peacock-data-public-datasets-idc-cronscript
/
venv
/lib
/python3.10
/site-packages
/sklearn
/random_projection.py
"""Random Projection transformers. | |
Random Projections are a simple and computationally efficient way to | |
reduce the dimensionality of the data by trading a controlled amount | |
of accuracy (as additional variance) for faster processing times and | |
smaller model sizes. | |
The dimensions and distribution of Random Projections matrices are | |
controlled so as to preserve the pairwise distances between any two | |
samples of the dataset. | |
The main theoretical result behind the efficiency of random projection is the | |
`Johnson-Lindenstrauss lemma (quoting Wikipedia) | |
<https://en.wikipedia.org/wiki/Johnson%E2%80%93Lindenstrauss_lemma>`_: | |
In mathematics, the Johnson-Lindenstrauss lemma is a result | |
concerning low-distortion embeddings of points from high-dimensional | |
into low-dimensional Euclidean space. The lemma states that a small set | |
of points in a high-dimensional space can be embedded into a space of | |
much lower dimension in such a way that distances between the points are | |
nearly preserved. The map used for the embedding is at least Lipschitz, | |
and can even be taken to be an orthogonal projection. | |
""" | |
# Authors: Olivier Grisel <[email protected]>, | |
# Arnaud Joly <[email protected]> | |
# License: BSD 3 clause | |
import warnings | |
from abc import ABCMeta, abstractmethod | |
from numbers import Integral, Real | |
import numpy as np | |
import scipy.sparse as sp | |
from scipy import linalg | |
from .base import ( | |
BaseEstimator, | |
ClassNamePrefixFeaturesOutMixin, | |
TransformerMixin, | |
_fit_context, | |
) | |
from .exceptions import DataDimensionalityWarning | |
from .utils import check_random_state | |
from .utils._param_validation import Interval, StrOptions, validate_params | |
from .utils.extmath import safe_sparse_dot | |
from .utils.random import sample_without_replacement | |
from .utils.validation import check_array, check_is_fitted | |
__all__ = [ | |
"SparseRandomProjection", | |
"GaussianRandomProjection", | |
"johnson_lindenstrauss_min_dim", | |
] | |
def johnson_lindenstrauss_min_dim(n_samples, *, eps=0.1): | |
"""Find a 'safe' number of components to randomly project to. | |
The distortion introduced by a random projection `p` only changes the | |
distance between two points by a factor (1 +- eps) in a euclidean space | |
with good probability. The projection `p` is an eps-embedding as defined | |
by: | |
(1 - eps) ||u - v||^2 < ||p(u) - p(v)||^2 < (1 + eps) ||u - v||^2 | |
Where u and v are any rows taken from a dataset of shape (n_samples, | |
n_features), eps is in ]0, 1[ and p is a projection by a random Gaussian | |
N(0, 1) matrix of shape (n_components, n_features) (or a sparse | |
Achlioptas matrix). | |
The minimum number of components to guarantee the eps-embedding is | |
given by: | |
n_components >= 4 log(n_samples) / (eps^2 / 2 - eps^3 / 3) | |
Note that the number of dimensions is independent of the original | |
number of features but instead depends on the size of the dataset: | |
the larger the dataset, the higher is the minimal dimensionality of | |
an eps-embedding. | |
Read more in the :ref:`User Guide <johnson_lindenstrauss>`. | |
Parameters | |
---------- | |
n_samples : int or array-like of int | |
Number of samples that should be an integer greater than 0. If an array | |
is given, it will compute a safe number of components array-wise. | |
eps : float or array-like of shape (n_components,), dtype=float, \ | |
default=0.1 | |
Maximum distortion rate in the range (0, 1) as defined by the | |
Johnson-Lindenstrauss lemma. If an array is given, it will compute a | |
safe number of components array-wise. | |
Returns | |
------- | |
n_components : int or ndarray of int | |
The minimal number of components to guarantee with good probability | |
an eps-embedding with n_samples. | |
References | |
---------- | |
.. [1] https://en.wikipedia.org/wiki/Johnson%E2%80%93Lindenstrauss_lemma | |
.. [2] `Sanjoy Dasgupta and Anupam Gupta, 1999, | |
"An elementary proof of the Johnson-Lindenstrauss Lemma." | |
<https://citeseerx.ist.psu.edu/doc_view/pid/95cd464d27c25c9c8690b378b894d337cdf021f9>`_ | |
Examples | |
-------- | |
