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test_sequence_generator.py 9.1 KB

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  1. # Copyright (c) 2017-present, Facebook, Inc.
  2. # All rights reserved.
  3. #
  4. # This source code is licensed under the license found in the LICENSE file in
  5. # the root directory of this source tree. An additional grant of patent rights
  6. # can be found in the PATENTS file in the same directory.
  7. import argparse
  8. import unittest
  9. import torch
  10. from torch.autograd import Variable
  11. from fairseq.sequence_generator import SequenceGenerator
  12. import tests.utils as test_utils
  13. class TestSequenceGenerator(unittest.TestCase):
  14. def setUp(self):
  15. # construct dummy dictionary
  16. d = test_utils.dummy_dictionary(vocab_size=2)
  17. self.assertEqual(d.pad(), 1)
  18. self.assertEqual(d.eos(), 2)
  19. self.assertEqual(d.unk(), 3)
  20. self.eos = d.eos()
  21. self.w1 = 4
  22. self.w2 = 5
  23. # construct source data
  24. self.src_tokens = Variable(torch.LongTensor([
  25. [self.w1, self.w2, self.eos],
  26. [self.w1, self.w2, self.eos],
  27. ]))
  28. self.src_lengths = Variable(torch.LongTensor([2, 2]))
  29. args = argparse.Namespace()
  30. unk = 0.
  31. args.beam_probs = [
  32. # step 0:
  33. torch.FloatTensor([
  34. # eos w1 w2
  35. # sentence 1:
  36. [0.0, unk, 0.9, 0.1], # beam 1
  37. [0.0, unk, 0.9, 0.1], # beam 2
  38. # sentence 2:
  39. [0.0, unk, 0.7, 0.3],
  40. [0.0, unk, 0.7, 0.3],
  41. ]),
  42. # step 1:
  43. torch.FloatTensor([
  44. # eos w1 w2 prefix
  45. # sentence 1:
  46. [1.0, unk, 0.0, 0.0], # w1: 0.9 (emit: w1 <eos>: 0.9*1.0)
  47. [0.0, unk, 0.9, 0.1], # w2: 0.1
  48. # sentence 2:
  49. [0.25, unk, 0.35, 0.4], # w1: 0.7 (don't emit: w1 <eos>: 0.7*0.25)
  50. [0.00, unk, 0.10, 0.9], # w2: 0.3
  51. ]),
  52. # step 2:
  53. torch.FloatTensor([
  54. # eos w1 w2 prefix
  55. # sentence 1:
  56. [0.0, unk, 0.1, 0.9], # w2 w1: 0.1*0.9
  57. [0.6, unk, 0.2, 0.2], # w2 w2: 0.1*0.1 (emit: w2 w2 <eos>: 0.1*0.1*0.6)
  58. # sentence 2:
  59. [0.60, unk, 0.4, 0.00], # w1 w2: 0.7*0.4 (emit: w1 w2 <eos>: 0.7*0.4*0.6)
  60. [0.01, unk, 0.0, 0.99], # w2 w2: 0.3*0.9
  61. ]),
  62. # step 3:
  63. torch.FloatTensor([
  64. # eos w1 w2 prefix
  65. # sentence 1:
  66. [1.0, unk, 0.0, 0.0], # w2 w1 w2: 0.1*0.9*0.9 (emit: w2 w1 w2 <eos>: 0.1*0.9*0.9*1.0)
  67. [1.0, unk, 0.0, 0.0], # w2 w1 w1: 0.1*0.9*0.1 (emit: w2 w1 w1 <eos>: 0.1*0.9*0.1*1.0)
  68. # sentence 2:
  69. [0.1, unk, 0.5, 0.4], # w2 w2 w2: 0.3*0.9*0.99 (emit: w2 w2 w2 <eos>: 0.3*0.9*0.99*0.1)
  70. [1.0, unk, 0.0, 0.0], # w1 w2 w1: 0.7*0.4*0.4 (emit: w1 w2 w1 <eos>: 0.7*0.4*0.4*1.0)
  71. ]),
  72. ]
  73. self.model = test_utils.TestModel.build_model(args, d, d)
  74. def test_with_normalization(self):
  75. generator = SequenceGenerator([self.model])
  76. hypos = generator.generate(self.src_tokens, self.src_lengths, beam_size=2)
  77. eos, w1, w2 = self.eos, self.w1, self.w2
