = word_indexer.clean(targ_orig.strip())
targ = targ_orig.strip().split()
src = src_orig.strip().split()
label = label_orig.strip().split()
if len(targ) > seqlength or len(src) > seqlength or len(targ) < 1 or len(src) < 1:
continue
num_sents += 1
for word in targ:
if word in glove_vocab:
word_indexer.vocab[word] += 1
for word in src:
if word in glove_vocab:
word_indexer.vocab[word] += 1
for word in label:
label_indexer.vocab[word] += 1
return num_sents
def convert(srcfile, targetfile, labelfile, batchsize, seqlength, outfile, num_sents,
max_sent_l=0, shuffle=0):
newseqlength = seqlength + 1 #add 1 for BOS
targets = np.zeros((num_sents, newseqlength), dtype=int)
sources = np.zeros((num_sents, newseqlength), dtype=int)
labels = np.zeros((num_sents,), dtype =int)
source_lengths = np.zeros((num_sents,), dtype=int)
target_lengths = np.zeros((num_sents,), dtype=int)
both_lengths = np.zeros(num_sents, dtype = {'names': ['x','y'], 'formats': ['i4', 'i4']})
dropped = 0
sent_id = 0
for _, (src_orig, targ_orig, label_orig) in \
enumerate(itertools.izip(open(srcfile,'r'), open(targetfile,'r')
,open(labelfile,'r'))):
src_orig = word_indexer.clean(src_orig.strip())
targ_orig = word_indexer.clean(targ_orig.strip())
targ = [word_indexer.BOS] + targ_orig.strip().split()
src = [word_indexer.BOS] + src_orig.strip().split()
label = label_orig.strip().split()
max_sent_l = max(len(targ), len(src), max_sent_l)
if len(targ) > newseqlength or len(src) > newseqlength or len(targ) < 2 or len(src) < 2:
dropped += 1
continue
targ = pad(targ, newseqlength, word_indexer.PAD)
targ = word_indexer.convert_sequence(targ)
targ = np.array(targ, dtype=int)
src = pad(src, newseqlength, word_indexer.PAD)
src = word_indexer.convert_sequence(src)
src = np.array(src, dtype=int)
targets[sent_id] = np.array(targ,dtype=int)
target_lengths[sent_id] = (targets[sent_id] != 1).sum()
sources[sent_id] = np.array(src, dtype=int)
source_lengths[sent_id] = (sources[sent_id] != 1).sum()
labels[sent_id] = label_indexer.d[label[0]]
both_lengths[sent_id] = (source_lengths[sent_id], target_lengths[sent_id])
sent_id += 1
if sent_id % 100000 == 0:
print("{}/{} sentences processed".format(sent_id, num_sents))
print(sent_id, num_sents)
if shuffle == 1:
rand_idx = np.random.permutation(sent_id)
targets = targets[rand_idx]
sources = sources[rand_idx]
source_lengths = source_lengths[rand_idx]
target_lengths = target_lengths[rand_idx]
labels = labels[rand_idx]
both_lengths = both_lengths[rand_idx]
#break up batches based on source/target lengths
source_lengths = source_lengths[:sent_id]
source_sort = np.argsort(source_lengths)
both_lengths = both_lengths[:sent_id]
sorted_lengths = np.argsort(both_lengths, order = ('x', 'y'))
sources = sources[sorted_lengths]
targets = targets[sorted_lengths]
labels = labels[sorted_lengths]
target_l = target_lengths[sorted_lengths]
source_l = source_lengths[sorted_lengths]
curr_l_src = 0
curr_l_targ = 0
l_location = [] #idx where sent length changes
for j,i in enumerate(sorted_lengths):
if source_lengths[i] > curr_l_src or target_lengths[i] > curr_l_targ:
curr_l_src = source_lengths[i]
curr_l_targ = target_lengths[i]
l_location.append(j+1)
l_location.append(len(sources))
#get batch sizes
curr_idx = 1
batch_idx = [1]
batch_l = []
target_l_new = []
source_l_new = []
for i in range(len(l_location)-1):
while curr_idx < l_location[i+1]:
curr_idx = min(curr_idx + batchsize, l_location[i+1])
batch_idx.append(curr_idx)
for i in range(len(batch_idx)-1):
batch_l.append(batch_idx[i+1] - batch_idx[i])
source_l_new.append(source_l[batch_idx[i]-1])
target_l_new.append(target_l[batch_idx[i]-1])
# Write output
f = h5py.File(outfile, "w")
f["source"] = sources
f["target"] = targets
f["target_l"] = np.array(target_l_new, dtype=int)
f["source_l"] = np.array(source_l_new, dtype=int)
f["label"] = np.array(labels, dtype=int)
f["label_size"] = np.array([len(np.unique(np.array(labels, dtype=int)))])
f["batch_l"] = np.array(batch_l, dtype=int)
f["batch_idx"] = np.array(batch_idx[:-1], dtype=int)
f["source_size"] = np.array([len(word_indexer.d)])
f["target_size"] = np.array([len(word_indexer.d)])
print("Saved {} sentences (dropped {} due to length/unk filter)".format(
len(f["source"]), dropped))
f.close()
return max_sent_l
print("First pass through data to get vocab...")