>>> from sklearn.random_projection import johnson_lindenstrauss_min_dim | |
>>> johnson_lindenstrauss_min_dim(1e6, eps=0.5) | |
663 | |
>>> johnson_lindenstrauss_min_dim(1e6, eps=[0.5, 0.1, 0.01]) | |
array([ 663, 11841, 1112658]) | |
>>> johnson_lindenstrauss_min_dim([1e4, 1e5, 1e6], eps=0.1) | |
array([ 7894, 9868, 11841]) | |
""" | |
eps = np.asarray(eps) | |
n_samples = np.asarray(n_samples) | |
if np.any(eps <= 0.0) or np.any(eps >= 1): | |
raise ValueError("The JL bound is defined for eps in ]0, 1[, got %r" % eps) | |
if np.any(n_samples <= 0): | |
raise ValueError( | |
"The JL bound is defined for n_samples greater than zero, got %r" | |
% n_samples | |
) | |
denominator = (eps**2 / 2) - (eps**3 / 3) | |
return (4 * np.log(n_samples) / denominator).astype(np.int64) | |
def _check_density(density, n_features): | |
"""Factorize density check according to Li et al.""" | |
if density == "auto": | |
density = 1 / np.sqrt(n_features) | |
elif density <= 0 or density > 1: | |
raise ValueError("Expected density in range ]0, 1], got: %r" % density) | |
return density | |
def _check_input_size(n_components, n_features): | |
"""Factorize argument checking for random matrix generation.""" | |
if n_components <= 0: | |
raise ValueError( | |
"n_components must be strictly positive, got %d" % n_components | |
) | |
if n_features <= 0: | |
raise ValueError("n_features must be strictly positive, got %d" % n_features) | |
def _gaussian_random_matrix(n_components, n_features, random_state=None): | |
"""Generate a dense Gaussian random matrix. | |
The components of the random matrix are drawn from | |
N(0, 1.0 / n_components). | |
Read more in the :ref:`User Guide <gaussian_random_matrix>`. | |
Parameters | |
---------- | |
n_components : int, | |
Dimensionality of the target projection space. | |
n_features : int, | |
Dimensionality of the original source space. | |
random_state : int, RandomState instance or None, default=None | |
Controls the pseudo random number generator used to generate the matrix | |
at fit time. | |
Pass an int for reproducible output across multiple function calls. | |
See :term:`Glossary <random_state>`. | |
Returns | |
------- | |
components : ndarray of shape (n_components, n_features) | |
The generated Gaussian random matrix. | |
See Also | |
-------- | |
GaussianRandomProjection | |
""" | |
_check_input_size(n_components, n_features) | |
rng = check_random_state(random_state) | |
components = rng.normal( | |
loc=0.0, scale=1.0 / np.sqrt(n_components), size=(n_components, n_features) | |
) | |
return components | |
def _sparse_random_matrix(n_components, n_features, density="auto", random_state=None): | |
"""Generalized Achlioptas random sparse matrix for random projection. | |
Setting density to 1 / 3 will yield the original matrix by Dimitris | |
Achlioptas while setting a lower value will yield the generalization | |
by Ping Li et al. | |
If we note :math:`s = 1 / density`, the components of the random matrix are | |
drawn from: | |
- -sqrt(s) / sqrt(n_components) with probability 1 / 2s | |
- 0 with probability 1 - 1 / s | |
- +sqrt(s) / sqrt(n_components) with probability 1 / 2s | |
Read more in the :ref:`User Guide <sparse_random_matrix>`. | |
Parameters | |
---------- | |
n_components : int, | |
Dimensionality of the target projection space. | |
n_features : int, | |
Dimensionality of the original source space. | |
density : float or 'auto', default='auto' | |
Ratio of non-zero component in the random projection matrix in the | |
range `(0, 1]` | |
If density = 'auto', the value is set to the minimum density | |
as recommended by Ping Li et al.: 1 / sqrt(n_features). | |
Use density = 1 / 3.0 if you want to reproduce the results from | |
Achlioptas, 2001. | |
random_state : int, RandomState instance or None, default=None | |
Controls the pseudo random number generator used to generate the matrix | |
at fit time. | |
Pass an int for reproducible output across multiple function calls. | |
See :term:`Glossary <random_state>`. | |
Returns | |
------- | |
components : {ndarray, sparse matrix} of shape (n_components, n_features) | |
The generated Gaussian random matrix. Sparse matrix will be of CSR | |
format. | |
See Also | |
-------- | |
SparseRandomProjection | |
References | |
---------- | |
.. [1] Ping Li, T. Hastie and K. W. Church, 2006, | |
