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Dot-product attention layer, a.k.a. Luong-style attention.
tf.keras.layers.Attention( use_scale=False, **kwargs )
Inputs are query
tensor of shape [batch_size, Tq, dim]
, value
tensor of shape [batch_size, Tv, dim]
and key
tensor of shape [batch_size, Tv, dim]
. The calculation follows the steps:
[batch_size, Tq, Tv]
as a query
-key
dot product: scores = tf.matmul(query, key, transpose_b=True)
.[batch_size, Tq, Tv]
: distribution = tf.nn.softmax(scores)
.distribution
to create a linear combination of value
with shape [batch_size, Tq, dim]
: return tf.matmul(distribution, value)
.Args | |
---|---|
use_scale | If True , will create a scalar variable to scale the attention scores. |
causal | Boolean. Set to True for decoder self-attention. Adds a mask such that position i cannot attend to positions j > i . This prevents the flow of information from the future towards the past. |
dropout | Float between 0 and 1. Fraction of the units to drop for the attention scores. |
inputs
: List of the following tensors: Tensor
of shape [batch_size, Tq, dim]
.Tensor
of shape [batch_size, Tv, dim]
.Tensor
of shape [batch_size, Tv, dim]
. If not given, will use value
for both key
and value
, which is the most common case.mask
: List of the following tensors: Tensor
of shape [batch_size, Tq]
. If given, the output will be zero at the positions where mask==False
.Tensor
of shape [batch_size, Tv]
. If given, will apply the mask such that values at positions where mask==False
do not contribute to the result.training
: Python boolean indicating whether the layer should behave in training mode (adding dropout) or in inference mode (no dropout).Attention outputs of shape [batch_size, Tq, dim]
.
The meaning of query
, value
and key
depend on the application. In the case of text similarity, for example, query
is the sequence embeddings of the first piece of text and value
is the sequence embeddings of the second piece of text. key
is usually the same tensor as value
.
Here is a code example for using Attention
in a CNN+Attention network:
# Variable-length int sequences. query_input = tf.keras.Input(shape=(None,), dtype='int32') value_input = tf.keras.Input(shape=(None,), dtype='int32') # Embedding lookup. token_embedding = tf.keras.layers.Embedding(max_tokens, dimension) # Query embeddings of shape [batch_size, Tq, dimension]. query_embeddings = token_embedding(query_input) # Value embeddings of shape [batch_size, Tv, dimension]. value_embeddings = token_embedding(value_input) # CNN layer. cnn_layer = tf.keras.layers.Conv1D( filters=100, kernel_size=4, # Use 'same' padding so outputs have the same shape as inputs. padding='same') # Query encoding of shape [batch_size, Tq, filters]. query_seq_encoding = cnn_layer(query_embeddings) # Value encoding of shape [batch_size, Tv, filters]. value_seq_encoding = cnn_layer(value_embeddings) # Query-value attention of shape [batch_size, Tq, filters]. query_value_attention_seq = tf.keras.layers.Attention()( [query_seq_encoding, value_seq_encoding]) # Reduce over the sequence axis to produce encodings of shape # [batch_size, filters]. query_encoding = tf.keras.layers.GlobalAveragePooling1D()( query_seq_encoding) query_value_attention = tf.keras.layers.GlobalAveragePooling1D()( query_value_attention_seq) # Concatenate query and document encodings to produce a DNN input layer. input_layer = tf.keras.layers.Concatenate()( [query_encoding, query_value_attention]) # Add DNN layers, and create Model. # ...
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Licensed under the Creative Commons Attribution License 3.0.
Code samples licensed under the Apache 2.0 License.
https://www.tensorflow.org/versions/r2.3/api_docs/python/tf/keras/layers/Attention