Blame view

build/lib.linux-x86_64-2.7/complexnn/norm.py 11 KB
f2d3bd141   Parcollet Titouan   Initial commit wi...
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138
139
140
141
142
143
144
145
146
147
148
149
150
151
152
153
154
155
156
157
158
159
160
161
162
163
164
165
166
167
168
169
170
171
172
173
174
175
176
177
178
179
180
181
182
183
184
185
186
187
188
189
190
191
192
193
194
195
196
197
198
199
200
201
202
203
204
205
206
207
208
209
210
211
212
213
214
215
216
217
218
219
220
221
222
223
224
225
226
227
228
229
230
231
232
233
234
235
236
237
238
239
240
241
242
243
244
245
246
247
248
249
250
251
252
253
254
255
256
257
258
259
260
261
262
263
264
265
266
267
268
269
270
271
  #!/usr/bin/env python
  # -*- coding: utf-8 -*-
  
  #
  # Authors: Chiheb Trabelsi
  
  #
  # Implementation of Layer Normalization and Complex Layer Normalization
  #
  
  import numpy as np
  from keras.layers import Layer, InputSpec
  from keras import initializers, regularizers, constraints
  import keras.backend as K
  from .bn import ComplexBN as complex_normalization
  from .bn import sqrt_init 
  
  def layernorm(x, axis, epsilon, gamma, beta):
      # assert self.built, 'Layer must be built before being called'
      input_shape = K.shape(x)
      reduction_axes = list(range(K.ndim(x)))
      del reduction_axes[axis]
      del reduction_axes[0]
      broadcast_shape = [1] * K.ndim(x)
      broadcast_shape[axis] = input_shape[axis]
      broadcast_shape[0] = K.shape(x)[0]
  
      # Perform normalization: centering and reduction
  
      mean = K.mean(x, axis=reduction_axes)
      broadcast_mean = K.reshape(mean, broadcast_shape)
      x_centred = x - broadcast_mean
      variance  = K.mean(x_centred ** 2, axis=reduction_axes) + epsilon
      broadcast_variance = K.reshape(variance, broadcast_shape)
  
      x_normed = x_centred / K.sqrt(broadcast_variance)
  
      # Perform scaling and shifting
  
      broadcast_shape_params = [1] * K.ndim(x)
      broadcast_shape_params[axis] = K.shape(x)[axis]
      broadcast_gamma  = K.reshape(gamma, broadcast_shape_params)
      broadcast_beta  = K.reshape(beta,  broadcast_shape_params)
  
      x_LN = broadcast_gamma * x_normed + broadcast_beta
  
      return x_LN
  
  class LayerNormalization(Layer):
      
      def __init__(self,
                   epsilon=1e-4,
                   axis=-1,
                   beta_init='zeros',
                   gamma_init='ones',
                   gamma_regularizer=None,
                   beta_regularizer=None,
                   **kwargs):
  
          self.supports_masking = True
          self.beta_init = initializers.get(beta_init)
          self.gamma_init = initializers.get(gamma_init)
          self.epsilon = epsilon
          self.axis = axis
          self.gamma_regularizer = regularizers.get(gamma_regularizer)
          self.beta_regularizer = regularizers.get(beta_regularizer)
  
          super(LayerNormalization, self).__init__(**kwargs)
  
      def build(self, input_shape):
          self.input_spec = InputSpec(ndim=len(input_shape),
                                      axes={self.axis: input_shape[self.axis]})
          shape = (input_shape[self.axis],)
  
          self.gamma = self.add_weight(shape,
                                       initializer=self.gamma_init,
                                       regularizer=self.gamma_regularizer,
                                       name='{}_gamma'.format(self.name))
          self.beta = self.add_weight(shape,
                                      initializer=self.beta_init,
                                      regularizer=self.beta_regularizer,
                                      name='{}_beta'.format(self.name))
  