"Very Sparse Random Projections". | |
https://web.stanford.edu/~hastie/Papers/Ping/KDD06_rp.pdf | |
.. [2] D. Achlioptas, 2001, "Database-friendly random projections", | |
https://cgi.di.uoa.gr/~optas/papers/jl.pdf | |
""" | |
_check_input_size(n_components, n_features) | |
density = _check_density(density, n_features) | |
rng = check_random_state(random_state) | |
if density == 1: | |
# skip index generation if totally dense | |
components = rng.binomial(1, 0.5, (n_components, n_features)) * 2 - 1 | |
return 1 / np.sqrt(n_components) * components | |
else: | |
# Generate location of non zero elements | |
indices = [] | |
offset = 0 | |
indptr = [offset] | |
for _ in range(n_components): | |
# find the indices of the non-zero components for row i | |
n_nonzero_i = rng.binomial(n_features, density) | |
indices_i = sample_without_replacement( | |
n_features, n_nonzero_i, random_state=rng | |
) | |
indices.append(indices_i) | |
offset += n_nonzero_i | |
indptr.append(offset) | |
indices = np.concatenate(indices) | |
# Among non zero components the probability of the sign is 50%/50% | |
data = rng.binomial(1, 0.5, size=np.size(indices)) * 2 - 1 | |
# build the CSR structure by concatenating the rows | |
components = sp.csr_matrix( | |
(data, indices, indptr), shape=(n_components, n_features) | |
) | |
return np.sqrt(1 / density) / np.sqrt(n_components) * components | |
class BaseRandomProjection( | |
TransformerMixin, BaseEstimator, ClassNamePrefixFeaturesOutMixin, metaclass=ABCMeta | |
): | |
"""Base class for random projections. | |
Warning: This class should not be used directly. | |
Use derived classes instead. | |
""" | |
_parameter_constraints: dict = { | |
"n_components": [ | |
Interval(Integral, 1, None, closed="left"), | |
StrOptions({"auto"}), | |
], | |
"eps": [Interval(Real, 0, None, closed="neither")], | |
"compute_inverse_components": ["boolean"], | |
"random_state": ["random_state"], | |
} | |
def __init__( | |
self, | |
n_components="auto", | |
*, | |
eps=0.1, | |
compute_inverse_components=False, | |
random_state=None, | |
): | |
self.n_components = n_components | |
self.eps = eps | |
self.compute_inverse_components = compute_inverse_components | |
self.random_state = random_state | |
def _make_random_matrix(self, n_components, n_features): | |
"""Generate the random projection matrix. | |
Parameters | |
---------- | |
n_components : int, | |
Dimensionality of the target projection space. | |
n_features : int, | |
Dimensionality of the original source space. | |
Returns | |
------- | |
components : {ndarray, sparse matrix} of shape (n_components, n_features) | |
The generated random matrix. Sparse matrix will be of CSR format. | |
""" | |
def _compute_inverse_components(self): | |
"""Compute the pseudo-inverse of the (densified) components.""" | |
components = self.components_ | |
if sp.issparse(components): | |
components = components.toarray() | |
return linalg.pinv(components, check_finite=False) | |
def fit(self, X, y=None): | |
"""Generate a sparse random projection matrix. | |
Parameters | |
---------- | |
X : {ndarray, sparse matrix} of shape (n_samples, n_features) | |
Training set: only the shape is used to find optimal random | |
matrix dimensions based on the theory referenced in the | |
afore mentioned papers. | |
y : Ignored | |
Not used, present here for API consistency by convention. | |
Returns | |
------- | |
self : object | |
BaseRandomProjection class instance. | |
""" | |
X = self._validate_data( | |
X, accept_sparse=["csr", "csc"], dtype=[np.float64, np.float32] | |
) | |
n_samples, n_features = X.shape | |
if self.n_components == "auto": | |
self.n_components_ = johnson_lindenstrauss_min_dim( | |
n_samples=n_samples, eps=self.eps | |
) | |
if self.n_components_ <= 0: | |
raise ValueError( | |
"eps=%f and n_samples=%d lead to a target dimension of " | |
"%d which is invalid" % (self.eps, n_samples, self.n_components_) | |
) | |
elif self.n_components_ > n_features: | |
raise ValueError( | |
"eps=%f and n_samples=%d lead to a target dimension of " | |
"%d which is larger than the original space with " | |
"n_features=%d" | |
% (self.eps, n_samples, self.n_components_, n_features) | |
) | |
else: | |
if self.n_components > n_features: | |
warnings.warn( | |
"The number of components is higher than the number of" | |
