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For some reason, whenever I run a ensemble.RandomForestClassifier() and use the .predict_proba() method, it returns a 2d-array in the shape of [n_classes, n_samples] instead of the [n_samples, n_classes] shape that it's supposed to per the docs.

Here is my sample code:

# generate some sample data

X = np.array([[4, 5, 6, 7, 8], 
              [0, 5, 6, 2, 3], 
              [1, 2, 6, 5, 8], 
              [6, 1, 1, 1, 3], 
              [2, 5, 3, 2, 0]])
»» X.shape
   (5, 5)

y = [['blue', 'red'], 
     ['red'], 
     ['red', 'green'], 
     ['blue', 'green'], 
     ['orange']]

X_test = np.array([[4, 6, 1, 2, 8], 
                   [0, 0, 1, 5, 1]])
»» X_test.shape
   (2, 5)

# binarize text labels

mlb = preprocessing.MultiLabelBinarizer()
lb_y = mlb.fit_transform(y)

»» lb_y 
   [[1 0 0 1]
    [0 0 0 1]
    [0 1 0 1]
    [1 1 0 0]
    [0 0 1 0]]

»» lb_y.shape
   (5, 4)

Everything works fine up until this point. But when I do this:

rfc = ensemble.RandomForestClassifier(random_state=42)
rfc.fit(X, lb_y)
yhat_p = rfc.predict_proba(X_test)

»» yhat_p
[array([[ 0.5,  0.5],
        [ 0.7,  0.3]]), 
 array([[ 0.4,  0.6],
        [ 0.5,  0.5]]), 
 array([[ 0.7,  0.3],
        [ 0.7,  0.3]]), 
 array([[ 0.7,  0.3],
        [ 0.6,  0.4]])]

My yhat_p size is [n_classes, n_samples] instead of [n_samples, n_classes]. Can someone tell me why my output is transposed? Note: The .predict() method works just fine.

1 Answer 1

3

By binarizing your data, you have transformed the problem so you are now doing four separate classification tasks. Each of those tasks has two classes, 0 and 1, where 1 represents "has this label" and 0 represents "doesn't have this label").

The formatting in the docs is a little odd, but it says:

array of shape = [n_samples, n_classes], or a list of n_outputs such arrays if n_outputs > 1

Since you have four outputs, you get a list of four arrays. Each of those arrays is of shape (2, 2), because you have two samples (i.e., two rows in your X_test) and two classes (0 and 1) for each output. The n_classes referred to in the docs is the number of classes for a single output, not the total number of classes across all output classifications you're doing. (The reason it returns a list instead of a single array is that it's not required that the separate classifications have the same number of classes. You could do a multi-output classification task where one output has two classes and another has 100 classes.)

For instance, the first element in your list is

array([[ 0.5,  0.5],
        [ 0.7,  0.3]]), 

Each row is giving you the probability that the corresponding row of X_test belongs to each of the classes in the first classiciation task, which is essentially "Is this item blue or not?" Thus the first row is telling you that there is a 50% chance that the first X_test row is not blue and a 50% chance it is blue; the second row is telling you that there is a 70% chance that the second X_test row is not blue and a a 30% chance it is blue.

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  • "The n_classes referred to in the docs is the number of classes for a single output, not the total number of classes across all output classifications you're doing" - that'll do it. Thanks Feb 23, 2016 at 21:54

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