I am trying to build several models predicting different market developments, each using the same encoder network. So I defined a shared LSTM Network like so:
def build_LSTM(layer_1_units=64, layer_2_units=128, dense_units_1=16, dropout=0.2, end_activation='softmax', optimizer='Adam'): model = tf.keras.models.Sequential([ kl.LSTM(layer_1_units, return_sequences=True, input_shape=(SEQ_LEN, 56), name='Encoder/LSTM_1'), kl.LSTM(layer_2_units, name='Encoder/LSTM_2'), kl.BatchNormalization(name='Encoder/BatchNorm'), kl.Dropout(dropout, name='Encoder/Dropout'), kl.Dense(dense_units_1, activation='relu', name='Encoder/Dense') ]) return model
I also defined a class for each market, which has the following model as a member:
class MarketModel(tf.keras.Model): def __init__(self, encoder_model, name): super(MarketModel, self).__init__() self.dense1 = kl.Dense(64, activation='relu', name=name + '/Dense_1') self.out = kl.Dense(2, activation='softmax', name=name + '/Out') self.encoder = encoder_model def call(self, inputs): x = self.encoder(inputs) x = self.dense1(x) return self.out(x)
So far so good, the models can all be trained on their respective data.
The LSTM model is built once and passed to each MarketModel as the
My goal is to have the LSTM learn to create a latent space which is then used by the additional Dense layers for prediction.
After checking the histograms, however, I realized that the encoder network weights are not changing at all.
I checked the
trainable_variables and all layers are listed, so in theory this should work, right?
I also saved the encoder weights before a training step via
old_enc_weights = tf.identity(market.model.encoder.layers.weights)
and compared them to the weights after training
print(market.model.encoder.layers.weights - old_enc_weights)
and sure enough, the weights did not change at all (the printed out result only contains 0's)
What am I missing? Shouldn't the gradient propagate through the Sequential LSTM network as well? Since I am only adding two layers, the gradient should not vanish, right?