I need to fit RandomForestRegressor from sklearn.ensemble.

forest = ensemble.RandomForestRegressor(**RF_tuned_parameters)
model = forest.fit(train_fold, train_y)
yhat = model.predict(test_fold)

This code always worked until I made some preprocessing of data (train_y). The error message says:

DataConversionWarning: A column-vector y was passed when a 1d array was expected. Please change the shape of y to (n_samples,), for example using ravel().

model = forest.fit(train_fold, train_y)

Previously train_y was a Series, now it's numpy array (it is a column-vector). If I apply train_y.ravel(), then it becomes a row vector and no error message appears, through the prediction step takes very long time (actually it never finishes...).

In the docs of RandomForestRegressor I found that train_y should be defined as y : array-like, shape = [n_samples] or [n_samples, n_outputs] Any idea how to solve this issue?

  • what is train_fold.shape and train_y.shape? – Alexander Dec 8 '15 at 21:05
  • @Alexander: train_fold: tuple (749904,24)... train:y.ravel(): tuple (749904,) – Klausos Klausos Dec 8 '15 at 21:16
  • Looks fine. Have you tried training a 100 rows of the data to ensure it works properly (since you said it never finished)? Also, have you examined the contents of your train_y data to ensure preprocessing didn't corrupt it? – Alexander Dec 8 '15 at 21:22
  • Print RF_tuned_parameters for us please. – Imanol Luengo Dec 8 '15 at 21:25
  • @imaluengo: {'n_estimators': 40, 'max_features': 0.8, 'n_jobs': 2, 'verbose': True, 'min_samples_split': 6, 'random_state': 123} – Klausos Klausos Dec 8 '15 at 21:29

Change this line:

model = forest.fit(train_fold, train_y)

to:

model = forest.fit(train_fold, train_y.values.ravel())
  • 17
    Someone might explain what it actually changes. – MEGADON Jun 3 '17 at 23:34
  • AttributeError: 'numpy.ndarray' object has no attribute 'values' – john ktejik Nov 23 '17 at 20:05
  • 5
    If you have a numpy.ndarray, then use train_y.ravel() instead. – Charity Leschinski Dec 3 '17 at 19:33
  • 2
    @RahulParashar what ravel() does is: when you have y.shape == (10, 1), using y.ravel().shape == (10, ). In words... it flattens an array. – PascalVKooten Aug 11 at 14:42

use below code:

model = forest.fit(train_fold, train_y.ravel())

if you are still getting slap by error as identical as below ?

Unknown label type: %r" % y

use this code:

y = train_y.ravel()
train_y = np.array(y).astype(int)
model = forest.fit(train_fold, train_y)
  • 4
    lol. 'slap error' – john ktejik Nov 23 '17 at 20:03

I also encountered this situation when I was trying to train a KNN classifier. but it seems that the warning was gone after I changed:
knn.fit(X_train,y_train)
to
knn.fit(X_train, np.ravel(y_train,order='C'))

Ahead of this line I used import numpy as np.

Another way of doing this is to use ravel

model = forest.fit(train_fold, train_y.values.reshape(-1,))

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