" features: n_features < n_components (%s < %s)." | |
"The dimensionality of the problem will not be reduced." | |
% (n_features, self.n_components), | |
DataDimensionalityWarning, | |
) | |
self.n_components_ = self.n_components | |
# Generate a projection matrix of size [n_components, n_features] | |
self.components_ = self._make_random_matrix( | |
self.n_components_, n_features | |
).astype(X.dtype, copy=False) | |
if self.compute_inverse_components: | |
self.inverse_components_ = self._compute_inverse_components() | |
# Required by ClassNamePrefixFeaturesOutMixin.get_feature_names_out. | |
self._n_features_out = self.n_components | |
return self | |
def inverse_transform(self, X): | |
"""Project data back to its original space. | |
Returns an array X_original whose transform would be X. Note that even | |
if X is sparse, X_original is dense: this may use a lot of RAM. | |
If `compute_inverse_components` is False, the inverse of the components is | |
computed during each call to `inverse_transform` which can be costly. | |
Parameters | |
---------- | |
X : {array-like, sparse matrix} of shape (n_samples, n_components) | |
Data to be transformed back. | |
Returns | |
------- | |
X_original : ndarray of shape (n_samples, n_features) | |
Reconstructed data. | |
""" | |
check_is_fitted(self) | |
X = check_array(X, dtype=[np.float64, np.float32], accept_sparse=("csr", "csc")) | |
if self.compute_inverse_components: | |
return X @ self.inverse_components_.T | |
inverse_components = self._compute_inverse_components() | |
return X @ inverse_components.T | |
def _more_tags(self): | |
return { | |
"preserves_dtype": [np.float64, np.float32], | |
} | |
class GaussianRandomProjection(BaseRandomProjection): | |
"""Reduce dimensionality through Gaussian random projection. | |
The components of the random matrix are drawn from N(0, 1 / n_components). | |
Read more in the :ref:`User Guide <gaussian_random_matrix>`. | |
.. versionadded:: 0.13 | |
Parameters | |
---------- | |
n_components : int or 'auto', default='auto' | |
Dimensionality of the target projection space. | |
n_components can be automatically adjusted according to the | |
number of samples in the dataset and the bound given by the | |
Johnson-Lindenstrauss lemma. In that case the quality of the | |
embedding is controlled by the ``eps`` parameter. | |
It should be noted that Johnson-Lindenstrauss lemma can yield | |
very conservative estimated of the required number of components | |
as it makes no assumption on the structure of the dataset. | |
eps : float, default=0.1 | |
Parameter to control the quality of the embedding according to | |
the Johnson-Lindenstrauss lemma when `n_components` is set to | |
'auto'. The value should be strictly positive. | |
Smaller values lead to better embedding and higher number of | |
dimensions (n_components) in the target projection space. | |
compute_inverse_components : bool, default=False | |
Learn the inverse transform by computing the pseudo-inverse of the | |
components during fit. Note that computing the pseudo-inverse does not | |
scale well to large matrices. | |
random_state : int, RandomState instance or None, default=None | |
Controls the pseudo random number generator used to generate the | |
projection matrix at fit time. | |
Pass an int for reproducible output across multiple function calls. | |
See :term:`Glossary <random_state>`. | |
Attributes | |
---------- | |
n_components_ : int | |
Concrete number of components computed when n_components="auto". | |
components_ : ndarray of shape (n_components, n_features) | |
Random matrix used for the projection. | |
inverse_components_ : ndarray of shape (n_features, n_components) | |
Pseudo-inverse of the components, only computed if | |
`compute_inverse_components` is True. | |
.. versionadded:: 1.1 | |
n_features_in_ : int | |
Number of features seen during :term:`fit`. | |
.. versionadded:: 0.24 | |
feature_names_in_ : ndarray of shape (`n_features_in_`,) | |
Names of features seen during :term:`fit`. Defined only when `X` | |
has feature names that are all strings. | |
.. versionadded:: 1.0 | |
See Also | |
-------- | |
SparseRandomProjection : Reduce dimensionality through sparse | |
random projection. | |
Examples | |
-------- | |
>>> import numpy as np | |
