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Rename entailment example
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# A Decomposable Attention Model for Natural Language Inference
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This directory contains an implementation of entailment prediction model described
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by Parikh et al. (2016). The model is notable for its competitive performance
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with very few parameters.
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https://arxiv.org/pdf/1606.01933.pdf
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The model is implemented using Keras and spaCy. Keras is used to build and
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train the network, while spaCy is used to load the GloVe vectors, perform the
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feature extraction, and help you apply the model at run-time. The following
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demo code shows how the entailment model can be used at runtime, once the hook is
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installed to customise the `.similarity()` method of spaCy's `Doc` and `Span`
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objects:
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def demo(model_dir):
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nlp = spacy.load('en', path=model_dir,
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create_pipeline=create_similarity_pipeline)
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doc1 = nlp(u'Worst fries ever! Greasy and horrible...')
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doc2 = nlp(u'The milkshakes are good. The fries are bad.')
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print(doc1.similarity(doc2))
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sent1a, sent1b = doc1.sents
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print(sent1a.similarity(sent1b))
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print(sent1a.similarity(doc2))
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print(sent1b.similarity(doc2))
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I'm working on a blog post to explain Parikh et al.'s model in more detail.
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I think it is a very interesting example of the attention mechanism, which
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I didn't understand very well before working through this paper.
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# How to run the example
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1. Install spaCy and its English models (about 1GB of data):
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pip install spacy
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python -m spacy.en.download
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This will give you the spaCy's tokenization, tagging, NER and parsing models,
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as well as the GloVe word vectors.
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2. Install Keras
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pip install keras
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3. Get Keras working with your GPU
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You're mostly on your own here. My only advice is, if you're setting up on AWS,
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try using the AMI published by NVidia. With the image, getting everything set
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up wasn't *too* painful.
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4. Test the Keras model:
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py.test nli/keras_decomposable_attention.py
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This should tell you that two tests passed.
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5. Download the Stanford Natural Language Inference data
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http://nlp.stanford.edu/projects/snli/
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6. Train the model:
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python nli/ train <your_model_dir> <train_directory> <dev_directory>
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Training takes about 300 epochs for full accuracy, and I haven't rerun the full
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experiment since refactoring things to publish this example --- please let me
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know if I've broken something.
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You should get to at least 85% on the development data.
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7. Evaluate the model (optional):
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python nli/ evaluate <your_model_dir> <dev_directory>
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8. Run the demo (optional):
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python nli/ demo <your_model_dir>
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from __future__ import division, unicode_literals, print_function
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import spacy
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import plac
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from pathlib import Path
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from spacy_hook import get_embeddings, get_word_ids
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from spacy_hook import create_similarity_pipeline
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def train(model_dir, train_loc, dev_loc, shape, settings):
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print("Loading spaCy")
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nlp = spacy.load('en', tagger=False, parser=False, entity=False, matcher=False)
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print("Compiling network")
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model = build_model(get_embeddings(nlp.vocab), shape, settings)
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print("Processing texts...")
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train_X = get_features(list(nlp.pipe(train_texts)))
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dev_X = get_features(list(nlp.pipe(dev_texts)))
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model.fit(
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train_X,
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train_labels,
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validation_data=(dev_X, dev_labels),
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nb_epoch=settings['nr_epoch'],
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batch_size=settings['batch_size'])
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def evaluate(model_dir, dev_loc):
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nlp = spacy.load('en', path=model_dir,
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tagger=False, parser=False, entity=False, matcher=False,
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create_pipeline=create_similarity_pipeline)
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n = 0
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correct = 0
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for (text1, text2), label in zip(dev_texts, dev_labels):
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doc1 = nlp(text1)
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doc2 = nlp(text2)
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sim = doc1.similarity(doc2)
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if bool(sim >= 0.5) == label:
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correct += 1
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n += 1
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return correct, total
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def demo(model_dir):
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nlp = spacy.load('en', path=model_dir,
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tagger=False, parser=False, entity=False, matcher=False,
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create_pipeline=create_similarity_pipeline)
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doc1 = nlp(u'Worst fries ever! Greasy and horrible...')
