mix_train_1.py 6.1 KB

123456789101112131415161718192021222324252627282930313233343536373839404142434445464748495051525354555657585960616263646566676869707172737475767778798081828384858687888990919293949596979899100101102103104105106107108109110111112113114115116117118119120121122123124125126127128129130131132133134135136137138139140141142143144145146147148149150151152153154155156157158159160161162163164165166167168169170171172173174175176177178179180181182183184185
  1. import keras
  2. # -*- encoding:utf-8 -*-
  3. import numpy as np
  4. from keras.models import Sequential
  5. # 优化方法选用Adam(其实可选项有很多,如SGD)
  6. from keras.optimizers import Adam
  7. import random
  8. from keras.models import load_model
  9. from imblearn.over_sampling import RandomOverSampler
  10. from keras.utils import np_utils
  11. # 用于模型初始化,Conv2D模型初始化、Activation激活函数,MaxPooling2D是池化层
  12. # Flatten作用是将多位输入进行一维化
  13. # Dense是全连接层
  14. from keras.layers import Conv2D, Activation, MaxPool2D, Flatten, Dense,Dropout,Input,MaxPooling2D,BatchNormalization,concatenate
  15. from keras import regularizers
  16. from keras.models import Model
  17. from keras.callbacks import EarlyStopping
  18. early_stopping = EarlyStopping(monitor='accuracy', patience=5, verbose=2)
  19. epochs= 108
  20. size = 450000 #18W 60W
  21. file_path = 'D:\\data\\quantization\\stock175_18d_train2.log'
  22. model_path = '175_18d_mix_6D_ma5_s_seq_2.h5'
  23. def read_data(path, path1="D:\\data\\quantization\\stock175_18d_train1.log"):
  24. lines = []
  25. with open(path) as f:
  26. for x in range(size): #610000
  27. line = eval(f.readline().strip())
  28. lines.append(line)
  29. with open(path1) as f:
  30. for x in range(50000):
  31. line = eval(f.readline().strip())
  32. lines.append(line)
  33. random.shuffle(lines)
  34. print('读取数据完毕')
  35. d=int(0.85*len(lines))
  36. length = len(lines[0])
  37. train_x=[s[:length - 2] for s in lines[0:d]]
  38. train_y=[s[-1] for s in lines[0:d]]
  39. test_x=[s[:length - 2] for s in lines[d:]]
  40. test_y=[s[-1] for s in lines[d:]]
  41. print('转换数据完毕')
  42. ros = RandomOverSampler(random_state=0)
  43. X_resampled, y_resampled = ros.fit_sample(np.array(train_x), np.array(train_y))
  44. print('数据重采样完毕')
  45. return X_resampled,y_resampled,np.array(test_x),np.array(test_y)
  46. train_x,train_y,test_x,test_y=read_data(file_path)
  47. train_x_a = train_x[:,:18*19]
  48. train_x_a = train_x_a.reshape(train_x.shape[0], 18, 19, 1)
  49. # train_x_b = train_x[:, 9*26:18*26]
  50. # train_x_b = train_x_b.reshape(train_x.shape[0], 9, 26, 1)
  51. train_x_c = train_x[:,18*19:]
  52. def create_mlp(dim, regress=False):
  53. # define our MLP network
  54. model = Sequential()
  55. model.add(Dense(96, input_dim=dim, activation="relu"))
  56. model.add(Dense(96, activation="relu"))
  57. # check to see if the regression node should be added
  58. if regress:
  59. model.add(Dense(1, activation="linear"))
  60. # return our model
  61. return model
  62. def create_cnn(width, height, depth, size=48, kernel_size=(5, 6), regress=False, output=24):
  63. # initialize the input shape and channel dimension, assuming
  64. # TensorFlow/channels-last ordering
  65. inputShape = (width, height, 1)
  66. chanDim = -1
  67. # define the model input
  68. inputs = Input(shape=inputShape)
  69. # x = inputs
  70. # CONV => RELU => BN => POOL
  71. x = Conv2D(size, kernel_size, strides=2, padding="same")(inputs)
  72. x = Activation("relu")(x)
  73. x = BatchNormalization(axis=chanDim)(x)