>>> from sklearn.random_projection import GaussianRandomProjection | |
>>> rng = np.random.RandomState(42) | |
>>> X = rng.rand(25, 3000) | |
>>> transformer = GaussianRandomProjection(random_state=rng) | |
>>> X_new = transformer.fit_transform(X) | |
>>> X_new.shape | |
(25, 2759) | |
""" | |
def __init__( | |
self, | |
n_components="auto", | |
*, | |
eps=0.1, | |
compute_inverse_components=False, | |
random_state=None, | |
): | |
super().__init__( | |
n_components=n_components, | |
eps=eps, | |
compute_inverse_components=compute_inverse_components, | |
random_state=random_state, | |
) | |
def _make_random_matrix(self, n_components, n_features): | |
"""Generate the random projection matrix. | |
Parameters | |
---------- | |
n_components : int, | |
Dimensionality of the target projection space. | |
n_features : int, | |
Dimensionality of the original source space. | |
Returns | |
------- | |
components : ndarray of shape (n_components, n_features) | |
The generated random matrix. | |
""" | |
random_state = check_random_state(self.random_state) | |
return _gaussian_random_matrix( | |
n_components, n_features, random_state=random_state | |
) | |
def transform(self, X): | |
"""Project the data by using matrix product with the random matrix. | |
Parameters | |
---------- | |
X : {ndarray, sparse matrix} of shape (n_samples, n_features) | |
The input data to project into a smaller dimensional space. | |
Returns | |
------- | |
X_new : ndarray of shape (n_samples, n_components) | |
Projected array. | |
""" | |
check_is_fitted(self) | |
X = self._validate_data( | |
X, accept_sparse=["csr", "csc"], reset=False, dtype=[np.float64, np.float32] | |
) | |
return X @ self.components_.T | |
class SparseRandomProjection(BaseRandomProjection): | |
"""Reduce dimensionality through sparse random projection. | |
Sparse random matrix is an alternative to dense random | |
projection matrix that guarantees similar embedding quality while being | |
much more memory efficient and allowing faster computation of the | |
projected data. | |
If we note `s = 1 / density` the components of the random matrix are | |
drawn from: | |
- -sqrt(s) / sqrt(n_components) with probability 1 / 2s | |
- 0 with probability 1 - 1 / s | |
- +sqrt(s) / sqrt(n_components) with probability 1 / 2s | |
Read more in the :ref:`User Guide <sparse_random_matrix>`. | |
.. versionadded:: 0.13 | |
Parameters | |
---------- | |
n_components : int or 'auto', default='auto' | |
Dimensionality of the target projection space. | |
n_components can be automatically adjusted according to the | |
number of samples in the dataset and the bound given by the | |
Johnson-Lindenstrauss lemma. In that case the quality of the | |
embedding is controlled by the ``eps`` parameter. | |
It should be noted that Johnson-Lindenstrauss lemma can yield | |
very conservative estimated of the required number of components | |
as it makes no assumption on the structure of the dataset. | |
density : float or 'auto', default='auto' | |
Ratio in the range (0, 1] of non-zero component in the random | |
projection matrix. | |
If density = 'auto', the value is set to the minimum density | |
as recommended by Ping Li et al.: 1 / sqrt(n_features). | |
Use density = 1 / 3.0 if you want to reproduce the results from | |
Achlioptas, 2001. | |
eps : float, default=0.1 | |
Parameter to control the quality of the embedding according to | |
the Johnson-Lindenstrauss lemma when n_components is set to | |
'auto'. This value should be strictly positive. | |
Smaller values lead to better embedding and higher number of | |
dimensions (n_components) in the target projection space. | |
dense_output : bool, default=False | |
If True, ensure that the output of the random projection is a | |
dense numpy array even if the input and random projection matrix | |
are both sparse. In practice, if the number of components is | |
small the number of zero components in the projected data will | |
be very small and it will be more CPU and memory efficient to | |
use a dense representation. | |
If False, the projected data uses a sparse representation if | |
the input is sparse. | |
compute_inverse_components : bool, default=False | |
Learn the inverse transform by computing the pseudo-inverse of the | |
components during fit. Note that the pseudo-inverse is always a dense | |
