

.. _sphx_glr_auto_examples_plot_compare_reduction.py:


=================================================================
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.


.. code-block:: python

    # Authors: Robert McGibbon, Joel Nothman

    from __future__ import print_function, division

    import numpy as np
    import matplotlib.pyplot as plt
    from sklearn.datasets import load_digits
    from sklearn.model_selection import GridSearchCV
    from sklearn.pipeline import Pipeline
    from sklearn.svm import LinearSVC
    from sklearn.decomposition import PCA, NMF
    from sklearn.feature_selection import SelectKBest, chi2

    print(__doc__)

    pipe = Pipeline([
        ('reduce_dim', PCA()),
        ('classify', LinearSVC())
    ])

    N_FEATURES_OPTIONS = [2, 4, 8]
    C_OPTIONS = [1, 10, 100, 1000]
    param_grid = [
        {
            'reduce_dim': [PCA(iterated_power=7), NMF()],
            'reduce_dim__n_components': N_FEATURES_OPTIONS,
            'classify__C': C_OPTIONS
        },
        {
            'reduce_dim': [SelectKBest(chi2)],
            'reduce_dim__k': N_FEATURES_OPTIONS,
            'classify__C': C_OPTIONS
        },
    ]
    reducer_labels = ['PCA', 'NMF', 'KBest(chi2)']

    grid = GridSearchCV(pipe, cv=3, n_jobs=2, param_grid=param_grid)
    digits = load_digits()
    grid.fit(digits.data, digits.target)

    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)
    bar_offsets = (np.arange(len(N_FEATURES_OPTIONS)) *
                   (len(reducer_labels) + 1) + .5)

    plt.figure()
    COLORS = 'bgrcmyk'
    for i, (label, reducer_scores) in enumerate(zip(reducer_labels, mean_scores)):
        plt.bar(bar_offsets + i, reducer_scores, label=label, color=COLORS[i])

    plt.title("Comparing feature reduction techniques")
    plt.xlabel('Reduced number of features')
    plt.xticks(bar_offsets + len(reducer_labels) / 2, N_FEATURES_OPTIONS)
    plt.ylabel('Digit classification accuracy')
    plt.ylim((0, 1))
    plt.legend(loc='upper left')
    plt.show()

**Total running time of the script:**
(0 minutes 0.000 seconds)



.. container:: sphx-glr-download

    **Download Python source code:** :download:`plot_compare_reduction.py <plot_compare_reduction.py>`


.. container:: sphx-glr-download

    **Download IPython notebook:** :download:`plot_compare_reduction.ipynb <plot_compare_reduction.ipynb>`