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doc2 = nlp(u'The milkshakes are good. The fries are bad.')
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print('doc1.similarity(doc2)', doc1.similarity(doc2))
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sent1a, sent1b = doc1.sents
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print('sent1a.similarity(sent1b)', sent1a.similarity(sent1b))
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print('sent1a.similarity(doc2)', sent1a.similarity(doc2))
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print('sent1b.similarity(doc2)', sent1b.similarity(doc2))
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LABELS = {'entailment': 0, 'contradiction': 1, 'neutral': 2}
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def read_snli(loc):
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with open(loc) as file_:
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for line in file_:
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eg = json.loads(line)
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label = eg['gold_label']
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if label == '-':
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continue
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text1 = eg['sentence1']
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text2 = eg['sentence2']
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yield text1, text2, LABELS[label]
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@plac.annotations(
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mode=("Mode to execute", "positional", None, str, ["train", "evaluate", "demo"]),
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model_dir=("Path to spaCy model directory", "positional", None, Path),
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train_loc=("Path to training data", "positional", None, Path),
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dev_loc=("Path to development data", "positional", None, Path),
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max_length=("Length to truncate sentences", "option", "L", int),
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nr_hidden=("Number of hidden units", "option", "H", int),
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dropout=("Dropout level", "option", "d", float),
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learn_rate=("Learning rate", "option", "e", float),
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batch_size=("Batch size for neural network training", "option", "b", float),
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nr_epoch=("Number of training epochs", "option", "i", float)
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)
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def main(mode, model_dir, train_loc, dev_loc,
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max_length=100,
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nr_hidden=100,
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dropout=0.2,
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learn_rate=0.001,
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batch_size=100,
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nr_epoch=5):
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shape = (max_length, nr_hidden, 3)
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settings = {
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'lr': learn_rate,
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'dropout': dropout,
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'batch_size': batch_size,
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'nr_epoch': nr_epoch
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}
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if mode == 'train':
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train(model_dir, train_loc, dev_loc, shape, settings)
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elif mode == 'evaluate':
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evaluate(model_dir, dev_loc)
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else:
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demo(model_dir)
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if __name__ == '__main__':
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plac.call(main)
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# Semantic similarity with decomposable attention (using spaCy and Keras)
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# Practical state-of-the-art text similarity with spaCy and Keras
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import numpy
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from keras.layers import InputSpec, Layer, Input, Dense, merge
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from keras.layers import Activation, Dropout, Embedding, TimeDistributed
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import keras.backend as K
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import theano.tensor as T
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from keras.models import Sequential, Model, model_from_json
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from keras.regularizers import l2
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from keras.optimizers import Adam
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from keras.layers.normalization import BatchNormalization
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def build_model(vectors, shape, settings):
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'''Compile the model.'''
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max_length, nr_hidden, nr_class = shape
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# Declare inputs.
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ids1 = Input(shape=(max_length,), dtype='int32', name='words1')
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ids2 = Input(shape=(max_length,), dtype='int32', name='words2')
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# Construct operations, which we'll chain together.
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embed = _StaticEmbedding(vectors, max_length, nr_hidden)
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attend = _Attention(max_length, nr_hidden)
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align = _SoftAlignment(max_length, nr_hidden)
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compare = _Comparison(max_length, nr_hidden)
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entail = _Entailment(nr_hidden, nr_class)
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# Declare the model as a computational graph.
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sent1 = embed(ids1) # Shape: (i, n)
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sent2 = embed(ids2) # Shape: (j, n)
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attention = attend(sent1, sent2) # Shape: (i, j)
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align1 = align(sent2, attention)
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align2 = align(sent1, attention, transpose=True)
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feats1 = compare(sent1, align1)
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feats2 = compare(sent2, align2)
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scores = entail(feats1, feats2)
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# Now that we have the input/output, we can construct the Model object...
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model = Model(input=[ids1, ids2], output=[scores])
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# ...Compile it...
