find_best_attributes_surrogate_openML_multi.py 9.7 KB

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  1. # main imports
  2. import os
  3. import sys
  4. import argparse
  5. import pandas as pd
  6. import numpy as np
  7. import logging
  8. import datetime
  9. import random
  10. # model imports
  11. from sklearn.model_selection import train_test_split
  12. from sklearn.model_selection import GridSearchCV
  13. from sklearn.linear_model import LogisticRegression
  14. from sklearn.ensemble import RandomForestClassifier, VotingClassifier
  15. import joblib
  16. import sklearn
  17. import sklearn.svm as svm
  18. from sklearn.utils import shuffle
  19. from sklearn.metrics import roc_auc_score
  20. from sklearn.model_selection import cross_val_score
  21. from sklearn.preprocessing import MinMaxScaler
  22. # modules and config imports
  23. sys.path.insert(0, '') # trick to enable import of main folder module
  24. import custom_config as cfg
  25. import models as mdl
  26. from optimization.ILSMultiSurrogate import ILSMultiSurrogate
  27. from macop.solutions.BinarySolution import BinarySolution
  28. from macop.operators.mutators.SimpleMutation import SimpleMutation
  29. from macop.operators.mutators.SimpleBinaryMutation import SimpleBinaryMutation
  30. from macop.operators.crossovers.SimpleCrossover import SimpleCrossover
  31. from macop.operators.crossovers.RandomSplitCrossover import RandomSplitCrossover
  32. from macop.operators.policies.UCBPolicy import UCBPolicy
  33. from macop.callbacks.BasicCheckpoint import BasicCheckpoint
  34. from macop.callbacks.UCBCheckpoint import UCBCheckpoint
  35. from optimization.callbacks.SurrogateCheckpoint import SurrogateCheckpoint
  36. from optimization.callbacks.MultiSurrogateCheckpoint import MultiSurrogateCheckpoint
  37. from sklearn.ensemble import RandomForestClassifier
  38. # default validator
  39. def validator(solution):
  40. # at least 5 attributes
  41. if list(solution._data).count(1) < 2:
  42. return False
  43. return True
  44. def train_model(X_train, y_train):
  45. #print ('Creating model...')
  46. # here use of SVM with grid search CV
  47. Cs = [0.001, 0.01, 0.1, 1, 10, 100]
  48. gammas = [0.001, 0.01, 0.1,10, 100]
  49. param_grid = {'kernel':['rbf'], 'C': Cs, 'gamma' : gammas}
  50. svc = svm.SVC(probability=True, class_weight='balanced')
  51. #clf = GridSearchCV(svc, param_grid, cv=5, verbose=1, scoring=my_accuracy_scorer, n_jobs=-1)
  52. clf = GridSearchCV(svc, param_grid, cv=4, verbose=0, n_jobs=-1)
  53. clf.fit(X_train, y_train)
  54. model = clf.best_estimator_
  55. return model
  56. def loadDataset(filename):
  57. ########################
  58. # 1. Get and prepare data
  59. ########################
  60. dataset = pd.read_csv(filename, sep=',')
  61. # change label as common
  62. min_label_value = min(dataset.iloc[:, -1])
  63. max_label_value = max(dataset.iloc[:, -1])
  64. dataset.iloc[:, -1] = dataset.iloc[:, -1].replace(min_label_value, 0)
  65. dataset.iloc[:, -1] = dataset.iloc[:, -1].replace(max_label_value, 1)
  66. X_dataset = dataset.iloc[:, :-1]
  67. y_dataset = dataset.iloc[:, -1]
  68. problem_size = len(X_dataset.columns)
  69. # min/max normalisation over feature
  70. # create a scaler object
  71. scaler = MinMaxScaler()
  72. # fit and transform the data
  73. X_dataset = np.array(pd.DataFrame(scaler.fit_transform(X_dataset), columns=X_dataset.columns))
  74. # prepare train, validation and test datasets
  75. X_train, X_test, y_train, y_test = train_test_split(X_dataset, y_dataset, test_size=0.3, shuffle=True)
  76. return X_train, y_train, X_test, y_test, problem_size
  77. def main():
  78. parser = argparse.ArgumentParser(description="Train and find best filters to use for model")
  79. parser.add_argument('--data', type=str, help='open ml dataset filename prefix', required=True)
  80. parser.add_argument('--every_ls', type=int, help='train every ls surrogate model', default=50) # default value
  81. parser.add_argument('--k_division', type=int, help='number of expected sub surrogate model', required=True)
  82. parser.add_argument('--k_dynamic', type=int, help='specify if indices for each sub surrogate model are changed or not for each training', default=0, choices=[0, 1])
  83. parser.add_argument('--ils', type=int, help='number of total iteration for ils algorithm', required=True)
  84. parser.add_argument('--ls', type=int, help='number of iteration for Local Search algorithm', required=True)
  85. parser.add_argument('--output', type=str, help='output surrogate model name')
  86. args = parser.parse_args()
  87. p_data_file = args.data
  88. p_every_ls = args.every_ls
  89. p_k_division = args.k_division
  90. p_k_dynamic = bool(args.k_dynamic)
  91. p_ils_iteration = args.ils
  92. p_ls_iteration = args.ls
  93. p_output = args.output
  94. # load data from file and get problem size
  95. X_train, y_train, X_test, y_test, problem_size = loadDataset(p_data_file)
  96. # create `logs` folder if necessary
  97. if not os.path.exists(cfg.output_logs_folder):
