IF YOU WOULD LIKE TO GET AN ACCOUNT, please write an email to s dot adaszewski at gmail dot com. User accounts are meant only to report issues and/or generate pull requests. This is a purpose-specific Git hosting for ADARED projects. Thank you for your understanding!
Du kannst nicht mehr als 25 Themen auswählen Themen müssen entweder mit einem Buchstaben oder einer Ziffer beginnen. Sie können Bindestriche („-“) enthalten und bis zu 35 Zeichen lang sein.

78 Zeilen
2.9KB

  1. from .sampling import fixed_unigram_candidate_sampler
  2. import torch
  3. def train_val_test_split_edges(edges, ratios):
  4. train_ratio, val_ratio, test_ratio = ratios
  5. if train_ratio + val_ratio + test_ratio != 1.0:
  6. raise ValueError('Train, validation and test ratios must add up to 1')
  7. order = torch.randperm(len(edges))
  8. edges = edges[order, :]
  9. n = round(len(edges) * train_ratio)
  10. edges_train = edges[:n]
  11. n_1 = round(len(edges) * (train_ratio + val_ratio))
  12. edges_val = edges[n:n_1]
  13. edges_test = edges[n_1:]
  14. return edges_train, edges_val, edges_test
  15. def prepare_adj_mat(adj_mat, ratios):
  16. degrees = adj_mat.sum(0)
  17. edges_pos = torch.nonzero(adj_mat)
  18. neg_neighbors = fixed_unigram_candidate_sampler(edges_pos[:, 1],
  19. len(edges), degrees, 0.75)
  20. edges_neg = torch.cat((edges_pos[:, 0], neg_neighbors.view(-1, 1)), 1)
  21. edges_pos = (edges_pos_train, edges_pos_val, edges_pos_test) = \
  22. train_val_test_split_edges(edges_pos, ratios)
  23. edges_neg = (edges_neg_train, edges_neg_val, edges_neg_test) = \
  24. train_val_test_split_edges(edges_neg, ratios)
  25. return edges_pos, edges_neg
  26. class PreparedRelation(object):
  27. def __init__(self, node_type_row, node_type_column,
  28. adj_mat_train, adj_mat_train_trans,
  29. edges_pos, edges_neg, edges_pos_trans, edges_neg_trans):
  30. self.adj_mat_train = adj_mat_train
  31. self.adj_mat_train_trans = adj_mat_train_trans
  32. self.edges_pos = edges_pos
  33. self.edges_neg = edges_neg
  34. self.edges_pos_trans = edges_pos_trans
  35. self.edges_neg_trans = edges_neg_trans
  36. def prepare_relation(r, ratios):
  37. adj_mat = r.get_adjacency_matrix(r.node_type_row, r.node_type_column)
  38. edges_pos, edges_neg = prepare_adj_mat(adj_mat)
  39. # adj_mat_train = torch.zeros_like(adj_mat)
  40. # adj_mat_train[edges_pos[0][:, 0], edges_pos[0][:, 0]] = 1
  41. adj_mat_train = torch.sparse_coo_tensor(indices = edges_pos[0].transpose(0, 1),
  42. values=torch.ones(len(edges_pos[0]), dtype=adj_mat.dtype))
  43. if r.node_type_row != r.node_type_col:
  44. adj_mat_trans = r.get_adjacency_matrix(r.node_type_col, r.node_type_row)
  45. edges_pos_trans, edges_neg_trans = prepare_adj_mat(adj_mat_trans)
  46. adj_mat_train_trans = torch.sparse_coo_tensor(indices = edges_pos_trans[0].transpose(0, 1),
  47. values=torch.ones(len(edges_pos_trans[0]), dtype=adj_mat_trans.dtype))
  48. else:
  49. adj_mat_train_trans = adj_mat_trans = \
  50. edge_pos_trans = edge_neg_trans = None
  51. return PreparedRelation(r.node_type_row, r.node_type_column,
  52. adj_mat_train, adj_mat_trans_train,
  53. edges_pos, edges_neg, edges_pos_trans, edges_neg_trans)
  54. def prepare_training(data):
  55. for (node_type_row, node_type_column), rels in data.relation_types:
  56. for r in rels:
  57. prep_relation_edges()