array, even if the training data was sparse. This means that it might be | |
necessary to call `inverse_transform` on a small batch of samples at a | |
time to avoid exhausting the available memory on the host. Moreover, | |
computing the pseudo-inverse does not scale well to large matrices. | |
random_state : int, RandomState instance or None, default=None | |
Controls the pseudo random number generator used to generate the | |
projection matrix at fit time. | |
Pass an int for reproducible output across multiple function calls. | |
See :term:`Glossary <random_state>`. | |
Attributes | |
---------- | |
n_components_ : int | |
Concrete number of components computed when n_components="auto". | |
components_ : sparse matrix of shape (n_components, n_features) | |
Random matrix used for the projection. Sparse matrix will be of CSR | |
format. | |
inverse_components_ : ndarray of shape (n_features, n_components) | |
Pseudo-inverse of the components, only computed if | |
`compute_inverse_components` is True. | |
.. versionadded:: 1.1 | |
density_ : float in range 0.0 - 1.0 | |
Concrete density computed from when density = "auto". | |
n_features_in_ : int | |
Number of features seen during :term:`fit`. | |
.. versionadded:: 0.24 | |
feature_names_in_ : ndarray of shape (`n_features_in_`,) | |
Names of features seen during :term:`fit`. Defined only when `X` | |
has feature names that are all strings. | |
.. versionadded:: 1.0 | |
See Also | |
-------- | |
GaussianRandomProjection : Reduce dimensionality through Gaussian | |
random projection. | |
References | |
---------- | |
.. [1] Ping Li, T. Hastie and K. W. Church, 2006, | |
"Very Sparse Random Projections". | |
https://web.stanford.edu/~hastie/Papers/Ping/KDD06_rp.pdf | |
.. [2] D. Achlioptas, 2001, "Database-friendly random projections", | |
https://cgi.di.uoa.gr/~optas/papers/jl.pdf | |
Examples | |
-------- | |
>>> import numpy as np | |
>>> from sklearn.random_projection import SparseRandomProjection | |
>>> rng = np.random.RandomState(42) | |
>>> X = rng.rand(25, 3000) | |
>>> transformer = SparseRandomProjection(random_state=rng) | |
>>> X_new = transformer.fit_transform(X) | |
>>> X_new.shape | |
(25, 2759) | |
>>> # very few components are non-zero | |
>>> np.mean(transformer.components_ != 0) | |
0.0182... | |
""" | |
_parameter_constraints: dict = { | |
**BaseRandomProjection._parameter_constraints, | |
"density": [Interval(Real, 0.0, 1.0, closed="right"), StrOptions({"auto"})], | |
"dense_output": ["boolean"], | |
} | |
def __init__( | |
self, | |
n_components="auto", | |
*, | |
density="auto", | |
eps=0.1, | |
dense_output=False, | |
compute_inverse_components=False, | |
random_state=None, | |
): | |
super().__init__( | |
n_components=n_components, | |
eps=eps, | |
compute_inverse_components=compute_inverse_components, | |
random_state=random_state, | |
) | |
self.dense_output = dense_output | |
self.density = density | |
def _make_random_matrix(self, n_components, n_features): | |
"""Generate the random projection matrix | |
Parameters | |
---------- | |
n_components : int | |
Dimensionality of the target projection space. | |
n_features : int | |
Dimensionality of the original source space. | |
Returns | |
------- | |
components : sparse matrix of shape (n_components, n_features) | |
The generated random matrix in CSR format. | |
""" | |
random_state = check_random_state(self.random_state) | |
self.density_ = _check_density(self.density, n_features) | |
return _sparse_random_matrix( | |
n_components, n_features, density=self.density_, random_state=random_state | |
) | |
def transform(self, X): | |
"""Project the data by using matrix product with the random matrix. | |
Parameters | |
---------- | |
X : {ndarray, sparse matrix} of shape (n_samples, n_features) | |
The input data to project into a smaller dimensional space. | |
Returns | |
------- | |
X_new : {ndarray, sparse matrix} of shape (n_samples, n_components) | |
Projected array. It is a sparse matrix only when the input is sparse and | |
`dense_output = False`. | |
""" | |
check_is_fitted(self) | |
X = self._validate_data( | |
X, accept_sparse=["csr", "csc"], reset=False, dtype=[np.float64, np.float32] | |
) | |
return safe_sparse_dot(X, self.components_.T, dense_output=self.dense_output) | |