dataloader.py 2.1 KB

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  1. import pandas as pd
  2. from models.rank.data.config import CustConfig, ProductConfig
  3. from sklearn.preprocessing import OneHotEncoder
  4. from sklearn.model_selection import train_test_split
  5. from sklearn.preprocessing import StandardScaler
  6. from models.rank.data.utils import one_hot_embedding
  7. class DataLoader:
  8. def __init__(self,path):
  9. self._gbdt_data_path = path
  10. self._load_data()
  11. def _load_data(self):
  12. self._gbdt_data = pd.read_csv(self._gbdt_data_path, encoding="utf-8")
  13. self._gbdt_data.drop('BB_RETAIL_CUSTOMER_CODE', axis=1, inplace=True)
  14. self._gbdt_data.drop('product_code', axis=1, inplace=True)
  15. self._onehot_feats = {**CustConfig.ONEHOT_CAT, **ProductConfig.ONEHOT_CAT}
  16. self._onehot_columns = list(self._onehot_feats.keys())
  17. self._numeric_columns = self._gbdt_data.drop(self._onehot_columns + ["label"], axis=1).columns
  18. # 将类别数据进行one-hot编码
  19. self._gbdt_data = one_hot_embedding(self._gbdt_data, self._onehot_feats)
  20. def split_dataset(self):
  21. """数据集划分,将数据集划分为训练集、验证集、测试集"""
  22. # 1. 分离特征和标签
  23. features = self._gbdt_data.drop("label", axis=1)
  24. labels = self._gbdt_data["label"]
  25. # 2. 划分数据集,80%训练集、20%的测试集
  26. X_train, X_test, y_train, y_test = train_test_split(features, labels, test_size=0.2, random_state=42, shuffle=True)
  27. # 3. 数据标准化(仅对特征进行标准化)
  28. scaler = StandardScaler()
  29. X_train[self._numeric_columns] = scaler.fit_transform(X_train[self._numeric_columns])
  30. X_test[self._numeric_columns] = scaler.fit_transform(X_test[self._numeric_columns])
  31. train_dataset = {"data": X_train, "label": y_train}
  32. test_dataset = {"data": X_test, "label": y_test}
  33. return train_dataset, test_dataset
  34. if __name__ == '__main__':
  35. path = './models/rank/data/gbdt_data.csv'
  36. dataloader = DataLoader(path)
  37. dataloader.split_dataset()