  98. os.makedirs(cfg.output_logs_folder)
  99. logging.basicConfig(format='%(asctime)s %(message)s', filename='data/logs/{0}.log'.format(p_output), level=logging.DEBUG)
  100. # init solution (`n` attributes)
  101. def init():
  102. return BinarySolution([], problem_size).random(validator)
  103. # define evaluate function here (need of data information)
  104. def evaluate(solution):
  105. start = datetime.datetime.now()
  106. # get indices of filters data to use (filters selection from solution)
  107. indices = []
  108. for index, value in enumerate(solution._data):
  109. if value == 1:
  110. indices.append(index)
  111. print(f'Training SVM with {len(indices)} from {len(solution._data)} available features')
  112. # keep only selected filters from solution
  113. x_train_filters = X_train[:, indices]
  114. x_test_filters = X_test[ :, indices]
  115. # model = mdl.get_trained_model(p_choice, x_train_filters, y_train_filters)
  116. model = train_model(x_train_filters, y_train)
  117. y_test_model = model.predict(x_test_filters)
  118. y_test_predict = [ 1 if x > 0.5 else 0 for x in y_test_model ]
  119. test_roc_auc = roc_auc_score(y_test, y_test_predict)
  120. end = datetime.datetime.now()
  121. diff = end - start
  122. print("Real evaluation took: {}, score found: {}".format(divmod(diff.days * 86400 + diff.seconds, 60), test_roc_auc))
  123. return test_roc_auc
  124. # build all output folder and files based on `output` name
  125. backup_model_folder = os.path.join(cfg.output_backup_folder, p_output)
  126. surrogate_output_model = os.path.join(cfg.output_surrogates_model_folder, p_output)
  127. surrogate_output_data = os.path.join(cfg.output_surrogates_data_folder, p_output)
  128. if not os.path.exists(backup_model_folder):
  129. os.makedirs(backup_model_folder)
  130. if not os.path.exists(cfg.output_surrogates_model_folder):
  131. os.makedirs(cfg.output_surrogates_model_folder)
  132. if not os.path.exists(cfg.output_surrogates_data_folder):
  133. os.makedirs(cfg.output_surrogates_data_folder)
  134. backup_file_path = os.path.join(backup_model_folder, p_output + '.csv')
  135. ucb_backup_file_path = os.path.join(backup_model_folder, p_output + '_ucbPolicy.csv')
  136. surrogate_backup_file_path = os.path.join(cfg.output_surrogates_data_folder, p_output + '_train.csv')
  137. surrogate_k_indices_backup_file_path = os.path.join(cfg.output_surrogates_data_folder, p_output + '_k_indices.csv')
  138. # prepare optimization algorithm (only use of mutation as only ILS are used here, and local search need only local permutation)
  139. operators = [SimpleBinaryMutation(), SimpleMutation()]
  140. policy = UCBPolicy(operators)
  141. # define first line if necessary
  142. if not os.path.exists(surrogate_output_data):
  143. folder, _ = os.path.split(surrogate_output_data)
  144. if not os.path.exists(folder):
  145. os.makedirs(folder)
  146. with open(surrogate_output_data, 'w') as f:
  147. f.write('x;y\n')
  148. # custom start surrogate variable based on problem size
  149. p_start = int(0.5 * problem_size)
  150. # fixed minimal number of real evaluations
  151. if p_start < 50:
  152. p_start = 50
  153. print(f'Starting using surrogate after {p_start} reals training')
  154. # custom ILS for surrogate use
  155. algo = ILSMultiSurrogate(initalizer=init,
  156. evaluator=evaluate, # same evaluator by defadefaultult, as we will use the surrogate function
  157. operators=operators,
  158. policy=policy,
  159. validator=validator,
  160. surrogates_file_path=surrogate_output_model,
  161. start_train_surrogates=p_start, # start learning and using surrogate after 1000 real evaluation
  162. solutions_file=surrogate_output_data,
  163. ls_train_surrogates=p_every_ls, # retrain surrogate every `x` iteration
  164. k_division=p_k_division,
  165. k_dynamic=p_k_dynamic,
  166. maximise=True)
  167. algo.addCallback(BasicCheckpoint(every=1, filepath=backup_file_path))
  168. algo.addCallback(UCBCheckpoint(every=1, filepath=ucb_backup_file_path))
  169. algo.addCallback(SurrogateCheckpoint(every=p_ls_iteration, filepath=surrogate_backup_file_path)) # try every LS like this
  170. algo.addCallback(MultiSurrogateCheckpoint(every=p_ls_iteration, filepath=surrogate_k_indices_backup_file_path)) # try every LS like this
  171. bestSol = algo.run(p_ils_iteration, p_ls_iteration)
  172. # print best solution found
  173. print("Found ", bestSol)
  174. # save model information into .csv file
  175. if not os.path.exists(cfg.results_information_folder):
  176. os.makedirs(cfg.results_information_folder)
  177. filename_path = os.path.join(cfg.results_information_folder, cfg.optimization_attributes_result_filename)
  178. line_info = p_data_file + ';' + str(p_ils_iteration) + ';' + str(p_ls_iteration) + ';' + str(bestSol.data) + ';' + str(list(bestSol.data).count(1)) + ';' + str(bestSol.fitness())
  179. with open(filename_path, 'a') as f:
  180. f.write(line_info + '\n')
  181. print('Result saved into %s' % filename_path)
  182. if __name__ == "__main__":
  183. main()