          self.built = True
  
      def call(self, x, mask=None):
          assert self.built, 'Layer must be built before being called'
          return layernorm(x, self.axis, self.epsilon, self.gamma, self.beta)
  
      def get_config(self):
          config = {'epsilon':           self.epsilon,
                    'axis':              self.axis,
                    'gamma_regularizer': self.gamma_regularizer.get_config() if self.gamma_regularizer else None,
                    'beta_regularizer':  self.beta_regularizer.get_config()  if self.beta_regularizer  else None
                    }
          base_config = super(LayerNormalization, self).get_config()
          return dict(list(base_config.items()) + list(config.items()))
  
  
  class ComplexLayerNorm(Layer):
      def __init__(self,
                   epsilon=1e-4,
                   axis=-1,
                   center=True,
                   scale=True,
                   beta_initializer='zeros',
                   gamma_diag_initializer=sqrt_init,
                   gamma_off_initializer='zeros',
                   beta_regularizer=None,
                   gamma_diag_regularizer=None,
                   gamma_off_regularizer=None,
                   beta_constraint=None,
                   gamma_diag_constraint=None,
                   gamma_off_constraint=None,
                   **kwargs):
  
          self.supports_masking = True
          self.epsilon = epsilon
          self.axis = axis
          self.center = center
          self.scale = scale
          self.beta_initializer = initializers.get(beta_initializer)
          self.gamma_diag_initializer = initializers.get(gamma_diag_initializer)
          self.gamma_off_initializer = initializers.get(gamma_off_initializer)
          self.beta_regularizer = regularizers.get(beta_regularizer)
          self.gamma_diag_regularizer = regularizers.get(gamma_diag_regularizer)
          self.gamma_off_regularizer = regularizers.get(gamma_off_regularizer)
          self.beta_constraint = constraints.get(beta_constraint)
          self.gamma_diag_constraint = constraints.get(gamma_diag_constraint)
          self.gamma_off_constraint = constraints.get(gamma_off_constraint)
          super(ComplexLayerNorm, self).__init__(**kwargs)
  
      def build(self, input_shape):
  
          ndim = len(input_shape)
          dim = input_shape[self.axis]
          if dim is None:
              raise ValueError('Axis ' + str(self.axis) + ' of '
                               'input tensor should have a defined dimension '
                               'but the layer received an input with shape ' +
                               str(input_shape) + '.')
          self.input_spec = InputSpec(ndim=len(input_shape),
                                      axes={self.axis: dim})
  
          gamma_shape = (input_shape[self.axis] // 2,)
          if self.scale:
              self.gamma_rr = self.add_weight(
                  shape=gamma_shape,
                  name='gamma_rr',
                  initializer=self.gamma_diag_initializer,
                  regularizer=self.gamma_diag_regularizer,
                  constraint=self.gamma_diag_constraint
              )
              self.gamma_ii = self.add_weight(
                  shape=gamma_shape,
                  name='gamma_ii',
                  initializer=self.gamma_diag_initializer,
                  regularizer=self.gamma_diag_regularizer,
                  constraint=self.gamma_diag_constraint
              )
              self.gamma_ri = self.add_weight(
                  shape=gamma_shape,
                  name='gamma_ri',
                  initializer=self.gamma_off_initializer,
                  regularizer=self.gamma_off_regularizer,
                  constraint=self.gamma_off_constraint
              )
          else:
              self.gamma_rr = None
              self.gamma_ii = None
              self.gamma_ri = None
  
          if self.center:
              self.beta = self.add_weight(shape=(input_shape[self.axis],),
                                          name='beta',
                                          initializer=self.beta_initializer,
                                          regularizer=self.beta_regularizer,
                                          constraint=self.beta_constraint)
          else:
              self.beta = None
  
