sentiment_analysis_layer - GRU.py 3.6 KB

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  1. #%%
  2. import os
  3. import tensorflow as tf
  4. import numpy as np
  5. from tensorflow import keras
  6. from tensorflow.keras import layers, losses, optimizers, Sequential
  7. tf.random.set_seed(22)
  8. np.random.seed(22)
  9. os.environ['TF_CPP_MIN_LOG_LEVEL'] = '2'
  10. assert tf.__version__.startswith('2.')
  11. batchsz = 128 # 批量大小
  12. total_words = 10000 # 词汇表大小N_vocab
  13. max_review_len = 80 # 句子最大长度s,大于的句子部分将截断,小于的将填充
  14. embedding_len = 100 # 词向量特征长度f
  15. # 加载IMDB数据集,此处的数据采用数字编码,一个数字代表一个单词
  16. (x_train, y_train), (x_test, y_test) = keras.datasets.imdb.load_data(num_words=total_words)
  17. print(x_train.shape, len(x_train[0]), y_train.shape)
  18. print(x_test.shape, len(x_test[0]), y_test.shape)
  19. #%%
  20. x_train[0]
  21. #%%
  22. # 数字编码表
  23. word_index = keras.datasets.imdb.get_word_index()
  24. # for k,v in word_index.items():
  25. # print(k,v)
  26. #%%
  27. word_index = {k:(v+3) for k,v in word_index.items()}
  28. word_index["<PAD>"] = 0
  29. word_index["<START>"] = 1
  30. word_index["<UNK>"] = 2 # unknown
  31. word_index["<UNUSED>"] = 3
  32. # 翻转编码表
  33. reverse_word_index = dict([(value, key) for (key, value) in word_index.items()])
  34. def decode_review(text):
  35. return ' '.join([reverse_word_index.get(i, '?') for i in text])
  36. decode_review(x_train[8])
  37. #%%
  38. # x_train:[b, 80]
  39. # x_test: [b, 80]
  40. # 截断和填充句子,使得等长,此处长句子保留句子后面的部分,短句子在前面填充
  41. x_train = keras.preprocessing.sequence.pad_sequences(x_train, maxlen=max_review_len)
  42. x_test = keras.preprocessing.sequence.pad_sequences(x_test, maxlen=max_review_len)
  43. # 构建数据集,打散,批量,并丢掉最后一个不够batchsz的batch
  44. db_train = tf.data.Dataset.from_tensor_slices((x_train, y_train))
  45. db_train = db_train.shuffle(1000).batch(batchsz, drop_remainder=True)
  46. db_test = tf.data.Dataset.from_tensor_slices((x_test, y_test))
  47. db_test = db_test.batch(batchsz, drop_remainder=True)
  48. print('x_train shape:', x_train.shape, tf.reduce_max(y_train), tf.reduce_min(y_train))
  49. print('x_test shape:', x_test.shape)
  50. #%%
  51. class MyRNN(keras.Model):
  52. # Cell方式构建多层网络
  53. def __init__(self, units):
  54. super(MyRNN, self).__init__()
  55. # 词向量编码 [b, 80] => [b, 80, 100]
  56. self.embedding = layers.Embedding(total_words, embedding_len,
  57. input_length=max_review_len)
  58. # 构建RNN
  59. self.rnn = keras.Sequential([
  60. layers.GRU(units, dropout=0.5, return_sequences=True),
  61. layers.GRU(units, dropout=0.5)
  62. ])
  63. # 构建分类网络,用于将CELL的输出特征进行分类,2分类
  64. # [b, 80, 100] => [b, 64] => [b, 1]
  65. self.outlayer = Sequential([
  66. layers.Dense(32),
  67. layers.Dropout(rate=0.5),
  68. layers.ReLU(),
  69. layers.Dense(1)])
  70. def call(self, inputs, training=None):
  71. x = inputs # [b, 80]
  72. # embedding: [b, 80] => [b, 80, 100]
  73. x = self.embedding(x)
  74. # rnn cell compute,[b, 80, 100] => [b, 64]
  75. x = self.rnn(x)
  76. # 末层最后一个输出作为分类网络的输入: [b, 64] => [b, 1]
  77. x = self.outlayer(x,training)
  78. # p(y is pos|x)
  79. prob = tf.sigmoid(x)
  80. return prob
  81. def main():
  82. units = 32 # RNN状态向量长度f
  83. epochs = 50 # 训练epochs
  84. model = MyRNN(units)
  85. # 装配
  86. model.compile(optimizer = optimizers.Adam(0.001),
  87. loss = losses.BinaryCrossentropy(),
  88. metrics=['accuracy'])
  89. # 训练和验证
  90. model.fit(db_train, epochs=epochs, validation_data=db_test)
  91. # 测试
  92. model.evaluate(db_test)
  93. if __name__ == '__main__':
  94. main()