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  1. #
  2. # Copyright (C) Stanislaw Adaszewski, 2020
  3. # License: GPLv3
  4. #
  5. import torch
  6. from .data import Data
  7. from .trainprep import PreparedData, \
  8. TrainValTest
  9. from typing import Type, \
  10. List, \
  11. Callable, \
  12. Union, \
  13. Dict, \
  14. Tuple
  15. from .decode import DEDICOMDecoder
  16. class DecodeLayer(torch.nn.Module):
  17. def __init__(self,
  18. input_dim: List[int],
  19. data: Union[Data, PreparedData],
  20. keep_prob: float = 1.,
  21. decoder_class: Union[Type, Dict[Tuple[int, int], Type]] = DEDICOMDecoder,
  22. activation: Callable[[torch.Tensor], torch.Tensor] = torch.sigmoid,
  23. **kwargs) -> None:
  24. super().__init__(**kwargs)
  25. assert all([ a == input_dim[0] \
  26. for a in input_dim ])
  27. self.input_dim = input_dim
  28. self.output_dim = 1
  29. self.data = data
  30. self.keep_prob = keep_prob
  31. self.decoder_class = decoder_class
  32. self.activation = activation
  33. self.decoders = None
  34. self.build()
  35. def build(self) -> None:
  36. self.decoders = {}
  37. for (node_type_row, node_type_column), rels in self.data.relation_types.items():
  38. if len(rels) == 0:
  39. continue
  40. if isinstance(self.decoder_class, dict):
  41. if (node_type_row, node_type_column) in self.decoder_class:
  42. decoder_class = self.decoder_class[node_type_row, node_type_column]
  43. elif (node_type_column, node_type_row) in self.decoder_class:
  44. decoder_class = self.decoder_class[node_type_column, node_type_row]
  45. else:
  46. raise KeyError('Decoder not specified for edge type: %s -- %s' % (
  47. self.data.node_types[node_type_row].name,
  48. self.data.node_types[node_type_column].name))
  49. else:
  50. decoder_class = self.decoder_class
  51. self.decoders[node_type_row, node_type_column] = \
  52. decoder_class(self.input_dim[node_type_row],
  53. num_relation_types = len(rels),
  54. keep_prob = self.keep_prob,
  55. activation = self.activation)
  56. def forward(self, last_layer_repr: List[torch.Tensor]) -> Dict[Tuple[int, int], List[torch.Tensor]]:
  57. res = {}
  58. for (node_type_row, node_type_column), dec in self.decoders.items():
  59. inputs_row = last_layer_repr[node_type_row]
  60. inputs_column = last_layer_repr[node_type_column]
  61. pred_adj_matrices = [ dec(inputs_row, inputs_column, k) for k in range(dec.num_relation_types) ]
  62. res[node_type_row, node_type_column] = pred_adj_matrices
  63. return res