          self.built = True
  
      def call(self, inputs):
          input_shape = K.shape(inputs)
          ndim = K.ndim(inputs)
          reduction_axes = list(range(ndim))
          del reduction_axes[self.axis]
          del reduction_axes[0]
          input_dim = input_shape[self.axis] // 2
          mu = K.mean(inputs, axis=reduction_axes)
          broadcast_mu_shape = [1] * ndim
          broadcast_mu_shape[self.axis] = input_shape[self.axis]
          broadcast_mu_shape[0] = K.shape(inputs)[0]
          broadcast_mu = K.reshape(mu, broadcast_mu_shape)
          if self.center:
              input_centred = inputs - broadcast_mu
          else:
              input_centred = inputs
          centred_squared = input_centred ** 2
          if (self.axis == 1 and ndim != 3) or ndim == 2:
              centred_squared_real = centred_squared[:, :input_dim]
              centred_squared_imag = centred_squared[:, input_dim:]
              centred_real = input_centred[:, :input_dim]
              centred_imag = input_centred[:, input_dim:]
          elif ndim == 3:
              centred_squared_real = centred_squared[:, :, :input_dim]
              centred_squared_imag = centred_squared[:, :, input_dim:]
              centred_real = input_centred[:, :, :input_dim]
              centred_imag = input_centred[:, :, input_dim:]
          elif self.axis == -1 and ndim == 4:
              centred_squared_real = centred_squared[:, :, :, :input_dim]
              centred_squared_imag = centred_squared[:, :, :, input_dim:]
              centred_real = input_centred[:, :, :, :input_dim]
              centred_imag = input_centred[:, :, :, input_dim:]
          elif self.axis == -1 and ndim == 5:
              centred_squared_real = centred_squared[:, :, :, :, :input_dim]
              centred_squared_imag = centred_squared[:, :, :, :, input_dim:]
              centred_real = input_centred[:, :, :, :, :input_dim]
              centred_imag = input_centred[:, :, :, :, input_dim:]
          else:
              raise ValueError(
                  'Incorrect Layernorm combination of axis and dimensions. axis should be either 1 or -1. '
                  'axis: ' + str(self.axis) + '; ndim: ' + str(ndim) + '.'
              )
          if self.scale:
              Vrr = K.mean(
                  centred_squared_real,
                  axis=reduction_axes
              ) + self.epsilon
              Vii = K.mean(
                  centred_squared_imag,
                  axis=reduction_axes
              ) + self.epsilon
              # Vri contains the real and imaginary covariance for each feature map.
              Vri = K.mean(
                  centred_real * centred_imag,
                  axis=reduction_axes,
              )
          elif self.center:
              Vrr = None
              Vii = None
              Vri = None
          else:
              raise ValueError('Error. Both scale and center in batchnorm are set to False.')
  
          return complex_normalization(
              input_centred, Vrr, Vii, Vri,
              self.beta, self.gamma_rr, self.gamma_ri,
              self.gamma_ii, self.scale, self.center,
              layernorm=True, axis=self.axis
          )
  
      def get_config(self):
          config = {
              'axis': self.axis,
              'epsilon': self.epsilon,
              'center': self.center,
              'scale': self.scale,
              'beta_initializer': initializers.serialize(self.beta_initializer),
              'gamma_diag_initializer': initializers.serialize(self.gamma_diag_initializer),
              'gamma_off_initializer': initializers.serialize(self.gamma_off_initializer),
              'beta_regularizer': regularizers.serialize(self.beta_regularizer),
              'gamma_diag_regularizer': regularizers.serialize(self.gamma_diag_regularizer),
              'gamma_off_regularizer': regularizers.serialize(self.gamma_off_regularizer),
              'beta_constraint': constraints.serialize(self.beta_constraint),
              'gamma_diag_constraint': constraints.serialize(self.gamma_diag_constraint),
              'gamma_off_constraint': constraints.serialize(self.gamma_off_constraint),
          }
          base_config = super(ComplexLayerNorm, self).get_config()
          return dict(list(base_config.items()) + list(config.items()))