I am training a LSTM model with Keras on the dataset which looks like following. The variable "Description" is a text field and "Age" and "Gender" are categorical and continuous fields.

Age, Gender, Description
22, M, "purchased a phone"
35, F, "shopping for kids"

I am using word-embedding to convert the text fields to word vectors and then input it in the keras model. The code is given below:

model = Sequential()
model.add(Embedding(word_index, 300, weights=[embedding_matrix], input_length=70, trainable=False))

model.add(LSTM(300, dropout=0.3, recurrent_dropout=0.3))
model.compile(loss='binary_crossentropy', optimizer='adam', metrics['accuracy'])

This model is running successfully but I want to input "age" and "gender" variables as features as well. What changes are required in the code to use these features as well ?

  • Could you please tell me how you input your file that contains Age and Gender? – Abu Shoeb Sep 1 '18 at 7:11

You want to add more input layers which is not possible with Sequential Model, you have to go for functional model

from keras.models import Model

which allows you to have multiple inputs and indirect connections.

embed = Embedding(word_index, 300, weights=[embedding_matrix], input_length=70, trainable=False)
lstm = LSTM(300, dropout=0.3, recurrent_dropout=0.3)(embed)
agei = Input(shape=(1,))
conc = Concatenate()(lstm, agei)
drop = Dropout(0.6)(conc)
dens = Dense(1)(drop)
acti = Activation('sigmoid')(dens)

model = Model([embed, agei], acti)
model.compile(loss='binary_crossentropy', optimizer='adam', metrics['accuracy'])

You cannot concatenate before LSTM layer as it doesn't make sense and also you will have 3D Tensor after embedding layer and input is a 2D Tensor.

  • Thanks .. It worked – userxxx Mar 9 '18 at 13:24
  • agei is the input for the age and gender, right? If so, how can I use my input.csv that has age and gender information? – Abu Shoeb Sep 1 '18 at 7:13
  • @userxxx hey can you please share your full code? I want to use the additional features with word embedding. – Abu Shoeb Sep 1 '18 at 21:57

Consider having a separate feedforward network that takes in those features and outputs some n dimensional vector.

time_independent = Input(shape=(num_features,))
dense_1 = Dense(200, activation='tanh')(time_independent)
dense_2 = Dense(300, activation='tanh')(dense_1)

Firstly, please use keras' functional API to do something like this.

You would then either pass this in as the hidden state of the LSTM, or you can concatenate it with every word embedding so that the lstm sees it at every timestep. In the latter case, you would want to drastically reduce the dimensionality of the network.

If you need an example, let me know.

  • 2
    An example will be helpful – userxxx Mar 8 '18 at 15:32
  • @modesitt could you please give a complete example? I need to use additional features with word-embeddings. My additional features are stored in input.csv file and it has 3 columns. – Abu Shoeb Sep 1 '18 at 7:17

I wrote about how to do this in keras. It's basically a functional multiple input model, which concatenates both feature vectors liek this:

nlp_input = Input(shape=(seq_length,), name='nlp_input')
meta_input = Input(shape=(10,), name='meta_input')
emb = Embedding(output_dim=embedding_size, input_dim=100, input_length=seq_length)(nlp_input)
nlp_out = Bidirectional(LSTM(128))(emb)
x = concatenate([nlp_out, meta_input])
x = Dense(classifier_neurons, activation='relu')(x)
x = Dense(1, activation='sigmoid')(x)
model = Model(inputs=[nlp_input , meta_input], outputs=[x])

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