num_sents_train = make_vocab(args.srcfile, args.targetfile, args.labelfile,
args.seqlength)
print("Number of sentences in training: {}".format(num_sents_train))
num_sents_valid = make_vocab(args.srcvalfile, args.targetvalfile, args.labelvalfile,
args.seqlength)
print("Number of sentences in valid: {}".format(num_sents_valid))
num_sents_test = make_vocab(args.srctestfile, args.targettestfile, args.labeltestfile,
args.seqlength)
print("Number of sentences in test: {}".format(num_sents_test))
#prune and write vocab
word_indexer.prune_vocab(0, True)
label_indexer.prune_vocab(1000)
if args.vocabfile != '':
print('Loading pre-specified source vocab from ' + args.vocabfile)
word_indexer.load_vocab(args.vocabfile)
word_indexer.write(args.outputfile + ".word.dict")
label_indexer.write(args.outputfile + ".label.dict")
print("Source vocab size: Original = {}, Pruned = {}".format(len(word_indexer.vocab),
len(word_indexer.d)))
print("Target vocab size: Original = {}, Pruned = {}".format(len(word_indexer.vocab),
len(word_indexer.d)))
max_sent_l = 0
max_sent_l = convert(args.srcvalfile, args.targetvalfile, args.labelvalfile,
args.batchsize, args.seqlength,
args.outputfile + "-val.hdf5", num_sents_valid,
max_sent_l, args.shuffle)
max_sent_l = convert(args.srcfile, args.targetfile, args.labelfile,
args.batchsize, args.seqlength,
args.outputfile + "-train.hdf5", num_sents_train,
max_sent_l, args.shuffle)
max_sent_l = convert(args.srctestfile, args.targettestfile, args.labeltestfile,
args.batchsize, args.seqlength,
args.outputfile + "-test.hdf5", num_sents_test,
max_sent_l, args.shuffle)
print("Max sent length (before dropping): {}".format(max_sent_l))
def main(arguments):
parser = argparse.ArgumentParser(
description=__doc__,
formatter_class=argparse.ArgumentDefaultsHelpFormatter)
parser.add_argument('--vocabsize', help="Size of source vocabulary, constructed "
"by taking the top X most frequent words. "
" Rest are replaced with special UNK tokens.",
type=int, default=50000)
parser.add_argument('--srcfile', help="Path to source training data, "
"where each line represents a single "
"source/target sequence.",
default = "data/entail/src-train.txt")
parser.add_argument('--targetfile', help="Path to target training data, "
"where each line represents a single "
"source/target sequence.",
default = "data/entail/targ-train.txt")
parser.add_argument('--labelfile', help="Path to target label data, "
"where each line represents a single "
"source/target sequence.",
default = "data/entail/label-train.txt")
parser.add_argument('--srcvalfile', help="Path to source validation data.",
default = "data/entail/src-dev.txt")
parser.add_argument('--targetvalfile', help="Path to target validation data.",
default = "data/entail/targ-dev.txt")
parser.add_argument('--labelvalfile', help="Path to target validation data.",
default = "data/entail/label-dev.txt")
parser.add_argument('--srctestfile', help="Path to source validation data.",
default = "data/entail/src-test.txt")
parser.add_argument('--targettestfile', help="Path to target validation data.",
default = "data/entail/targ-test.txt")
parser.add_argument('--labeltestfile', help="Path to target validation data.",
default = "data/entail/label-test.txt")
parser.add_argument('--batchsize', help="Size of each minibatch.", type=int, default=32)
parser.add_argument('--seqlength', help="Maximum sequence length. Sequences longer "
"than this are dropped.", type=int, default=100)
parser.add_argument('--outputfile', help="Prefix of the output file names. ",
type=str, default = "data/entail")
parser.add_argument('--vocabfile', help="If working with a preset vocab, "
"then including this will ignore vocabsize and use the"
"vocab provided here.",
type = str, default='')
parser.add_argument('--shuffle', help="If = 1, shuffle sentences before sorting (based on "
"source length).", type = int, default = 1)
parser.add_argument('--glove', type = str, default = '')
args = parser.parse_args(arguments)
get_data(args)
if __name__ == '__main__':
sys.exit(main(sys.argv[1:]))