-
sklearn.pipeline.make_union(*transformers)
[source] -
Construct a FeatureUnion from the given transformers.
This is a shorthand for the FeatureUnion constructor; it does not require, and does not permit, naming the transformers. Instead, they will be given names automatically based on their types. It also does not allow weighting.
Returns: f : FeatureUnion Examples
123456789101112>>>
from
sklearn.decomposition
import
PCA, TruncatedSVD
>>> make_union(PCA(), TruncatedSVD())
FeatureUnion(n_jobs
=
1
,
transformer_list
=
[(
'pca'
,
PCA(copy
=
True
, iterated_power
=
'auto'
,
n_components
=
None
, random_state
=
None
,
svd_solver
=
'auto'
, tol
=
0.0
, whiten
=
False
)),
(
'truncatedsvd'
,
TruncatedSVD(algorithm
=
'randomized'
,
n_components
=
2
, n_iter
=
5
,
random_state
=
None
, tol
=
0.0
))],
transformer_weights
=
None
)
sklearn.pipeline.make_union()

2025-01-10 15:47:30
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