I am trying to replicate the work of a paper (on binary classification of text) to form a benchmark for my model- the paper said: "these tokenized tweets are transformed into an embedding using the aforementioned pretrained GloVE model. The resulting sequence of vectors is then fed to the LSTM that outputs a single 32-dimension vector that is then fed forward through 2 ReLU activated layers of size 128 and 64 to yield the output"

So would that translate to :

model_glove1 = Sequential()
model_glove1.add(Embedding(vocabulary_size, 25, input_length=50, weights=[embedding_matrix25],trainable=False))
model_glove1.add(Dense(128, activation='relu'))
model_glove1.add(Dense(64, activation='relu'))
model_glove1.compile(loss='binary_crossentropy', optimizer='adam', metrics=['accuracy',auc_roc])

The output of the last dense layer will be of shape (64,) when the loss function binary_crossentropy expects of shape(1,)

  • What's your problem? – giser_yugang Dec 11 '18 at 6:42
  • @giser_yugang This is the architecture of the model that is described in the paper - deep neural nets for bot detection (name of the paper) . I am trying to replicate it. But how can I pass a dense 64 layer output to a binary classifier problem ? which they have said according to their paper. I am new to this and not sure if this is exactly what they mean. Could you please help me out – aastha Dec 11 '18 at 9:30
  • Your mistake is either to replace 64 with 1 or to add a layer of dense. – giser_yugang Dec 12 '18 at 12:16
  • @giser_yugang thats whta I thought but the architecture of the model in the paper mentions only these two dense layers – aastha Dec 15 '18 at 18:09
  • The paper may use one-hot, which changed from one-dimensional to 64 dimensional. Maybe you should read the paper carefully. – giser_yugang Dec 16 '18 at 6:34

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