I am new to tensorflow and to word2vec. I just studied the word2vec_basic.py which trains the model using
Skip-Gram algorithm. Now I want to train using
CBOW algorithm. Is it true that this can be achieved if I simply reverse the
CBOW model can not simply be achieved by flipping the
train_inputs and the
CBOW model architecture uses the sum of the vectors of surrounding words as one single instance for the classifier to predict. E.g., you should use
[the, brown] together to predict
quick rather than using
the to predict
To implement CBOW, you'll have to write a new
generate_batch generator function and sum up the vectors of surrounding words before applying logistic regression. I wrote an example you can refer to: https://github.com/wangz10/tensorflow-playground/blob/master/word2vec.py#L105
For CBOW, You need to change only few parts of the code word2vec_basic.py. Overall the training structure and method are the same.
Which parts should I change in word2vec_basic.py?
1) The way it generates training data pairs. Because in CBOW, you are predicting the center word, not the context words.
The new version for
generate_batch will be
def generate_batch(batch_size, bag_window): global data_index span = 2 * bag_window + 1 # [ bag_window target bag_window ] batch = np.ndarray(shape=(batch_size, span - 1), dtype=np.int32) labels = np.ndarray(shape=(batch_size, 1), dtype=np.int32) buffer = collections.deque(maxlen=span) for _ in range(span): buffer.append(data[data_index]) data_index = (data_index + 1) % len(data) for i in range(batch_size): # just for testing buffer_list = list(buffer) labels[i, 0] = buffer_list.pop(bag_window) batch[i] = buffer_list # iterate to the next buffer buffer.append(data[data_index]) data_index = (data_index + 1) % len(data) return batch, labels
Then new training data for CBOW would be
data: ['anarchism', 'originated', 'as', 'a', 'term', 'of', 'abuse', 'first', 'used', 'against', 'early', 'working', 'class', 'radicals', 'including', 'the'] #with bag_window = 1: batch: [['anarchism', 'as'], ['originated', 'a'], ['as', 'term'], ['a', 'of']] labels: ['originated', 'as', 'a', 'term']
compared to Skip-gram's data
#with num_skips = 2 and skip_window = 1: batch: ['originated', 'originated', 'as', 'as', 'a', 'a', 'term', 'term', 'of', 'of', 'abuse', 'abuse', 'first', 'first', 'used', 'used'] labels: ['as', 'anarchism', 'originated', 'a', 'term', 'as', 'a', 'of', 'term', 'abuse', 'of', 'first', 'used', 'abuse', 'against', 'first']
2) Therefore you also need to change the variable shape
train_dataset = tf.placeholder(tf.int32, shape=[batch_size])
train_dataset = tf.placeholder(tf.int32, shape=[batch_size, bag_window * 2])
3) loss function
loss = tf.reduce_mean(tf.nn.sampled_softmax_loss( weights = softmax_weights, biases = softmax_biases, inputs = tf.reduce_sum(embed, 1), labels = train_labels, num_sampled= num_sampled, num_classes= vocabulary_size))
Notice inputs = tf.reduce_sum(embed, 1) as Zichen Wang mentioned it.
This is it!
for the given text
the quick brown fox jumped over the lazy dog:, the CBOW instances for window size 1 would be
([the, brown], quick), ([quick, fox], brown), ([brown, jumped], fox), ...