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svm_for_semi.py 6.4 KB

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  1. import argparse
  2. import os
  3. import pickle
  4. import sys
  5. import numpy as np
  6. import scipy.sparse as sp
  7. import optuna
  8. import pandas as pd
  9. from sklearn.metrics import accuracy_score, f1_score
  10. from sklearn.model_selection import StratifiedKFold
  11. from sklearn.svm import SVC
  12. from common.tools import *
  13. parser = argparse.ArgumentParser()
  14. parser.add_argument("GRAPH_VER", help="version of the graph you want regex to label your CSV with", type=str)
  15. parser.add_argument("DATASET_PATH", help="path to your input CSV", type=str)
  16. parser.add_argument("DATASET_PSEUDO_PATH", help="path to your input CSV", type=str)
  17. parser.add_argument("N_TRIALS", help="optuna n trials, if 0 use default hyperparams", type=int)
  18. args = parser.parse_args()
  19. GRAPH_VER = args.GRAPH_VER
  20. DATASET_PATH = args.DATASET_PATH
  21. N_TRIALS = args.N_TRIALS
  22. DATASET_PSEUDO_PATH = args.DATASET_PSEUDO_PATH
  23. TAGS_TO_PREDICT = get_graph_vertices(GRAPH_VER)
  24. MODEL_DIR = "../models/hyper_svm_regex_graph_v{}.sav".format(GRAPH_VER)
  25. TFIDF_DIR = "../models/tfidf_hyper_svm_graph_v{}.pickle".format(GRAPH_VER)
  26. EXPERIMENT_DATA_PATH = ".."
  27. CODE_COLUMN = "code_block"
  28. TARGET_COLUMN = "graph_vertex_id"
  29. RANDOM_STATE = 42
  30. MAX_ITER = 10000
  31. HYPERPARAM_SPACE = {
  32. "svm_c": (1e-1, 1e3),
  33. "tfidf_min_df": (2, 6),
  34. "tfidf_max_df": (0.2, 1.0),
  35. "svm_kernel": ["linear", "poly", "rbf"],
  36. "svm_degree": (2, 6), # in case of poly kernel
  37. }
  38. DEFAULT_HYPERPARAMS = {
  39. "svm__C": 145.56,
  40. "tfidf__min_df": 2,
  41. "tfidf__max_df": 0.26,
  42. "svm__kernel": "linear",
  43. "tfidf__smooth_idf": True,
  44. "svm__random_state": RANDOM_STATE,
  45. "svm__max_iter": MAX_ITER,
  46. }
  47. def cross_val_scores(kf, clf, X, y, pseudo_X, pseudo_y):
  48. f1s = []
  49. accuracies = []
  50. for i, (train_index, test_index) in enumerate(kf.split(X, y)):
  51. X_train, X_test = X[train_index], X[test_index]
  52. y_train, y_test = y[train_index], y[test_index]
  53. X_train = sp.vstack((X_train, pseudo_X))
  54. y_train = np.append(y_train, pseudo_y)
  55. clf.fit(X_train, y_train)
  56. y_pred = clf.predict(X_test)
  57. f1s.append(f1_score(y_test, y_pred, average="weighted"))
  58. accuracies.append(accuracy_score(y_test, y_pred))
  59. f1s = np.array(f1s)
  60. accuracies = np.array(accuracies)
  61. return f1s.mean(), f1s.std(), accuracies.mean(), accuracies.std()
  62. class Objective:
  63. def __init__(self, pseudo_df, df, kfold_params, svm_c, tfidf_min_df, tfidf_max_df, svm_kernel, svm_degree, use_proba=False):
  64. self.kf = StratifiedKFold(**kfold_params)
  65. self.c_range = svm_c
  66. self.min_df_range = tfidf_min_df
  67. self.max_df_range = tfidf_max_df
  68. self.kernels = svm_kernel
  69. self.poly_degrees = svm_degree
  70. self.df = df
  71. self.pseudo_df = pseudo_df
  72. self.use_proba = use_proba
  73. def __call__(self, trial):
  74. tfidf_params = {
  75. "min_df": trial.suggest_int("tfidf__min_df", *self.min_df_range),
  76. "max_df": trial.suggest_loguniform("tfidf__max_df", *self.max_df_range),
  77. "smooth_idf": True,
  78. }
  79. code_blocks_tfidf = tfidf_fit_transform(self.df[CODE_COLUMN], tfidf_params, TFIDF_DIR)
