如何使用 keras 构建注意力模型?

Eka*_*Eka 14 python deep-learning keras tensorflow attention-model

我正在尝试理解注意力模型并自己构建一个。经过多次搜索,我发现了这个网站,它有一个用 keras 编码的注意力模型,而且看起来也很简单。但是当我试图在我的机器上构建相同的模型时,它给出了多个参数错误。错误是由于传入 class 的参数不匹配Attention。在网站的注意力类中,它要求一个参数,但它用两个参数启动注意力对象。

import tensorflow as tf

max_len = 200
rnn_cell_size = 128
vocab_size=250

class Attention(tf.keras.Model):
    def __init__(self, units):
        super(Attention, self).__init__()
        self.W1 = tf.keras.layers.Dense(units)
        self.W2 = tf.keras.layers.Dense(units)
        self.V = tf.keras.layers.Dense(1)
    def call(self, features, hidden):
        hidden_with_time_axis = tf.expand_dims(hidden, 1)
        score = tf.nn.tanh(self.W1(features) + self.W2(hidden_with_time_axis))
        attention_weights = tf.nn.softmax(self.V(score), axis=1)
        context_vector = attention_weights * features
        context_vector = tf.reduce_sum(context_vector, axis=1)
        return context_vector, attention_weights

sequence_input = tf.keras.layers.Input(shape=(max_len,), dtype='int32')

embedded_sequences = tf.keras.layers.Embedding(vocab_size, 128, input_length=max_len)(sequence_input)

lstm = tf.keras.layers.Bidirectional(tf.keras.layers.LSTM
                                     (rnn_cell_size,
                                      dropout=0.3,
                                      return_sequences=True,
                                      return_state=True,
                                      recurrent_activation='relu',
                                      recurrent_initializer='glorot_uniform'), name="bi_lstm_0")(embedded_sequences)

lstm, forward_h, forward_c, backward_h, backward_c = tf.keras.layers.Bidirectional \
    (tf.keras.layers.LSTM
     (rnn_cell_size,
      dropout=0.2,
      return_sequences=True,
      return_state=True,
      recurrent_activation='relu',
      recurrent_initializer='glorot_uniform'))(lstm)

state_h = tf.keras.layers.Concatenate()([forward_h, backward_h])
state_c = tf.keras.layers.Concatenate()([forward_c, backward_c])

#  PROBLEM IN THIS LINE
context_vector, attention_weights = Attention(lstm, state_h)

output = keras.layers.Dense(1, activation='sigmoid')(context_vector)

model = keras.Model(inputs=sequence_input, outputs=output)

# summarize layers
print(model.summary())
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我怎样才能使这个模型工作?

gis*_*ang 9

初始化attention layer和传递参数的方式有问题。你应该attention layer在这个地方指定单位数量并修改传入参数的方式?

context_vector, attention_weights = Attention(32)(lstm, state_h)
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结果:

__________________________________________________________________________________________________
Layer (type)                    Output Shape         Param #     Connected to                     
==================================================================================================
input_1 (InputLayer)            (None, 200)          0                                            
__________________________________________________________________________________________________
embedding (Embedding)           (None, 200, 128)     32000       input_1[0][0]                    
__________________________________________________________________________________________________
bi_lstm_0 (Bidirectional)       [(None, 200, 256), ( 263168      embedding[0][0]                  
__________________________________________________________________________________________________
bidirectional (Bidirectional)   [(None, 200, 256), ( 394240      bi_lstm_0[0][0]                  
                                                                 bi_lstm_0[0][1]                  
                                                                 bi_lstm_0[0][2]                  
                                                                 bi_lstm_0[0][3]                  
                                                                 bi_lstm_0[0][4]                  
__________________________________________________________________________________________________
concatenate (Concatenate)       (None, 256)          0           bidirectional[0][1]              
                                                                 bidirectional[0][3]              
__________________________________________________________________________________________________
attention (Attention)           [(None, 256), (None, 16481       bidirectional[0][0]              
                                                                 concatenate[0][0]                
__________________________________________________________________________________________________
dense_3 (Dense)                 (None, 1)            257         attention[0][0]                  
==================================================================================================
Total params: 706,146
Trainable params: 706,146
Non-trainable params: 0
__________________________________________________________________________________________________
None
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Rec*_*şen 9

注意层现在是 Tensorflow(2.1) 的 Keras API 的一部分。但它输出与您的“查询”张量相同大小的张量。

这是如何使用 Luong-style attention:

query_attention = tf.keras.layers.Attention()([query, value])
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和 Bahdanau 式的关注:

query_attention = tf.keras.layers.AdditiveAttention()([query, value])
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改编版本:

attention_weights = tf.keras.layers.Attention()([lstm, state_h])

查看原始网站了解更多信息:https : //www.tensorflow.org/api_docs/python/tf/keras/layers/Attention https://www.tensorflow.org/api_docs/python/tf/keras/layers/添加注意力

  • 您能否根据这个特定OP的问题澄清“查询”和“值”?OP 希望将“lstm”和“state_h”传递给注意力层。 (2认同)