using output from one LSTM as input into another lstm in tensorflow

回眸只為那壹抹淺笑 提交于 2020-05-28 07:25:06

问题


I want to build an LSTM based neural network which takes two kinds of inputs and predicts two kinds of outputs. A rough structure can be seen in following figure..

The output 2 is dependent upon output 1 and as described in answer to a similar question here, I have tried to implement this by setting the initial state of LSTM 2 from hidden states of LSTM 1. I have implemented this using tensorflow using following code.

import tensorflow as tf

from tensorflow.keras.layers import Input
from tensorflow.keras.layers import LSTM
from tensorflow.keras.layers import Dense
import numpy as np

np.set_printoptions(suppress=True) # to suppress scientific notation while printing arrays

def reset_graph(seed=2):
    tf.compat.v1.reset_default_graph()
    tf.random.set_seed(seed)  # tf.set_random_seed(seed)
    np.random.seed(seed)

tf.__version__

seq_len = 10
in_features1 = 3
in_features2 = 5
batch_size = 2
units = 5

# define input data
data1 = np.random.normal(0,1, size=(batch_size, seq_len, in_features1))
print('input 1 shape is', data1.shape)

data2 = np.random.normal(0,1, size=(batch_size, seq_len, in_features2))
print('input 2 shape is', data2.shape)

reset_graph()

# define model
inputs1 = Input(shape=(seq_len, in_features1))
inputs2 = Input(shape=(seq_len, in_features2))
lstm1 = LSTM(units, return_state=True)
lstm1_out, lstm_h, lstm_c = lstm1(inputs1, initial_state=None)
dense1 = Dense(1)
dense1_out = dense1(lstm1_out)

lstm2 = LSTM(units)
lstm2_out = lstm2(inputs2, initial_state=[lstm_h, lstm_c])

dense2 = Dense(1)
dense2_out = dense2(lstm2_out)

The inputs to two LSTMs are not exactly same because some of the input 2 have nothing to do with output 1 but output 2 is definitely influenced by output 1. For example output 1 is water flow and output 2 is water quality. So water quality is influenced by water flow.

This code runs fine but I am not sure if this code does what I intend to do i.e. working of LSTM 2 being influenced by output of LSTM 1.

Question: Please verify if the implementation and reasoning is correct or wrong?


回答1:


A possible solution could be concatenating the output of LSTM1 to input2. As LSTM1 return a sequence (return_sequence=True) you can just concatenate the output of the LSTM1 (seq_len, num_units) to imput2 (seq_len, in_features2) resulting in (seq_len, num_units + in_features2).

Something like this could work:

# define model
inputs1 = Input(shape=(seq_len, in_features1))
inputs2 = Input(shape=(seq_len, in_features2))

lstm1 = LSTM(units, return_state=True)
lstm1_out = lstm1(inputs1)

lstm2_input = tf.keras.layers.concatenate([inputs2, lstm1_out])
lstm2 = LSTM(units)
lstm2_out = lstm2(lstm2_input)

dense1 = Dense(1)
dense1_out = dense1(lstm1_out)

dense2 = Dense(1)
dense2_out = dense2(lstm2_out)

Hope it helps! :)



来源:https://stackoverflow.com/questions/62034413/using-output-from-one-lstm-as-input-into-another-lstm-in-tensorflow

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