spaCy/examples/keras_parikh_entailment/__main__.py
2016-11-01 01:51:54 +01:00

106 lines
3.5 KiB
Python

from __future__ import division, unicode_literals, print_function
import spacy
import plac
from pathlib import Path
from spacy_hook import get_embeddings, get_word_ids
from spacy_hook import create_similarity_pipeline
def train(model_dir, train_loc, dev_loc, shape, settings):
print("Loading spaCy")
nlp = spacy.load('en', tagger=False, parser=False, entity=False, matcher=False)
print("Compiling network")
model = build_model(get_embeddings(nlp.vocab), shape, settings)
print("Processing texts...")
train_X = get_features(list(nlp.pipe(train_texts)))
dev_X = get_features(list(nlp.pipe(dev_texts)))
model.fit(
train_X,
train_labels,
validation_data=(dev_X, dev_labels),
nb_epoch=settings['nr_epoch'],
batch_size=settings['batch_size'])
def evaluate(model_dir, dev_loc):
nlp = spacy.load('en', path=model_dir,
tagger=False, parser=False, entity=False, matcher=False,
create_pipeline=create_similarity_pipeline)
n = 0
correct = 0
for (text1, text2), label in zip(dev_texts, dev_labels):
doc1 = nlp(text1)
doc2 = nlp(text2)
sim = doc1.similarity(doc2)
if bool(sim >= 0.5) == label:
correct += 1
n += 1
return correct, total
def demo(model_dir):
nlp = spacy.load('en', path=model_dir,
tagger=False, parser=False, entity=False, matcher=False,
create_pipeline=create_similarity_pipeline)
doc1 = nlp(u'Worst fries ever! Greasy and horrible...')
doc2 = nlp(u'The milkshakes are good. The fries are bad.')
print('doc1.similarity(doc2)', doc1.similarity(doc2))
sent1a, sent1b = doc1.sents
print('sent1a.similarity(sent1b)', sent1a.similarity(sent1b))
print('sent1a.similarity(doc2)', sent1a.similarity(doc2))
print('sent1b.similarity(doc2)', sent1b.similarity(doc2))
LABELS = {'entailment': 0, 'contradiction': 1, 'neutral': 2}
def read_snli(loc):
with open(loc) as file_:
for line in file_:
eg = json.loads(line)
label = eg['gold_label']
if label == '-':
continue
text1 = eg['sentence1']
text2 = eg['sentence2']
yield text1, text2, LABELS[label]
@plac.annotations(
mode=("Mode to execute", "positional", None, str, ["train", "evaluate", "demo"]),
model_dir=("Path to spaCy model directory", "positional", None, Path),
train_loc=("Path to training data", "positional", None, Path),
dev_loc=("Path to development data", "positional", None, Path),
max_length=("Length to truncate sentences", "option", "L", int),
nr_hidden=("Number of hidden units", "option", "H", int),
dropout=("Dropout level", "option", "d", float),
learn_rate=("Learning rate", "option", "e", float),
batch_size=("Batch size for neural network training", "option", "b", float),
nr_epoch=("Number of training epochs", "option", "i", float)
)
def main(mode, model_dir, train_loc, dev_loc,
max_length=100,
nr_hidden=100,
dropout=0.2,
learn_rate=0.001,
batch_size=100,
nr_epoch=5):
shape = (max_length, nr_hidden, 3)
settings = {
'lr': learn_rate,
'dropout': dropout,
'batch_size': batch_size,
'nr_epoch': nr_epoch
}
if mode == 'train':
train(model_dir, train_loc, dev_loc, shape, settings)
elif mode == 'evaluate':
evaluate(model_dir, dev_loc)
else:
demo(model_dir)
if __name__ == '__main__':
plac.call(main)