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trying to implement the model from paper Ensemble Application of Convolutional and Recurrent Neural Networks for Multi-label Text Categorization in keras

The model looks like the following (taken from the paper) enter image description here

I have the code as

document_input = Input(shape=(None,), dtype='int32')
embedding_layer = Embedding(vocab_size, WORD_EMB_SIZE, weights=[initial_embeddings], 
                                input_length=DOC_SEQ_LEN, trainable=True)
convs = []
filter_sizes = [2,3,4,5]

doc_embedding = embedding_layer(document_input)
for filter_size in filter_sizes:
    l_conv = Conv1D(filters=256, kernel_size=filter_size, padding='same', activation='relu')(doc_embedding)
    l_pool = MaxPooling1D(filter_size)(l_conv)
    convs.append(l_pool)

l_merge = Concatenate(axis=1)(convs)
l_flat = Flatten()(l_merge)
l_dense = Dense(100, activation='relu')(l_flat)
l_dense_3d = Reshape((1,int(l_dense.shape[1])))(l_dense)

gene_variation_input = Input(shape=(None,), dtype='int32')
gene_variation_embedding = embedding_layer(gene_variation_input)
rnn_layer = LSTM(100, return_sequences=False, stateful=True)(gene_variation_embedding,initial_state=[l_dense_3d])

l_flat = Flatten()(rnn_layer)
output_layer = Dense(9, activation='softmax')(l_flat)
model = Model(inputs=[document_input,gene_variation_input], outputs=[output_layer])

I dont know whether I am setting up the Text feature vector right in the above diagram right ! I tried and I get the error as

ValueError: Layer lstm_9 expects 3 inputs, but it received 2 input tensors. Input received: [<tf.Tensor 'embedding_10_1/Gather:0' shape=(?, ?, 200) dtype=float32>, <tf.Tensor 'reshape_9/Reshape:0' shape=(?, 1, 100) dtype=float32>]

I did follow the section on Note on specifying the initial state of RNNs in keras documentation and code

Any help appreciated.

update: The suggestion and some more reading into the code the model looks like this

embedding_layer = Embedding(vocab_size, WORD_EMB_SIZE, weights=[initial_embeddings], trainable=True)

document_input = Input(shape=(DOC_SEQ_LEN,), batch_shape=(BATCH_SIZE, DOC_SEQ_LEN),dtype='int32')
doc_embedding = embedding_layer(document_input)

convs = []
filter_sizes = [2,3,4,5]

for filter_size in filter_sizes:
    l_conv = Conv1D(filters=256, kernel_size=filter_size, padding='same', activation='relu')(doc_embedding)
    l_pool = MaxPooling1D(filter_size)(l_conv)
    convs.append(l_pool)

l_merge = Concatenate(axis=1)(convs)
l_flat = Flatten()(l_merge)
l_dense = Dense(100, activation='relu')(l_flat)

gene_variation_input = Input(shape=(GENE_VARIATION_SEQ_LEN,), batch_shape=(BATCH_SIZE, GENE_VARIATION_SEQ_LEN),dtype='int32')
gene_variation_embedding = embedding_layer(gene_variation_input)

rnn_layer = LSTM(100, return_sequences=False, 
                 batch_input_shape=(BATCH_SIZE, GENE_VARIATION_SEQ_LEN, WORD_EMB_SIZE),
                 stateful=False)(gene_variation_embedding, initial_state=[l_dense, l_dense])

output_layer = Dense(9, activation='softmax')(rnn_layer)

model = Model(inputs=[document_input,gene_variation_input], outputs=[output_layer])

