mirror of https://github.com/explosion/spaCy.git
Set vectors in chainer example
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@ -3,6 +3,9 @@ import plac
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import random
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import six
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import cProfile
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import pstats
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import pathlib
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import cPickle as pickle
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from itertools import izip
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@ -81,7 +84,7 @@ class SentimentModel(Chain):
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def __init__(self, nlp, shape, **settings):
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Chain.__init__(self,
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embed=_Embed(shape['nr_vector'], shape['nr_dim'], shape['nr_hidden'],
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initialW=lambda arr: set_vectors(arr, nlp.vocab)),
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set_vectors=lambda arr: set_vectors(arr, nlp.vocab)),
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encode=_Encode(shape['nr_hidden'], shape['nr_hidden']),
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attend=_Attend(shape['nr_hidden'], shape['nr_hidden']),
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predict=_Predict(shape['nr_hidden'], shape['nr_class']))
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@ -95,11 +98,11 @@ class SentimentModel(Chain):
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class _Embed(Chain):
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def __init__(self, nr_vector, nr_dim, nr_out):
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def __init__(self, nr_vector, nr_dim, nr_out, set_vectors=None):
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Chain.__init__(self,
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embed=L.EmbedID(nr_vector, nr_dim),
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embed=L.EmbedID(nr_vector, nr_dim, initialW=set_vectors),
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project=L.Linear(None, nr_out, nobias=True))
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#self.embed.unchain_backward()
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self.embed.W.volatile = False
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def __call__(self, sentence):
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return [self.project(self.embed(ts)) for ts in F.transpose(sentence)]
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@ -214,7 +217,6 @@ def set_vectors(vectors, vocab):
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vectors[lex.rank + 1] = lex.vector
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else:
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lex.norm = 0
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vectors.unchain_backwards()
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return vectors
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@ -223,7 +225,9 @@ def train(train_texts, train_labels, dev_texts, dev_labels,
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by_sentence=True):
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nlp = spacy.load('en', entity=False)
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if 'nr_vector' not in lstm_shape:
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lstm_shape['nr_vector'] = max(lex.rank+1 for lex in vocab if lex.has_vector)
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lstm_shape['nr_vector'] = max(lex.rank+1 for lex in nlp.vocab if lex.has_vector)
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if 'nr_dim' not in lstm_shape:
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lstm_shape['nr_dim'] = nlp.vocab.vectors_length
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print("Make model")
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model = Classifier(SentimentModel(nlp, lstm_shape, **lstm_settings))
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print("Parsing texts...")
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@ -240,7 +244,7 @@ def train(train_texts, train_labels, dev_texts, dev_labels,
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optimizer = chainer.optimizers.Adam()
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optimizer.setup(model)
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updater = chainer.training.StandardUpdater(train_iter, optimizer, device=0)
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trainer = chainer.training.Trainer(updater, (20, 'epoch'), out='result')
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trainer = chainer.training.Trainer(updater, (1, 'epoch'), out='result')
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trainer.extend(extensions.Evaluator(dev_iter, model, device=0))
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trainer.extend(extensions.LogReport())
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@ -305,11 +309,14 @@ def main(model_dir, train_dir, dev_dir,
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dev_labels = xp.asarray(dev_labels, dtype='i')
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lstm = train(train_texts, train_labels, dev_texts, dev_labels,
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{'nr_hidden': nr_hidden, 'max_length': max_length, 'nr_class': 2,
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'nr_vector': 2000, 'nr_dim': 32},
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'nr_vector': 5000},
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{'dropout': 0.5, 'lr': learn_rate},
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{},
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nb_epoch=nb_epoch, batch_size=batch_size)
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if __name__ == '__main__':
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#cProfile.runctx("plac.call(main)", globals(), locals(), "Profile.prof")
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#s = pstats.Stats("Profile.prof")
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#s.strip_dirs().sort_stats("time").print_stats()
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plac.call(main)
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