209

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?

12
  • what is train_fold.shape and train_y.shape?
    – Alexander
    Dec 8, 2015 at 21:05
  • @Alexander: train_fold: tuple (749904,24)... train:y.ravel(): tuple (749904,) Dec 8, 2015 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, 2015 at 21:22
  • Print RF_tuned_parameters for us please. Dec 8, 2015 at 21:25
  • @imaluengo: {'n_estimators': 40, 'max_features': 0.8, 'n_jobs': 2, 'verbose': True, 'min_samples_split': 6, 'random_state': 123} Dec 8, 2015 at 21:29

9 Answers 9

354

Change this line:

model = forest.fit(train_fold, train_y)

to:

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

Explanation:

.values will give the values in a numpy array (shape: (n,1))

.ravel will convert that array shape to (n, ) (i.e. flatten it)

6
  • 49
    Someone might explain what it actually changes.
    – Rahul Bali
    Jun 3, 2017 at 23:34
  • 12
    AttributeError: 'numpy.ndarray' object has no attribute 'values' Nov 23, 2017 at 20:05
  • 20
    If you have a numpy.ndarray, then use train_y.ravel() instead. Dec 3, 2017 at 19:33
  • 18
    @RahulParashar what ravel() does is: when you have y.shape == (10, 1), using y.ravel().shape == (10, ). In words... it flattens an array. Aug 11, 2018 at 14:42
  • 6
    Is this even a useful warning?
    – alex
    Feb 8, 2020 at 19:17
24

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.

1
  • When using the .ravel() approach my column vector was converter to a row vector rather than an array, but this fix worked for me.
    – kabdulla
    Oct 30, 2018 at 10:45
21

I had the same problem. The problem was that the labels were in a column format while it expected it in a row. use np.ravel()

knn.score(training_set, np.ravel(training_labels))

Hope this solves it.

1
13

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)
1
  • This worked for me, dont know the background working. Still, I feel like I can explore what was it. May 25, 2021 at 12:37
4
Y = y.values[:,0]

Y - formated_train_y

y - train_y
1
  • Please add a few lines to explain your answer, just posting the code does not do any good to any of the readers. Thanks.
    – Costa
    Oct 6, 2021 at 15:45
3

Another way of doing this is to use ravel

model = forest.fit(train_fold, train_y.values.reshape(-1,))
1
  • I'd just like to add that this will work for Pandas Series, but not Pandas DataFrames. May 12, 2019 at 20:23
2

With neuraxle, you can easily solve this :

p = Pipeline([
   # expected outputs shape: (n, 1)
   OutputTransformerWrapper(NumpyRavel()), 
   # expected outputs shape: (n, )
   RandomForestRegressor(**RF_tuned_parameters)
])

p, outputs = p.fit_transform(data_inputs, expected_outputs)

Neuraxle is a sklearn-like framework for hyperparameter tuning and AutoML in deep learning projects !

1
format_train_y=[]
for n in train_y:
    format_train_y.append(n[0])
2
  • 3
    While this code may solve the question, including an explanation of how and why this solves the problem would really help to improve the quality of your post, and probably result in more up-votes. Remember that you are answering the question for readers in the future, not just the person asking now. Please edit your answer to add explanations and give an indication of what limitations and assumptions apply.
    – Dharman
    Apr 4, 2020 at 11:47
  • It worked. Thanks Oct 24, 2021 at 12:32
0

TL;DR
use

y = np.squeeze(y)

instead of

y = y.ravel()

As Python's ravel() may be a valid way to achieve the desired results in this particular case, I would, however, recommend using numpy.squeeze().
The problem here is, that if the shape of your y (numpy array) is e.g. (100, 2), then y.ravel() will concatenate the two variables on the second axis along the first axis, resulting in a shape like (200,). This might not be what you want when dealing with independent variables that have to be regarded on their own.
On the other hand, numpy.squeeze() will just trim any redundant dimensions (i.e. which are of size 1). So, if your numpy array's shape is (100, 1), this will result in an array of shape (100,), whereas the result for a numpy array of shape (100, 2) will not change, as none of the dimensions have size 1.

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