model summary

____________________________________________________________________________________________________
Layer (type)                     Output Shape          Param #     Connected to                     
====================================================================================================
input_8 (InputLayer)             (32, 9)               0                                            
____________________________________________________________________________________________________
input_7 (InputLayer)             (32, 4000)            0                                            
____________________________________________________________________________________________________
embedding_6 (Embedding)          multiple              73764400    input_7[0][0]                    
                                                                   input_8[0][0]                    
____________________________________________________________________________________________________
conv1d_13 (Conv1D)               (32, 4000, 256)       102656      embedding_6[0][0]                
____________________________________________________________________________________________________
conv1d_14 (Conv1D)               (32, 4000, 256)       153856      embedding_6[0][0]                
____________________________________________________________________________________________________
conv1d_15 (Conv1D)               (32, 4000, 256)       205056      embedding_6[0][0]                
____________________________________________________________________________________________________
conv1d_16 (Conv1D)               (32, 4000, 256)       256256      embedding_6[0][0]                
____________________________________________________________________________________________________
max_pooling1d_13 (MaxPooling1D)  (32, 2000, 256)       0           conv1d_13[0][0]                  
____________________________________________________________________________________________________
max_pooling1d_14 (MaxPooling1D)  (32, 1333, 256)       0           conv1d_14[0][0]                  
____________________________________________________________________________________________________
max_pooling1d_15 (MaxPooling1D)  (32, 1000, 256)       0           conv1d_15[0][0]                  
____________________________________________________________________________________________________
max_pooling1d_16 (MaxPooling1D)  (32, 800, 256)        0           conv1d_16[0][0]                  
____________________________________________________________________________________________________
concatenate_4 (Concatenate)      (32, 5133, 256)       0           max_pooling1d_13[0][0]           
                                                                   max_pooling1d_14[0][0]           
                                                                   max_pooling1d_15[0][0]           
                                                                   max_pooling1d_16[0][0]           
____________________________________________________________________________________________________
flatten_4 (Flatten)              (32, 1314048)         0           concatenate_4[0][0]              
____________________________________________________________________________________________________
dense_6 (Dense)                  (32, 100)             131404900   flatten_4[0][0]                  
____________________________________________________________________________________________________
lstm_4 (LSTM)                    (32, 100)             120400      embedding_6[1][0]                
                                                                   dense_6[0][0]                    
                                                                   dense_6[0][0]                    
____________________________________________________________________________________________________
dense_7 (Dense)                  (32, 9)               909         lstm_4[0][0]                     
====================================================================================================
Total params: 206,008,433
Trainable params: 206,008,433
Non-trainable params: 0
____________________________________________________________________________________________________
  • Shouldn't initial_states be in LSTM call? – Marcin Możejko Sep 13 '17 at 21:08
  • based on some issues in github and code, it has to be in the arguments passed. I am trying out recurrentShop – bicepjai Sep 13 '17 at 21:16
  • Yes - but you passed it to Embedding, not LSTM. – Marcin Możejko Sep 13 '17 at 21:18
  • you are right. thats a typo. I will fix it. – bicepjai Sep 13 '17 at 21:50
2

An LSTM has 2 hidden states, but you are providing only 1 initial state. You could do one of the following:

Replace LSTM with an RNN which has only 1 hidden state, such as GRU:

rnn_layer = GRU(100, return_sequences=False, stateful=True)
(gene_variation_embedding,initial_state=[l_dense_3d])

Or pass zeros as initial state for the second hidden state of LSTM:

zeros = Lambda(lambda x: K.zeros_like(x), output_shape=lambda s: s)(l_dense_3d)
rnn_layer = LSTM(100, return_sequences=False, stateful=True)
(gene_variation_embedding,initial_state=[l_dense_3d, zeros])
  • I take it as the initial states are h_0 and c_0. After reading thru philipperemy.github.io/keras-stateful-lstm keras stateful definition is clear. But i want to just set the h_0 and c_0 states, but stateful = False, seems like keras supports that. – bicepjai Sep 15 '17 at 3:15
  • stateful is used when you want the network to remember the state across batches, it is not the same thing. – farizrahman4u Sep 15 '17 at 5:43
  • @farizrahman4u with hidden_states = K.variable(value=np.zeros((1, 10))) amd cell_states = K.variable(value=np.zeros((1, 10))) lstm = LSTM(10)(input,initial_state=[hidden_states,cell_states]) I get TypeError: 'list' object is not callable. – user2614596 Oct 30 '17 at 12:17

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