I am trying to implement a sequence 2 sequence model with attention using keras library. The block diagram of the model is as follows
The model embeds the input sequence into a 3D tensors. Then bidirectional lstm creates the encoding layer. Next the encoded sequences are sent to a custom Attention layer that returns a 2d tensor having attention weights for each hidden node. Decoder input is injected on the model as one hot vector. Now in the decoder (another bi-lstm) both decoder input and the attention weight are passed as input. The output of the decoder is sent to time distributed dense layer with softmax activation function to get the output for every time step in the means of probability. The code of the model is as follows:
encoder_input = Input(shape=(MAX_LENGTH_Input, )) embedded = Embedding(input_dim= vocab_size_input, output_dim= embedding_width,trainable=False)(encoder_input) encoder = Bidirectional(LSTM(units= hidden_size, input_shape=(MAX_LENGTH_Input,embedding_width), return_sequences=True, dropout=0.25,recurrent_dropout=0.25))(embedded) attention = Attention(MAX_LENGTH_Input)(encoder) decoder_input = Input(shape=(MAX_LENGTH_Output,vocab_size_output)) merge = concatenate([attention, decoder_input]) decoder = Bidirectional(LSTM(units=hidden_size, input_shape=(MAX_LENGTH_Output,vocab_size_output))(merge)) output = TimeDistributed(Dense(MAX_LENGTH_Output, activation="softmax"))(decoder)
The problem is when i am concatenating attention layer and decoder input. Since the decoder input is a 3d tensor whereas attention is a 2d tensor, its showing following error:
Concatenatelayer requires inputs with matching shapes except for the concat axis. Got inputs shapes: [(None, 1024), (None, 10, 8281)]
How can I convert 2d Attention tensor into 3d tensor?