select_number.py 2.5 KB

12345678910111213141516171819202122232425262728293031323334353637383940414243444546474849505152535455565758596061626364656667
  1. import json
  2. import torch
  3. import torch.nn as nn
  4. import torch.nn.functional as F
  5. from torch.autograd import Variable
  6. import numpy as np
  7. from net_utils import run_lstm, col_name_encode
  8. class SelNumPredictor(nn.Module):
  9. def __init__(self, N_word, N_h, N_depth, use_ca):
  10. super(SelNumPredictor, self).__init__()
  11. self.N_h = N_h
  12. self.use_ca = use_ca
  13. self.sel_num_lstm = nn.LSTM(input_size=N_word, hidden_size=N_h/2,
  14. num_layers=N_depth, batch_first=True,
  15. dropout=0.3, bidirectional=True)
  16. self.sel_num_att = nn.Linear(N_h, 1)
  17. self.sel_num_col_att = nn.Linear(N_h, 1)
  18. self.sel_num_out = nn.Sequential(nn.Linear(N_h, N_h),
  19. nn.Tanh(), nn.Linear(N_h,4))
  20. self.softmax = nn.Softmax(dim=-1)
  21. self.sel_num_col2hid1 = nn.Linear(N_h, 2 * N_h)
  22. self.sel_num_col2hid2 = nn.Linear(N_h, 2 * N_h)
  23. if self.use_ca:
  24. print "Using column attention on select number predicting"
  25. def forward(self, x_emb_var, x_len, col_inp_var, col_name_len, col_len, col_num):
  26. B = len(x_len)
  27. max_x_len = max(x_len)
  28. # Predict the number of select part
  29. # First use column embeddings to calculate the initial hidden unit
  30. # Then run the LSTM and predict select number
  31. e_num_col, col_num = col_name_encode(col_inp_var, col_name_len,
  32. col_len, self.sel_num_lstm)
  33. num_col_att_val = self.sel_num_col_att(e_num_col).squeeze()
  34. for idx, num in enumerate(col_num):
  35. if num < max(col_num):
  36. num_col_att_val[idx, num:] = -1000000
  37. num_col_att = self.softmax(num_col_att_val)
  38. K_num_col = (e_num_col * num_col_att.unsqueeze(2)).sum(1)
  39. sel_num_h1 = self.sel_num_col2hid1(K_num_col).view(B, 4, self.N_h/2).transpose(0,1).contiguous()
  40. sel_num_h2 = self.sel_num_col2hid2(K_num_col).view(B, 4, self.N_h/2).transpose(0,1).contiguous()
  41. h_num_enc, _ = run_lstm(self.sel_num_lstm, x_emb_var, x_len,
  42. hidden=(sel_num_h1, sel_num_h2))
  43. num_att_val = self.sel_num_att(h_num_enc).squeeze()
  44. for idx, num in enumerate(x_len):
  45. if num < max_x_len:
  46. num_att_val[idx, num:] = -1000000
  47. num_att = self.softmax(num_att_val)
  48. K_sel_num = (h_num_enc * num_att.unsqueeze(2).expand_as(
  49. h_num_enc)).sum(1)
  50. sel_num_score = self.sel_num_out(K_sel_num)
  51. return sel_num_score