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.