spaCy/bin/parser/train_ud.py

202 lines
6.9 KiB
Python

from __future__ import unicode_literals, print_function
import plac
import json
import random
import pathlib
from spacy.tokens import Doc
from spacy.syntax.nonproj import PseudoProjectivity
from spacy.language import Language
from spacy.gold import GoldParse
from spacy.tagger import Tagger
from spacy.pipeline import DependencyParser, TokenVectorEncoder
from spacy.syntax.parser import get_templates
from spacy.syntax.arc_eager import ArcEager
from spacy.scorer import Scorer
from spacy.language_data.tag_map import TAG_MAP as DEFAULT_TAG_MAP
import spacy.attrs
import io
from thinc.neural.ops import CupyOps
from thinc.neural import Model
try:
import cupy
print("Using GPU")
Model.ops = CupyOps()
except ImportError:
pass
from thinc.neural import Model
try:
import cupy
from thinc.neural.ops import CupyOps
except:
cupy = None
def read_conllx(loc, n=0):
with io.open(loc, 'r', encoding='utf8') as file_:
text = file_.read()
i = 0
for sent in text.strip().split('\n\n'):
lines = sent.strip().split('\n')
if lines:
while lines[0].startswith('#'):
lines.pop(0)
tokens = []
for line in lines:
id_, word, lemma, pos, tag, morph, head, dep, _1, \
_2 = line.split('\t')
if '-' in id_ or '.' in id_:
continue
try:
id_ = int(id_) - 1
head = (int(head) - 1) if head != '0' else id_
dep = 'ROOT' if dep == 'root' else dep #'unlabelled'
tag = pos+'__'+dep+'__'+morph
Spanish.Defaults.tag_map[tag] = {POS: pos}
tokens.append((id_, word, tag, head, dep, 'O'))
except:
raise
tuples = [list(t) for t in zip(*tokens)]
yield (None, [[tuples, []]])
i += 1
if n >= 1 and i >= n:
break
def score_model(vocab, encoder, parser, Xs, ys, verbose=False):
scorer = Scorer()
correct = 0.
total = 0.
for doc, gold in zip(Xs, ys):
doc = Doc(vocab, words=[w.text for w in doc])
encoder(doc)
parser(doc)
PseudoProjectivity.deprojectivize(doc)
scorer.score(doc, gold, verbose=verbose)
for token, tag in zip(doc, gold.tags):
if '_' in token.tag_:
univ_guess, _ = token.tag_.split('_', 1)
else:
univ_guess = ''
univ_truth, _ = tag.split('_', 1)
correct += univ_guess == univ_truth
total += 1
return scorer
def organize_data(vocab, train_sents):
Xs = []
ys = []
for _, doc_sents in train_sents:
for (ids, words, tags, heads, deps, ner), _ in doc_sents:
doc = Doc(vocab, words=words)
gold = GoldParse(doc, tags=tags, heads=heads, deps=deps)
Xs.append(doc)
ys.append(gold)
return Xs, ys
def main(lang_name, train_loc, dev_loc, model_dir, clusters_loc=None):
if cupy is not None:
Model.ops = CupyOps()
LangClass = spacy.util.get_lang_class(lang_name)
train_sents = list(read_conllx(train_loc))
dev_sents = list(read_conllx(dev_loc))
train_sents = PseudoProjectivity.preprocess_training_data(train_sents)
actions = ArcEager.get_actions(gold_parses=train_sents)
features = get_templates('basic')
model_dir = pathlib.Path(model_dir)
if not model_dir.exists():
model_dir.mkdir()
if not (model_dir / 'deps').exists():
(model_dir / 'deps').mkdir()
if not (model_dir / 'pos').exists():
(model_dir / 'pos').mkdir()
with (model_dir / 'deps' / 'config.json').open('wb') as file_:
file_.write(
json.dumps(
{'pseudoprojective': True, 'labels': actions, 'features': features}).encode('utf8'))
vocab = LangClass.Defaults.create_vocab()
if not (model_dir / 'vocab').exists():
(model_dir / 'vocab').mkdir()
else:
if (model_dir / 'vocab' / 'strings.json').exists():
with (model_dir / 'vocab' / 'strings.json').open() as file_:
vocab.strings.load(file_)
if (model_dir / 'vocab' / 'lexemes.bin').exists():
vocab.load_lexemes(model_dir / 'vocab' / 'lexemes.bin')
if clusters_loc is not None:
clusters_loc = pathlib.Path(clusters_loc)
with clusters_loc.open() as file_:
for line in file_:
try:
cluster, word, freq = line.split()
except ValueError:
continue
lex = vocab[word]
lex.cluster = int(cluster[::-1], 2)
# Populate vocab
for _, doc_sents in train_sents:
for (ids, words, tags, heads, deps, ner), _ in doc_sents:
for word in words:
_ = vocab[word]
for dep in deps:
_ = vocab[dep]
for tag in tags:
_ = vocab[tag]
if vocab.morphology.tag_map:
for tag in tags:
assert tag in vocab.morphology.tag_map, repr(tag)
tagger = Tagger(vocab)
encoder = TokenVectorEncoder(vocab)
parser = DependencyParser(vocab, actions=actions, features=features, L1=0.0)
Xs, ys = organize_data(vocab, train_sents)
dev_Xs, dev_ys = organize_data(vocab, dev_sents)
Xs = Xs
ys = ys
dev_Xs = dev_Xs[:1000]
dev_ys = dev_ys[:1000]
with encoder.model.begin_training(Xs[:100], ys[:100]) as (trainer, optimizer):
docs = list(Xs)
for doc in docs:
encoder(doc)
parser.begin_training(docs, ys)
nn_loss = [0.]
def track_progress():
with encoder.tagger.use_params(optimizer.averages):
scorer = score_model(vocab, encoder, tagger, parser, dev_Xs, dev_ys)
itn = len(nn_loss)
print('%d:\t%.3f\t%.3f\t%.3f' % (itn, nn_loss[-1], scorer.uas, scorer.tags_acc))
nn_loss.append(0.)
trainer.each_epoch.append(track_progress)
trainer.batch_size = 24
trainer.nb_epoch = 10
for docs, golds in trainer.iterate(Xs, ys):
docs = [Doc(vocab, words=[w.text for w in doc]) for doc in docs]
tokvecs, upd_tokvecs = encoder.begin_update(docs)
for doc, tokvec in zip(docs, tokvecs):
doc.tensor = tokvec
for doc, gold in zip(docs, golds):
tagger.update(doc, gold)
d_tokvecs, loss = parser.update(docs, golds, sgd=optimizer)
upd_tokvecs(d_tokvecs, sgd=optimizer)
encoder.update(docs, golds, sgd=optimizer)
nn_loss[-1] += loss
nlp = LangClass(vocab=vocab, tagger=tagger, parser=parser)
nlp.end_training(model_dir)
scorer = score_model(vocab, tagger, parser, read_conllx(dev_loc))
print('%d:\t%.3f\t%.3f\t%.3f' % (itn, scorer.uas, scorer.las, scorer.tags_acc))
if __name__ == '__main__':
plac.call(main)