假设您有以下需要编码的数据
docs = ['Well done!',
'Good work',
'Great effort',
'nice work',
'Excellent!',
'Weak',
'Poor effort!',
'not good',
'poor work',
'Could have done better.']
您必须像这样使用 Keras 中的 Tokenizer 对其进行标记并找到 vocab_size
t = Tokenizer()
t.fit_on_texts(docs)
vocab_size = len(t.word_index) + 1
然后你可以把它编码成这样的序列
encoded_docs = t.texts_to_sequences(docs)
print(encoded_docs)
然后您可以填充序列,使所有序列都具有固定长度
max_length = 4
padded_docs = pad_sequences(encoded_docs, maxlen=max_length, padding='post')
然后使用word2vec模型制作嵌入矩阵
# load embedding as a dict
def load_embedding(filename):
# load embedding into memory, skip first line
file = open(filename,'r')
lines = file.readlines()[1:]
file.close()
# create a map of words to vectors
embedding = dict()
for line in lines:
parts = line.split()
# key is string word, value is numpy array for vector
embedding[parts[0]] = asarray(parts[1:], dtype='float32')
return embedding
# create a weight matrix for the Embedding layer from a loaded embedding
def get_weight_matrix(embedding, vocab):
# total vocabulary size plus 0 for unknown words
vocab_size = len(vocab) + 1
# define weight matrix dimensions with all 0
weight_matrix = zeros((vocab_size, 100))
# step vocab, store vectors using the Tokenizer's integer mapping
for word, i in vocab.items():
weight_matrix[i] = embedding.get(word)
return weight_matrix
# load embedding from file
raw_embedding = load_embedding('embedding_word2vec.txt')
# get vectors in the right order
embedding_vectors = get_weight_matrix(raw_embedding, t.word_index)
一旦你有了嵌入矩阵,你就可以像这样在Embedding 层中使用它
e = Embedding(vocab_size, 100, weights=[embedding_vectors], input_length=4, trainable=False)
这个层可以用来制作这样的模型
model = Sequential()
e = Embedding(vocab_size, 100, weights=[embedding_matrix], input_length=4, trainable=False)
model.add(e)
model.add(Flatten())
model.add(Dense(1, activation='sigmoid'))
# compile the model
model.compile(optimizer='adam', loss='binary_crossentropy', metrics=['acc'])
# summarize the model
print(model.summary())
# fit the model
model.fit(padded_docs, labels, epochs=50, verbose=0)
所有代码均改编自this awesome blog post。关注它以了解更多关于使用 Glove 进行嵌入的信息
有关使用 word2vec 的信息,请参阅 this 帖子