I have two inputs, x_a and x_b where x_a is a categorical variable (hence the embedding) and x_b which is a usual feature matrix. Basically I want to multiply x_b by a weights matrix W_b which is a
10x64 matrix so that I end up with a 64 dimensional output.
from keras.models import Sequential from keras.layers import Dense, Activation, Embedding, Merge encoder_cc = Sequential() # Input layer for countries(x_a) encoder_cc.add(Embedding(cc_idx.max(),64)) # Input layer for triggers(x_b) encoder_trigger = Sequential() # This should effectively be <W_b> encoder_trigger.add(Dense(64, input_dim=10, init='uniform')) model = Sequential() model.add(Merge([encoder_cc, encoder_trigger], mode='concat'))
Then I want to combine (merge) these two before I do the usual Neural net stuff. Except that I get the error:
Exception: "concat" mode can only merge layers with matching output shapes except for the concat axis. Layer shapes: [(None, 1, 64), (None, 64)]
Any thoughts on how I can resolve this?