5

Given an sklearn tranformer t, is there a way to determine whether t changes columns/column order of any given input dataset X, without applying it to the data?

For example with t = sklearn.preprocessing.StandardScaler there is a 1-to-1 mapping between the columns of X and t.transform(X), namely X[:, i] -> t.transform(X)[:, i], whereas this is obviously not the case for sklearn.decomposition.PCA.

A corollary of that would be: Can we know, how the columns of the input will change by applying t, e.g. which columns an already fitted sklearn.feature_selection.SelectKBest chooses.

I am not looking for solutions to specific transformers, but a solution applicable to all or at least a wide selection of transformers.

Feel free to implement your own Pipeline class or wrapper if necessary.

2 Answers 2

2
+100

Not all your "transformers" would have the .get_feature_names_out method. Its implementation is discussed in the sklearn github. In the same link, you can see there is, to quote @thomasjpfan, a _OneToOneFeatureMixin class used by transformers with a simple one-to-one correspondence between input and output features

Restricted to sklearn, we can check whether the transformer or estimator is a subclass of _OneToOneFeatureMixin , for example:

from sklearn.decomposition import PCA
from sklearn.preprocessing import StandardScaler
from sklearn.feature_selection import SelectKBest
from sklearn.base import _OneToOneFeatureMixin

tf = {'pca':PCA(),'standardscaler':StandardScaler(),'kbest':SelectKBest()}

[i+":"+str(issubclass(type(tf[i]),_OneToOneFeatureMixin)) for i in tf.keys()]

['pca:False', 'standardscaler:True', 'kbest:False']

These would the source code for _OneToOneFeatureMixin

1
  • Thanks, this exactly anwers my question.
    – AlexNe
    Nov 25, 2021 at 9:23
0

I found a partial answer. Both StandardScaler and SelectKBest have .get_feature_names_out methods. I did not find the time to investigate further.

from numpy.random import RandomState
import numpy as np
import pandas as pd

from sklearn.preprocessing import StandardScaler
from sklearn.feature_selection import SelectKBest

from sklearn.linear_model import LassoCV


rng = RandomState()

# Make some data
slopes = np.array([-1., 1., .1])
X = pd.DataFrame(
    data = np.linspace(-1,1,500)[:, np.newaxis] + rng.random((500, 3)), 
    columns=["foo", "bar", "baz"]
)
y = pd.Series(data=np.linspace(-1,1, 500) + rng.rand((500)))

# Test Transformers
scaler = StandardScaler().fit(X)
selector = SelectKBest(k=2).fit(X, y)

print(scaler.get_feature_names_out())
print(selector.get_feature_names_out())

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.