I am trying to write my own train test split function using numpy instead of using sklearn's train_test_split function. I am splitting the data into 70% training and 30% test. I am using the boston housing data set from sklearn.
This is the shape of the data:
housing_features.shape #(506,13) where 506 is sample size and it has 13 features.
This is my code:
city_data = datasets.load_boston() housing_prices = city_data.target housing_features = city_data.data def shuffle_split_data(X, y): split = np.random.rand(X.shape) < 0.7 X_Train = X[split] y_Train = y[split] X_Test = X[~split] y_Test = y[~split] print len(X_Train), len(y_Train), len(X_Test), len(y_Test) return X_Train, y_Train, X_Test, y_Test try: X_train, y_train, X_test, y_test = shuffle_split_data(housing_features, housing_prices) print "Successful" except: print "Fail"
The print output i got is:
362 362 144 144 "Successful"
But i know it was not successful because i get a different numbers for the length when i run it again Versus just using SKlearn's train test function and always get 354 for the length of X_train.
#correct output from sklearn.cross_validation import train_test_split X_train, X_test, y_train, y_test = train_test_split(housing_features, housing_prices, test_size=0.3, random_state=42) print len(X_train) #354
What am i missing my my function?