  80. code_blocks_tfidf_pseudo = tfidf_transform(self.pseudo_df[CODE_COLUMN], tfidf_params, TFIDF_DIR)
  81. X, y = code_blocks_tfidf, self.df[TARGET_COLUMN].values
  82. pseudo_X, pseudo_y = code_blocks_tfidf_pseudo, self.pseudo_df[TARGET_COLUMN].values
  83. svm_params = {
  84. "C": trial.suggest_loguniform("svm__C", *self.c_range),
  85. "kernel": trial.suggest_categorical("svm__kernel", self.kernels),
  86. "random_state": RANDOM_STATE,
  87. "max_iter": MAX_ITER,
  88. "probability": self.use_proba,
  89. }
  90. if svm_params["kernel"] == "poly":
  91. svm_params["degree"] = trial.suggest_int("svm__degree", *self.poly_degrees)
  92. clf = SVC(**svm_params)
  93. f1_mean, _, _, _ = cross_val_scores(self.kf, clf, X, y, pseudo_X, pseudo_y)
  94. return f1_mean
  95. def select_hyperparams(pseudo_df, df, kfold_params, tfidf_path, model_path, use_proba=False):
  96. """
  97. Uses optuna to find hyperparams that maximize F1 score
  98. :param df: labelled dataset
  99. :param kfold_params: parameters for sklearn's KFold
  100. :param tfidf_dir: where to save trained tf-idf
  101. :return: dict with parameters and metrics
  102. """
  103. study = optuna.create_study(direction="maximize", study_name="svm with kernels")
  104. objective = Objective(pseudo_df, df, kfold_params, **HYPERPARAM_SPACE, use_proba=use_proba)
  105. if N_TRIALS > 0:
  106. study.optimize(objective, n_trials=N_TRIALS)
  107. params = study.best_params
  108. else:
  109. params = DEFAULT_HYPERPARAMS
  110. best_tfidf_params = {
  111. "smooth_idf": True,
  112. }
  113. best_svm_params = {
  114. "random_state": RANDOM_STATE,
  115. "max_iter": MAX_ITER,
  116. }
  117. for key, value in params.items():
  118. model_name, param_name = key.split("__")
  119. if model_name == "tfidf":
  120. best_tfidf_params[param_name] = value
  121. elif model_name == "svm":
  122. best_svm_params[param_name] = value
  123. code_blocks_tfidf = tfidf_fit_transform(df[CODE_COLUMN], best_tfidf_params, tfidf_path)
  124. X, y = code_blocks_tfidf, df[TARGET_COLUMN].values
  125. code_blocks_tfidf_pseudo = tfidf_transform(pseudo_df[CODE_COLUMN], best_tfidf_params, tfidf_path)
  126. pseudo_X, pseudo_y = code_blocks_tfidf_pseudo, pseudo_df[TARGET_COLUMN].values
  127. clf = SVC(**best_svm_params)
  128. f1_mean, f1_std, accuracy_mean, accuracy_std = cross_val_scores(objective.kf, clf, X, y, pseudo_X, pseudo_y)
  129. clf.fit(X, y)
  130. pickle.dump(clf, open(model_path, "wb"))
  131. metrics = dict(
  132. test_f1_score=f1_mean,
  133. test_accuracy=accuracy_mean,
  134. test_f1_std=f1_std,
  135. test_accuracy_std=accuracy_std,
  136. )
  137. return best_tfidf_params, best_svm_params, metrics
  138. if __name__ == "__main__":
  139. df = load_data(DATASET_PATH)
  140. df_pseudo = load_data(DATASET_PSEUDO_PATH)
  141. print(df.columns)
  142. nrows = df.shape[0]
  143. print("loaded")
  144. kfold_params = {
  145. "n_splits": 10,
  146. "random_state": RANDOM_STATE,
  147. "shuffle": True,
  148. }
  149. data_meta = {
  150. "DATASET_PATH": DATASET_PATH,
  151. "nrows": nrows,
  152. "label": TAGS_TO_PREDICT,
  153. "model": MODEL_DIR,
  154. "script_dir": __file__,
  155. }
  156. print("selecting hyperparameters")
  157. tfidf_params, svm_params, metrics = select_hyperparams(df, df_pseudo, kfold_params, TFIDF_DIR, MODEL_DIR)
  158. print("hyperparams:", "\ntfidf", tfidf_params, "\nmodel", svm_params)
  159. print("metrics:", metrics)
  160. print("finished")
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