  78. # sentence 1, beam 1
  79. self.assertHypoTokens(hypos[0][0], [w1, eos])
  80. self.assertHypoScore(hypos[0][0], [0.9, 1.0])
  81. # sentence 1, beam 2
  82. self.assertHypoTokens(hypos[0][1], [w2, w1, w2, eos])
  83. self.assertHypoScore(hypos[0][1], [0.1, 0.9, 0.9, 1.0])
  84. # sentence 2, beam 1
  85. self.assertHypoTokens(hypos[1][0], [w1, w2, w1, eos])
  86. self.assertHypoScore(hypos[1][0], [0.7, 0.4, 0.4, 1.0])
  87. # sentence 2, beam 2
  88. self.assertHypoTokens(hypos[1][1], [w1, w2, eos])
  89. self.assertHypoScore(hypos[1][1], [0.7, 0.4, 0.6])
  90. def test_without_normalization(self):
  91. # Sentence 1: unchanged from the normalized case
  92. # Sentence 2: beams swap order
  93. generator = SequenceGenerator([self.model], normalize_scores=False)
  94. hypos = generator.generate(self.src_tokens, self.src_lengths, beam_size=2)
  95. eos, w1, w2 = self.eos, self.w1, self.w2
  96. # sentence 1, beam 1
  97. self.assertHypoTokens(hypos[0][0], [w1, eos])
  98. self.assertHypoScore(hypos[0][0], [0.9, 1.0], normalized=False)
  99. # sentence 1, beam 2
  100. self.assertHypoTokens(hypos[0][1], [w2, w1, w2, eos])
  101. self.assertHypoScore(hypos[0][1], [0.1, 0.9, 0.9, 1.0], normalized=False)
  102. # sentence 2, beam 1
  103. self.assertHypoTokens(hypos[1][0], [w1, w2, eos])
  104. self.assertHypoScore(hypos[1][0], [0.7, 0.4, 0.6], normalized=False)
  105. # sentence 2, beam 2
  106. self.assertHypoTokens(hypos[1][1], [w1, w2, w1, eos])
  107. self.assertHypoScore(hypos[1][1], [0.7, 0.4, 0.4, 1.0], normalized=False)
  108. def test_with_lenpen_favoring_short_hypos(self):
  109. lenpen = 0.6
  110. generator = SequenceGenerator([self.model], len_penalty=lenpen)
  111. hypos = generator.generate(self.src_tokens, self.src_lengths, beam_size=2)
  112. eos, w1, w2 = self.eos, self.w1, self.w2
  113. # sentence 1, beam 1
  114. self.assertHypoTokens(hypos[0][0], [w1, eos])
  115. self.assertHypoScore(hypos[0][0], [0.9, 1.0], lenpen=lenpen)
  116. # sentence 1, beam 2
  117. self.assertHypoTokens(hypos[0][1], [w2, w1, w2, eos])
  118. self.assertHypoScore(hypos[0][1], [0.1, 0.9, 0.9, 1.0], lenpen=lenpen)
  119. # sentence 2, beam 1
  120. self.assertHypoTokens(hypos[1][0], [w1, w2, eos])
  121. self.assertHypoScore(hypos[1][0], [0.7, 0.4, 0.6], lenpen=lenpen)
  122. # sentence 2, beam 2
  123. self.assertHypoTokens(hypos[1][1], [w1, w2, w1, eos])
  124. self.assertHypoScore(hypos[1][1], [0.7, 0.4, 0.4, 1.0], lenpen=lenpen)
  125. def test_with_lenpen_favoring_long_hypos(self):
  126. lenpen = 5.0
  127. generator = SequenceGenerator([self.model], len_penalty=lenpen)
  128. hypos = generator.generate(self.src_tokens, self.src_lengths, beam_size=2)
  129. eos, w1, w2 = self.eos, self.w1, self.w2
  130. # sentence 1, beam 1
  131. self.assertHypoTokens(hypos[0][0], [w2, w1, w2, eos])
  132. self.assertHypoScore(hypos[0][0], [0.1, 0.9, 0.9, 1.0], lenpen=lenpen)
  133. # sentence 1, beam 2
  134. self.assertHypoTokens(hypos[0][1], [w1, eos])
