import pandas as pd from sklearn.model_selection import train_test_split # Read the data X_full = pd.read_csv('../input/train.csv', index_col='Id') X_test_full = pd.read_csv('../input/test.csv', index_col='Id') # Remove rows with missing target, separate target from predictors X_full.dropna(axis=0, subset=['SalePrice'], inplace=True) y = X_full.SalePrice X_full.drop(['SalePrice'], axis=1, inplace=True) # Break off validation set from training data X_train_full, X_valid_full, y_train, y_valid = train_test_split(X_full, y, train_size=0.8, test_size=0.2, random_state=0) # "Cardinality" means the number of unique values in a column # Select categorical columns with relatively low cardinality (convenient but arbitrary) categorical_cols = [cname for cname in X_train_full.columns if X_train_full[cname].nunique() < 10 and X_train_full[cname].dtype == "object"] # Select numerical columns numerical_cols = [cname for cname in X_train_full.columns if X_train_full[cname].dtype in ['int64', 'float64']] # Keep selected columns only my_cols = categorical_cols + numerical_cols X_train = X_train_full[my_cols].copy() X_valid = X_valid_full[my_cols].copy() X_test = X_test_full[my_cols].copy()