  74. # y = Conv2D(24, (2, 8), strides=2, padding="same")(inputs)
  75. # y = Activation("relu")(y)
  76. # y = BatchNormalization(axis=chanDim)(y)
  77. # flatten the volume, then FC => RELU => BN => DROPOUT
  78. x = Flatten()(x)
  79. x = Dense(output)(x)
  80. x = Activation("relu")(x)
  81. x = BatchNormalization(axis=chanDim)(x)
  82. x = Dropout(0.2)(x)
  83. # apply another FC layer, this one to match the number of nodes
  84. # coming out of the MLP
  85. x = Dense(output)(x)
  86. x = Activation("relu")(x)
  87. # check to see if the regression node should be added
  88. if regress:
  89. x = Dense(1, activation="linear")(x)
  90. # construct the CNN
  91. model = Model(inputs, x)
  92. # return the CNN
  93. return model
  94. # create the MLP and CNN models
  95. mlp = create_mlp(train_x_c.shape[1], regress=False)
  96. # cnn_0 = create_cnn(18, 21, 1, kernel_size=(3, 3), size=64, regress=False, output=128) # 31 97 46
  97. # cnn_0 = create_cnn(18, 21, 1, kernel_size=(6, 6), size=64, regress=False, output=128) # 29 98 47
  98. # cnn_0 = create_cnn(18, 21, 1, kernel_size=(9, 9), size=64, regress=False, output=128) # 28 97 53
  99. cnn_0 = create_cnn(18, 19, 1, kernel_size=(3, 19), size=96, regress=False, output=128) #A 28 98 40 #B 38 97 51 #A 24 98 41 #b 33 97 48 #B
  100. # cnn_1 = create_cnn(9, 26, 1, kernel_size=(2, 14), size=36, regress=False, output=64)
  101. # create the input to our final set of layers as the *output* of both
  102. # the MLP and CNN
  103. combinedInput = concatenate([mlp.output, cnn_0.output])
  104. # our final FC layer head will have two dense layers, the final one
  105. # being our regression head
  106. x = Dense(1024, activation="relu", kernel_regularizer=regularizers.l1(0.003))(combinedInput)
  107. x = Dropout(0.2)(x)
  108. x = Dense(1024, activation="relu")(x)
  109. x = Dense(1024, activation="relu")(x)
  110. # 在建设一层
  111. x = Dense(5, activation="softmax")(x)
  112. # our final model will accept categorical/numerical data on the MLP
  113. # input and images on the CNN input, outputting a single value (the
  114. # predicted price of the house)
  115. model = Model(inputs=[mlp.input, cnn_0.input], outputs=x)
  116. print("Starting training ")
  117. # h = model.fit(train_x, train_y, batch_size=4096*2, epochs=500, shuffle=True)
  118. # compile the model using mean absolute percentage error as our loss,
  119. # implying that we seek to minimize the absolute percentage difference
  120. # between our price *predictions* and the *actual prices*
  121. opt = Adam(lr=1e-3, decay=1e-3 / 200)
  122. model.compile(loss="categorical_crossentropy", optimizer=opt, metrics=['accuracy'])
  123. # train the model
  124. print("[INFO] training model...")
  125. model.fit(
  126. [train_x_c, train_x_a], train_y,
  127. # validation_data=([testAttrX, testImagesX], testY),
  128. # epochs=int(3*train_x_a.shape[0]/1300),
  129. epochs=epochs,
  130. batch_size=2048, shuffle=True,
  131. callbacks=[early_stopping]
  132. )
  133. model.save(model_path)
  134. test_x_a = test_x[:,:18*19]
  135. test_x_a = test_x_a.reshape(test_x.shape[0], 18, 19, 1)
  136. # test_x_b = test_x[:, 9*26:9*26+9*26]
  137. # test_x_b = test_x_b.reshape(test_x.shape[0], 9, 26, 1)
  138. test_x_c = test_x[:,18*19:]
  139. # make predictions on the testing data
  140. print("[INFO] predicting house prices...")
  141. score = model.evaluate([test_x_c, test_x_a], test_y)
  142. print(score)
  143. print('Test score:', score[0])
  144. print('Test accuracy:', score[1])