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model.compile(
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optimizer=Adam(lr=settings['lr']),
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loss='categorical_crossentropy',
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metrics=['accuracy'])
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# ...And return it for training.
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return model
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class _StaticEmbedding(object):
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def __init__(self, vectors, max_length, nr_out):
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self.embed = Embedding(
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vectors.shape[0],
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vectors.shape[1],
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input_length=max_length,
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weights=[vectors],
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name='embed',
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trainable=False,
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dropout=0.0)
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self.project = TimeDistributed(
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Dense(
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nr_out,
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activation=None,
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bias=False,
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name='project'))
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def __call__(self, sentence):
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return self.project(self.embed(sentence))
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class _Attention(object):
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def __init__(self, max_length, nr_hidden, dropout=0.0, L2=1e-4, activation='relu'):
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self.max_length = max_length
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self.model = Sequential()
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self.model.add(
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Dense(nr_hidden, name='attend1',
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init='he_normal', W_regularizer=l2(L2),
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input_shape=(nr_hidden,), activation='relu'))
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self.model.add(Dropout(dropout))
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self.model.add(Dense(nr_hidden, name='attend2',
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init='he_normal', W_regularizer=l2(L2), activation='relu'))
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self.model = TimeDistributed(self.model)
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def __call__(self, sent1, sent2):
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def _outer((A, B)):
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att_ji = T.batched_dot(B, A.dimshuffle((0, 2, 1)))
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return att_ji.dimshuffle((0, 2, 1))
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return merge(
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[self.model(sent1), self.model(sent2)],
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mode=_outer,
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output_shape=(self.max_length, self.max_length))
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class _SoftAlignment(object):
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def __init__(self, max_length, nr_hidden):
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self.max_length = max_length
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self.nr_hidden = nr_hidden
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def __call__(self, sentence, attention, transpose=False):
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def _normalize_attention((att, mat)):
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if transpose:
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att = att.dimshuffle((0, 2, 1))
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# 3d softmax
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e = K.exp(att - K.max(att, axis=-1, keepdims=True))
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s = K.sum(e, axis=-1, keepdims=True)
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sm_att = e / s
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return T.batched_dot(sm_att, mat)
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return merge([attention, sentence], mode=_normalize_attention,
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output_shape=(self.max_length, self.nr_hidden)) # Shape: (i, n)
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class _Comparison(object):
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def __init__(self, words, nr_hidden, L2=1e-6, dropout=0.2):
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self.words = words
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self.model = Sequential()
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self.model.add(Dense(nr_hidden, name='compare1',
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init='he_normal', W_regularizer=l2(L2),
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input_shape=(nr_hidden*2,)))
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self.model.add(Activation('relu'))
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self.model.add(Dropout(dropout))
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self.model.add(Dense(nr_hidden, name='compare2',
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W_regularizer=l2(L2), init='he_normal'))
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self.model.add(Activation('relu'))
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self.model.add(Dropout(dropout))
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self.model = TimeDistributed(self.model)
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def __call__(self, sent, align, **kwargs):
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result = self.model(merge([sent, align], mode='concat')) # Shape: (i, n)
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result = _GlobalSumPooling1D()(result, mask=self.words)
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return result
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class _Entailment(object):
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def __init__(self, nr_hidden, nr_out, dropout=0.2, L2=1e-4):
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self.model = Sequential()
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self.model.add(Dense(nr_hidden, name='entail1',
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init='he_normal', W_regularizer=l2(L2),
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input_shape=(nr_hidden*2,)))
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self.model.add(Activation('relu'))
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self.model.add(Dropout(dropout))
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self.model.add(Dense(nr_out, name='entail_out', activation='softmax',
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W_regularizer=l2(L2), init='zero'))
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def __call__(self, feats1, feats2):
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features = merge([feats1, feats2], mode='concat')
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return self.model(features)
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class _GlobalSumPooling1D(Layer):
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'''Global sum pooling operation for temporal data.
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# Input shape
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3D tensor with shape: `(samples, steps, features)`.
