From this example: https://github.com/fchollet/keras/blob/master/examples/imdb_cnn.py
comes this snippet below. The embedding layer outputs a 400 x 50 matrix for each example in a batch. My question is how does the 1D convolution work? How does it work across the 400 x 50 matrix?
# we start off with an efficient embedding layer which maps # our vocab indices into embedding_dims dimensions model.add(Embedding(max_features, embedding_dims, input_length=maxlen, dropout=0.2)) # we add a Convolution1D, which will learn nb_filter # word group filters of size filter_length: model.add(Convolution1D(nb_filter=nb_filter, filter_length=filter_length, border_mode='valid', activation='relu', subsample_length=1))