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self_z_yang.py
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self_z_yang.py
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"""
(c) Ilya Ivanov
github: https://github.com/ilivans
code: https://github.com/ilivans/tf-rnn-attention
"""
import tensorflow as tf
def self_attention_by_z_yang(inputs, attention_size, time_major=False):
"""
Attention mechanism layer which reduces RNN/Bi-RNN outputs with Attention vector.
The idea was proposed in the article by Z. Yang et al., "Hierarchical Attention Networks
for Document Classification", 2016: http://www.aclweb.org/anthology/N16-1174.
Variables notation is also inherited from the article
Args:
inputs: The Attention inputs.
Matches outputs of RNN/Bi-RNN layer (not final state):
In case of RNN, this must be RNN outputs `Tensor`:
If time_major == False (default), this must be a tensor of shape:
`[batch_size, max_time, cell.output_size]`.
If time_major == True, this must be a tensor of shape:
`[max_time, batch_size, cell.output_size]`.
In case of Bidirectional RNN, this must be a tuple (outputs_fw, outputs_bw) containing the forward and
the backward RNN outputs `Tensor`.
If time_major == False (default),
outputs_fw is a `Tensor` shaped:
`[batch_size, max_time, cell_fw.output_size]`
and outputs_bw is a `Tensor` shaped:
`[batch_size, max_time, cell_bw.output_size]`.
If time_major == True,
outputs_fw is a `Tensor` shaped:
`[max_time, batch_size, cell_fw.output_size]`
and outputs_bw is a `Tensor` shaped:
`[max_time, batch_size, cell_bw.output_size]`.
attention_size: Linear size of the Attention weights.
time_major: The shape format of the `inputs` Tensors.
If true, these `Tensors` must be shaped `[max_time, batch_size, depth]`.
If false, these `Tensors` must be shaped `[batch_size, max_time, depth]`.
Using `time_major = True` is a bit more efficient because it avoids
transposes at the beginning and end of the RNN calculation. However,
most TensorFlow data is batch-major, so by default this function
accepts input and emits output in batch-major form.
Returns:
alphas: Tensor
tensor of shape (B, T), which corresponds to weights of the particular time-series item.
"""
if isinstance(inputs, tuple):
# In case of Bi-RNN, concatenate the forward and the backward RNN outputs.
inputs = tf.concat(inputs, 2)
if time_major:
# (T,B,D) => (B,T,D)
inputs = tf.array_ops.transpose(inputs, [1, 0, 2])
hidden_size = inputs.shape[2].value # D value - hidden size of the RNN layer
initializer = tf.random_normal_initializer(stddev=0.1)
# Trainable parameters
w_omega = tf.compat.v1.get_variable(name="w_omega", shape=[hidden_size, attention_size], initializer=initializer)
b_omega = tf.compat.v1.get_variable(name="b_omega", shape=[attention_size], initializer=initializer)
u_omega = tf.compat.v1.get_variable(name="u_omega", shape=[attention_size], initializer=initializer)
with tf.name_scope('v'):
# Applying fully connected layer with non-linear activation to each of the B*T timestamps;
# the shape of `v` is (B,T,D)*(D,A)=(B,T,A), where A=attention_size
v = tf.tanh(tf.tensordot(inputs, w_omega, axes=1) + b_omega)
# For each of the timestamps its vector of size A from `v` is reduced with `u` vector
vu = tf.tensordot(v, u_omega, axes=1, name='vu') # (B,T) shape
alphas = tf.nn.softmax(vu, name='alphas') # (B,T) shape
return alphas
def calculate_sequential_attentive_weights_by_z_yang(inputs, alphas):
"""Attention mechanism layer which reduces RNN/Bi-RNN outputs with Attention vector.
The idea was proposed in the article by Z. Yang et al., "Hierarchical Attention Networks
for Document Classification", 2016: http://www.aclweb.org/anthology/N16-1174.
Variables notation is also inherited from the article
Proposes to reduce the time-series parameter
inputs: Tensor
tensor of shape (B, T, D), where
B -- batch, T -- time-series (context terms), D -- data or hidden embedding.
alphas: Tensor
tensor of shape (B, T), which corresponds to weights of the particular time-series item.
"""
# Output of (Bi-)RNN is reduced with attention vector; the result has (B,D) shape
output = tf.reduce_sum(inputs * tf.expand_dims(alphas, -1), 1)
return output