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# Output shape
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2D tensor with shape: `(samples, features)`.
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'''
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def __init__(self, **kwargs):
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super(_GlobalSumPooling1D, self).__init__(**kwargs)
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self.input_spec = [InputSpec(ndim=3)]
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def get_output_shape_for(self, input_shape):
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return (input_shape[0], input_shape[2])
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def call(self, x, mask=None):
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if mask is not None:
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return K.sum(x * T.clip(mask, 0, 1), axis=1)
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else:
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return K.sum(x, axis=1)
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def test_build_model():
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vectors = numpy.ndarray((100, 8), dtype='float32')
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shape = (10, 16, 3)
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settings = {'lr': 0.001, 'dropout': 0.2}
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model = build_model(vectors, shape, settings)
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def test_fit_model():
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def _generate_X(nr_example, length, nr_vector):
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X1 = numpy.ndarray((nr_example, length), dtype='int32')
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X1 *= X1 < nr_vector
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X1 *= 0 <= X1
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X2 = numpy.ndarray((nr_example, length), dtype='int32')
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X2 *= X2 < nr_vector
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X2 *= 0 <= X2
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return [X1, X2]
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def _generate_Y(nr_example, nr_class):
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ys = numpy.zeros((nr_example, nr_class), dtype='int32')
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for i in range(nr_example):
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ys[i, i % nr_class] = 1
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return ys
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vectors = numpy.ndarray((100, 8), dtype='float32')
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shape = (10, 16, 3)
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settings = {'lr': 0.001, 'dropout': 0.2}
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model = build_model(vectors, shape, settings)
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train_X = _generate_X(20, shape[0], vectors.shape[1])
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train_Y = _generate_Y(20, shape[2])
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dev_X = _generate_X(15, shape[0], vectors.shape[1])
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dev_Y = _generate_Y(15, shape[2])
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model.fit(train_X, train_Y, validation_data=(dev_X, dev_Y), nb_epoch=5,
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batch_size=4)
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__all__ = [build_model]
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from keras.models import model_from_json
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class KerasSimilarityShim(object):
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@classmethod
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def load(cls, path, nlp, get_features=None):
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if get_features is None:
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get_features = doc2ids
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with (path / 'config.json').open() as file_:
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config = json.load(file_)
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model = model_from_json(config['model'])
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with (path / 'model').open('rb') as file_:
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weights = pickle.load(file_)
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embeddings = get_embeddings(nlp.vocab)
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model.set_weights([embeddings] + weights)
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return cls(model, get_features=get_features)
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def __init__(self, model, get_features=None):
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self.model = model
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self.get_features = get_features
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def __call__(self, doc):
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doc.user_hooks['similarity'] = self.predict
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doc.user_span_hooks['similarity'] = self.predict
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def predict(self, doc1, doc2):
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x1 = self.get_features(doc1)
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x2 = self.get_features(doc2)
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scores = self.model.predict([x1, x2])
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return scores[0]
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def get_embeddings(cls, vocab):
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max_rank = max(lex.rank+1 for lex in vocab if lex.has_vector)
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vectors = numpy.ndarray((max_rank+1, vocab.vectors_length), dtype='float32')
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for lex in vocab:
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if lex.has_vector:
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vectors[lex.rank + 1] = lex.vector
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return vectors
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def get_word_ids(docs, max_length=100):
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Xs = numpy.zeros((len(docs), max_length), dtype='int32')
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for i, doc in enumerate(docs):
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j = 0
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for token in doc:
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if token.has_vector and not token.is_punct and not token.is_space:
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Xs[i, j] = token.rank + 1
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j += 1
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if j >= max_length:
|
||||
break
|
||||
return Xs
|
||||
|
||||
|
||||
def create_similarity_pipeline(nlp):
|
||||
return [SimilarityModel.load(
|
||||
nlp.path / 'similarity',
|
||||
nlp,
|
||||
feature_extracter=get_features)]
|
||||
|
||||
|
||||
|
Loading…
Reference in New Issue