import sys
sys.path.insert(0, '..')
import d2l
from mxnet import gluon, init, nd
from mxnet.gluon import data as gdata, loss as gloss, nn, rnn, utils as gutils
from mxnet.contrib import text
import os
import tarfile
data_dir = './'
url = 'http://ai.stanford.edu/~amaas/data/sentiment/aclImdb_v1.tar.gz'
fname = gutils.download(url, data_dir)
with tarfile.open(fname, 'r') as f:
f.extractall(data_dir)
Read the training and test data sets.
def read_imdb(folder='train'):
data, labels = [], []
for label in ['pos', 'neg']:
folder_name = os.path.join(data_dir, 'aclImdb', folder, label)
for file in os.listdir(folder_name):
with open(os.path.join(folder_name, file), 'rb') as f:
review = f.read().decode('utf-8').replace('\n', '')
data.append(review)
labels.append(1 if label == 'pos' else 0)
return data, labels
train_data, test_data = read_imdb('train'), read_imdb('test')
print('# trainings:', len(train_data[0]), '\n# tests:', len(test_data[0]))
for x, y in zip(train_data[0][:3], train_data[1][:3]):
print('label:', y, 'review:', x[0:60])
# trainings: 25000 # tests: 25000 label: 1 review: Normally the best way to annoy me in a film is to include so label: 1 review: The Bible teaches us that the love of money is the root of a label: 1 review: Being someone who lists Night of the Living Dead at number t
def tokenize(sentences):
return [line.split(' ') for line in sentences]
train_tokens = tokenize(train_data[0])
test_tokens = tokenize(test_data[0])
vocab = d2l.Vocab([tk for line in train_tokens for tk in line], min_freq=5)
max_len = 500
def pad(x):
if len(x) > max_len:
return x[:max_len]
else:
return x + [vocab.unk] * (max_len - len(x))
train_features = nd.array([pad(vocab[line]) for line in train_tokens])
test_features = nd.array([pad(vocab[line]) for line in test_tokens])
batch_size = 64
train_set = gdata.ArrayDataset(train_features, train_data[1])
test_set = gdata.ArrayDataset(test_features, test_data[1])
train_iter = gdata.DataLoader(train_set, batch_size, shuffle=True)
test_iter = gdata.DataLoader(test_set, batch_size)
Print the shape of the first mini-batch of data and the number of mini-batches in the training set.
for X, y in train_iter:
print('X', X.shape, 'y', y.shape)
break
'# batches:', len(train_iter)
X (64, 500) y (64,)
('# batches:', 391)
class BiRNN(nn.Block):
def __init__(self, vocab_size, embed_size, num_hiddens, num_layers, **kwargs):
super(BiRNN, self).__init__(**kwargs)
self.embedding = nn.Embedding(vocab_size, embed_size)
# Set Bidirectional to True to get a bidirectional recurrent neural
# network
self.encoder = rnn.LSTM(num_hiddens, num_layers=num_layers,
bidirectional=True, input_size=embed_size)
self.decoder = nn.Dense(2)
def forward(self, inputs):
# The shape of inputs is (batch size, number of words). Because LSTM
# needs to use sequence as the first dimension, the input is
# transformed and the word feature is then extracted. The output shape
# is (number of words, batch size, word vector dimension).
embeddings = self.embedding(inputs.T)
# The shape of states is (number of words, batch size, 2 * number of
# hidden units).
states = self.encoder(embeddings)
# Concatenate the hidden states of the initial time step and final
# time step to use as the input of the fully connected layer. Its
# shape is (batch size, 4 * number of hidden units)
encoding = nd.concat(states[0], states[-1])
outputs = self.decoder(encoding)
return outputs
Create a bidirectional recurrent neural network with two hidden layers.
embed_size, num_hiddens, num_layers, ctx = 100, 100, 2, d2l.try_all_gpus()
net = BiRNN(len(vocab), embed_size, num_hiddens, num_layers)
net.initialize(init.Xavier(), ctx=ctx)
glove_embedding = text.embedding.create(
'glove', pretrained_file_name='glove.6B.100d.txt')
embeds = glove_embedding.get_vecs_by_tokens(vocab.idx_to_token)
embeds.shape
(49339, 100)
Use these word vectors as feature vectors for each word in the reviews.
net.embedding.weight.set_data(embeds)
net.embedding.collect_params().setattr('grad_req', 'null')
lr, num_epochs = 0.01, 5
trainer = gluon.Trainer(net.collect_params(), 'adam', {'learning_rate': lr})
loss = gloss.SoftmaxCrossEntropyLoss()
d2l.train(train_iter, test_iter, net, loss, trainer, ctx, num_epochs)
training on [gpu(0), gpu(1)] epoch 1, loss 0.5948, train acc 0.660, test acc 0.811, time 41.8 sec epoch 2, loss 0.4026, train acc 0.822, test acc 0.836, time 41.6 sec epoch 3, loss 0.3604, train acc 0.843, test acc 0.844, time 42.8 sec epoch 4, loss 0.3320, train acc 0.859, test acc 0.842, time 42.4 sec epoch 5, loss 0.3044, train acc 0.870, test acc 0.853, time 41.0 sec
Define the prediction function.
def predict_sentiment(net, vocab, sentence):
sentence = nd.array(vocab[sentence.split()], ctx=d2l.try_gpu())
label = nd.argmax(net(sentence.reshape((1, -1))), axis=1)
return 'positive' if label.asscalar() == 1 else 'negative'
Then, use the trained model to classify the sentiments of two simple sentences.
predict_sentiment(net, vocab, 'this movie is so great')
'positive'
predict_sentiment(net, vocab, 'this movie is so bad')
'negative'