  135. self.assertHypoScore(hypos[0][1], [0.9, 1.0], lenpen=lenpen)
  136. # sentence 2, beam 1
  137. self.assertHypoTokens(hypos[1][0], [w1, w2, w1, eos])
  138. self.assertHypoScore(hypos[1][0], [0.7, 0.4, 0.4, 1.0], lenpen=lenpen)
  139. # sentence 2, beam 2
  140. self.assertHypoTokens(hypos[1][1], [w1, w2, eos])
  141. self.assertHypoScore(hypos[1][1], [0.7, 0.4, 0.6], lenpen=lenpen)
  142. def test_maxlen(self):
  143. generator = SequenceGenerator([self.model], maxlen=2)
  144. hypos = generator.generate(self.src_tokens, self.src_lengths, beam_size=2)
  145. eos, w1, w2 = self.eos, self.w1, self.w2
  146. # sentence 1, beam 1
  147. self.assertHypoTokens(hypos[0][0], [w1, eos])
  148. self.assertHypoScore(hypos[0][0], [0.9, 1.0])
  149. # sentence 1, beam 2
  150. self.assertHypoTokens(hypos[0][1], [w2, w2, eos])
  151. self.assertHypoScore(hypos[0][1], [0.1, 0.1, 0.6])
  152. # sentence 2, beam 1
  153. self.assertHypoTokens(hypos[1][0], [w1, w2, eos])
  154. self.assertHypoScore(hypos[1][0], [0.7, 0.4, 0.6])
  155. # sentence 2, beam 2
  156. self.assertHypoTokens(hypos[1][1], [w2, w2, eos])
  157. self.assertHypoScore(hypos[1][1], [0.3, 0.9, 0.01])
  158. def test_no_stop_early(self):
  159. generator = SequenceGenerator([self.model], stop_early=False)
  160. hypos = generator.generate(self.src_tokens, self.src_lengths, beam_size=2)
  161. eos, w1, w2 = self.eos, self.w1, self.w2
  162. # sentence 1, beam 1
  163. self.assertHypoTokens(hypos[0][0], [w1, eos])
  164. self.assertHypoScore(hypos[0][0], [0.9, 1.0])
  165. # sentence 1, beam 2
  166. self.assertHypoTokens(hypos[0][1], [w2, w1, w2, eos])
  167. self.assertHypoScore(hypos[0][1], [0.1, 0.9, 0.9, 1.0])
  168. # sentence 2, beam 1
  169. self.assertHypoTokens(hypos[1][0], [w2, w2, w2, w2, eos])
  170. self.assertHypoScore(hypos[1][0], [0.3, 0.9, 0.99, 0.4, 1.0])
  171. # sentence 2, beam 2
  172. self.assertHypoTokens(hypos[1][1], [w1, w2, w1, eos])
  173. self.assertHypoScore(hypos[1][1], [0.7, 0.4, 0.4, 1.0])
  174. def assertHypoTokens(self, hypo, tokens):
  175. self.assertTensorEqual(hypo['tokens'], torch.LongTensor(tokens))
  176. def assertHypoScore(self, hypo, pos_probs, normalized=True, lenpen=1.):
  177. pos_scores = torch.FloatTensor(pos_probs).log()
  178. self.assertAlmostEqual(hypo['positional_scores'], pos_scores)
  179. self.assertEqual(pos_scores.numel(), hypo['tokens'].numel())
  180. score = pos_scores.sum()
  181. if normalized:
  182. score /= pos_scores.numel()**lenpen
  183. self.assertLess(abs(score - hypo['score']), 1e-6)
  184. def assertAlmostEqual(self, t1, t2):
  185. self.assertEqual(t1.size(), t2.size(), "size mismatch")
  186. self.assertLess((t1 - t2).abs().max(), 1e-4)
  187. def assertTensorEqual(self, t1, t2):
  188. self.assertEqual(t1.size(), t2.size(), "size mismatch")
  189. self.assertEqual(t1.ne(t2).long().sum(), 0)
  190. if __name__ == '__main__':
  191. unittest.main()
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