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Selecting dimensionality reduction with Pipeline and GridSearchCV#
This example constructs a pipeline that does dimensionality
reduction followed by prediction with a support vector
classifier. It demonstrates the use of GridSearchCV
and
Pipeline
to optimize over different classes of estimators in a
single CV run – unsupervised PCA
and NMF
dimensionality
reductions are compared to univariate feature selection during
the grid search.
Additionally, Pipeline
can be instantiated with the memory
argument to memoize the transformers within the pipeline, avoiding to fit
again the same transformers over and over.
Note that the use of memory
to enable caching becomes interesting when the
fitting of a transformer is costly.
# Authors: The scikit-learn developers
# SPDX-License-Identifier: BSD-3-Clause
Illustration of Pipeline
and GridSearchCV
#
import matplotlib.pyplot as plt
import numpy as np
from sklearn.datasets import load_digits
from sklearn.decomposition import NMF, PCA
from sklearn.feature_selection import SelectKBest, mutual_info_classif
from sklearn.model_selection import GridSearchCV
from sklearn.pipeline import Pipeline
from sklearn.preprocessing import MinMaxScaler
from sklearn.svm import LinearSVC
X, y = load_digits(return_X_y=True)
pipe = Pipeline(
[
("scaling", MinMaxScaler()),
# the reduce_dim stage is populated by the param_grid
("reduce_dim", "passthrough"),
("classify", LinearSVC(dual=False, max_iter=10000)),
]
)
N_FEATURES_OPTIONS = [2, 4, 8]
C_OPTIONS = [1, 10, 100, 1000]
param_grid = [
{
"reduce_dim": [PCA(iterated_power=7), NMF(max_iter=1_000)],
"reduce_dim__n_components": N_FEATURES_OPTIONS,
"classify__C": C_OPTIONS,
},
{
"reduce_dim": [SelectKBest(mutual_info_classif)],
"reduce_dim__k": N_FEATURES_OPTIONS,
"classify__C": C_OPTIONS,
},
]
reducer_labels = ["PCA", "NMF", "KBest(mutual_info_classif)"]
grid = GridSearchCV(pipe, n_jobs=1, param_grid=param_grid)
grid.fit(X, y)
import pandas as pd
mean_scores = np.array(grid.cv_results_["mean_test_score"])
# scores are in the order of param_grid iteration, which is alphabetical
mean_scores = mean_scores.reshape(len(C_OPTIONS), -1, len(N_FEATURES_OPTIONS))
# select score for best C
mean_scores = mean_scores.max(axis=0)
# create a dataframe to ease plotting
mean_scores = pd.DataFrame(
mean_scores.T, index=N_FEATURES_OPTIONS, columns=reducer_labels
)
ax = mean_scores.plot.bar()
ax.set_title("Comparing feature reduction techniques")
ax.set_xlabel("Reduced number of features")
ax.set_ylabel("Digit classification accuracy")
ax.set_ylim((0, 1))
ax.legend(loc="upper left")
plt.show()
Caching transformers within a Pipeline
#
It is sometimes worthwhile storing the state of a specific transformer
since it could be used again. Using a pipeline in GridSearchCV
triggers
such situations. Therefore, we use the argument memory
to enable caching.
Warning
Note that this example is, however, only an illustration since for this
specific case fitting PCA is not necessarily slower than loading the
cache. Hence, use the memory
constructor parameter when the fitting
of a transformer is costly.
from shutil import rmtree
from joblib import Memory
# Create a temporary folder to store the transformers of the pipeline
location = "cachedir"
memory = Memory(location=location, verbose=10)
cached_pipe = Pipeline(
[("reduce_dim", PCA()), ("classify", LinearSVC(dual=False, max_iter=10000))],
memory=memory,
)
# This time, a cached pipeline will be used within the grid search
# Delete the temporary cache before exiting
memory.clear(warn=False)
rmtree(location)
The PCA
fitting is only computed at the evaluation of the first
configuration of the C
parameter of the LinearSVC
classifier. The
other configurations of C
will trigger the loading of the cached PCA
estimator data, leading to save processing time. Therefore, the use of
caching the pipeline using memory
is highly beneficial when fitting
a transformer is costly.
Total running time of the script: (0 minutes 53.607 seconds)
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Balance model complexity and cross-validated score
Feature agglomeration vs. univariate selection