Sequential Recommendation for cold-start users with meta transitional learning
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utils.py 4.1KB

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  1. import sys
  2. import copy
  3. import torch
  4. import random
  5. import numpy as np
  6. from collections import defaultdict, Counter
  7. from multiprocessing import Process, Queue
  8. # sampler for batch generation
  9. def random_neq(l, r, s):
  10. t = np.random.randint(l, r)
  11. while t in s:
  12. t = np.random.randint(l, r)
  13. return t
  14. def trans_to_cuda(variable):
  15. if torch.cuda.is_available():
  16. return variable.cuda()
  17. else:
  18. return variable
  19. def trans_to_cpu(variable):
  20. if torch.cuda.is_available():
  21. return variable.cpu()
  22. else:
  23. return variable
  24. # train/val/test data generation
  25. def data_load(fname, num_sample):
  26. usernum = 0
  27. itemnum = 0
  28. user_train = defaultdict(list)
  29. # assume user/item index starting from 1
  30. f = open('data/%s/%s_train.csv' % (fname, fname), 'r')
  31. for line in f:
  32. u, i, t = line.rstrip().split('\t')
  33. u = int(u)
  34. i = int(i)
  35. usernum = max(u, usernum)
  36. itemnum = max(i, itemnum)
  37. user_train[u].append(i)
  38. f.close()
  39. # read in new users for testing
  40. user_input_test = {}
  41. user_input_valid = {}
  42. user_valid = {}
  43. user_test = {}
  44. User_test_new = defaultdict(list)
  45. f = open('data/%s/%s_test_new_user.csv' % (fname, fname), 'r')
  46. for line in f:
  47. u, i, t = line.rstrip().split('\t')
  48. u = int(u)
  49. i = int(i)
  50. User_test_new[u].append(i)
  51. f.close()
  52. for user in User_test_new:
  53. if len(User_test_new[user]) > num_sample:
  54. if random.random()<0.3:
  55. user_input_valid[user] = User_test_new[user][:num_sample]
  56. user_valid[user] = []
  57. user_valid[user].append(User_test_new[user][num_sample])
  58. else:
  59. user_input_test[user] = User_test_new[user][:num_sample]
  60. user_test[user] = []
  61. user_test[user].append(User_test_new[user][num_sample])
  62. return [user_train, usernum, itemnum, user_input_test, user_test, user_input_valid, user_valid]
  63. class DataLoader(object):
  64. def __init__(self, user_train, user_test, itemnum, parameter):
  65. self.curr_rel_idx = 0
  66. self.bs = parameter['batch_size']
  67. self.maxlen = parameter['K']
  68. self.valid_user = []
  69. for u in user_train:
  70. if len(user_train[u]) < self.maxlen or len(user_test[u]) < 1: continue
  71. self.valid_user.append(u)
  72. self.num_tris = len(self.valid_user)
  73. self.train = user_train
  74. self.test = user_test
  75. self.itemnum = itemnum
  76. def next_one_on_eval(self):
  77. if self.curr_tri_idx == self.num_tris:
  78. return "EOT", "EOT"
  79. u = self.valid_user[self.curr_tri_idx]
  80. self.curr_tri_idx += 1
  81. seq = np.zeros([self.maxlen], dtype=np.int32)
  82. pos = np.zeros([self.maxlen - 1], dtype=np.int32)
  83. neg = np.zeros([self.maxlen - 1], dtype=np.int32)
  84. idx = self.maxlen - 1
  85. ts = set(self.train[u])
  86. for i in reversed(self.train[u]):
  87. seq[idx] = i
  88. if idx > 0:
  89. pos[idx - 1] = i
  90. if i != 0: neg[idx - 1] = random_neq(1, self.itemnum + 1, ts)
  91. idx -= 1
  92. if idx == -1: break
  93. curr_rel = u
  94. support_triples, support_negative_triples, query_triples, negative_triples = [], [], [], []
  95. for idx in range(self.maxlen-1):
  96. support_triples.append([seq[idx],curr_rel,pos[idx]])
  97. support_negative_triples.append([seq[idx],curr_rel,neg[idx]])
  98. rated = ts
  99. rated.add(0)
  100. query_triples.append([seq[-1],curr_rel,self.test[u][0]])
  101. for _ in range(100):
  102. t = np.random.randint(1, self.itemnum + 1)
  103. while t in rated: t = np.random.randint(1, self.itemnum + 1)
  104. negative_triples.append([seq[-1],curr_rel,t])
  105. support_triples = [support_triples]
  106. support_negative_triples = [support_negative_triples]
  107. query_triples = [query_triples]
  108. negative_triples = [negative_triples]
  109. return [support_triples, support_negative_triples, query_triples, negative_triples], curr_rel