2020-06-16 01:04:42 +00:00
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import matplotlib.pyplot as plt
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import numpy as np
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from sklearn.datasets import load_digits
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from sklearn.model_selection import ShuffleSplit
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from sklearn.model_selection import learning_curve
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from sklearn.naive_bayes import GaussianNB
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from sklearn.svm import SVC
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2020-12-22 21:25:37 +00:00
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from clearml import Task
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2020-06-16 01:04:42 +00:00
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def plot_learning_curve(estimator, title, X, y, axes=None, ylim=None, cv=None, n_jobs=None,
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train_sizes=np.linspace(.1, 1.0, 5)):
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"""
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Generate 3 plots: the test and training learning curve, the training
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samples vs fit times curve, the fit times vs score curve.
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Parameters
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----------
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estimator : object type that implements the "fit" and "predict" methods
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An object of that type which is cloned for each validation.
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title : string
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Title for the chart.
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X : array-like, shape (n_samples, n_features)
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Training vector, where n_samples is the number of samples and
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n_features is the number of features.
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y : array-like, shape (n_samples) or (n_samples, n_features), optional
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Target relative to X for classification or regression;
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None for unsupervised learning.
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axes : array of 3 axes, optional (default=None)
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Axes to use for plotting the curves.
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ylim : tuple, shape (ymin, ymax), optional
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Defines minimum and maximum yvalues plotted.
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cv : int, cross-validation generator or an iterable, optional
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Determines the cross-validation splitting strategy.
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Possible inputs for cv are:
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- None, to use the default 5-fold cross-validation,
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- integer, to specify the number of folds.
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- :term:`CV splitter`,
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- An iterable yielding (train, test) splits as arrays of indices.
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For integer/None inputs, if ``y`` is binary or multiclass,
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:class:`StratifiedKFold` used. If the estimator is not a classifier
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or if ``y`` is neither binary nor multiclass, :class:`KFold` is used.
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Refer :ref:`User Guide <cross_validation>` for the various
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cross-validators that can be used here.
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n_jobs : int or None, optional (default=None)
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Number of jobs to run in parallel.
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``None`` means 1 unless in a :obj:`joblib.parallel_backend` context.
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``-1`` means using all processors. See :term:`Glossary <n_jobs>`
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for more details.
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train_sizes : array-like, shape (n_ticks,), dtype float or int
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Relative or absolute numbers of training examples that will be used to
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generate the learning curve. If the dtype is float, it is regarded as a
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fraction of the maximum size of the training set (that is determined
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by the selected validation method), i.e. it has to be within (0, 1].
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Otherwise it is interpreted as absolute sizes of the training sets.
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Note that for classification the number of samples usually have to
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be big enough to contain at least one sample from each class.
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(default: np.linspace(0.1, 1.0, 5))
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"""
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if axes is None:
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_, axes = plt.subplots(1, 3, figsize=(20, 5))
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axes[0].set_title(title)
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if ylim is not None:
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axes[0].set_ylim(*ylim)
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axes[0].set_xlabel("Training examples")
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axes[0].set_ylabel("Score")
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train_sizes, train_scores, test_scores, fit_times, _ = \
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learning_curve(estimator, X, y, cv=cv, n_jobs=n_jobs,
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train_sizes=train_sizes,
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return_times=True)
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train_scores_mean = np.mean(train_scores, axis=1)
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train_scores_std = np.std(train_scores, axis=1)
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test_scores_mean = np.mean(test_scores, axis=1)
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test_scores_std = np.std(test_scores, axis=1)
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fit_times_mean = np.mean(fit_times, axis=1)
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fit_times_std = np.std(fit_times, axis=1)
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# Plot learning curve
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axes[0].grid()
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axes[0].fill_between(train_sizes, train_scores_mean - train_scores_std,
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train_scores_mean + train_scores_std, alpha=0.1,
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color="r")
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axes[0].fill_between(train_sizes, test_scores_mean - test_scores_std,
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test_scores_mean + test_scores_std, alpha=0.1,
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color="g")
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axes[0].plot(train_sizes, train_scores_mean, 'o-', color="r",
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label="Training score")
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axes[0].plot(train_sizes, test_scores_mean, 'o-', color="g",
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label="Cross-validation score")
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axes[0].legend(loc="best")
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# Plot n_samples vs fit_times
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axes[1].grid()
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axes[1].plot(train_sizes, fit_times_mean, 'o-')
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axes[1].fill_between(train_sizes, fit_times_mean - fit_times_std,
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fit_times_mean + fit_times_std, alpha=0.1)
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axes[1].set_xlabel("Training examples")
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axes[1].set_ylabel("fit_times")
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axes[1].set_title("Scalability of the model")
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# Plot fit_time vs score
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axes[2].grid()
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axes[2].plot(fit_times_mean, test_scores_mean, 'o-')
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axes[2].fill_between(fit_times_mean, test_scores_mean - test_scores_std,
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test_scores_mean + test_scores_std, alpha=0.1)
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axes[2].set_xlabel("fit_times")
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axes[2].set_ylabel("Score")
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axes[2].set_title("Performance of the model")
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return plt
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2020-12-23 22:30:32 +00:00
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# Connecting ClearML with the current process,
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# from here on everything is logged automatically
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2020-06-16 01:04:42 +00:00
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Task.init('examples', 'scikit-learn matplotlib example')
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fig, fig_axes = plt.subplots(1, 3, figsize=(30, 10))
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X, y = load_digits(return_X_y=True)
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title = "Learning Curves (Naive Bayes)"
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# Cross validation with 100 iterations to get smoother mean test and train
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# score curves, each time with 20% data randomly selected as a validation set.
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cv = ShuffleSplit(n_splits=100, test_size=0.2, random_state=0)
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estimator = GaussianNB()
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plot_learning_curve(estimator, title, X, y, axes=fig_axes, ylim=(0.7, 1.01), cv=cv, n_jobs=4)
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plt.show()
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fig, fig_axes = plt.subplots(1, 3, figsize=(30, 10))
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title = r"Learning Curves (SVM, RBF kernel, $\gamma=0.001$)"
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# SVC is more expensive so we do a lower number of CV iterations:
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cv = ShuffleSplit(n_splits=10, test_size=0.2, random_state=0)
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estimator = SVC(gamma=0.001)
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plot_learning_curve(estimator, title, X, y, axes=fig_axes, ylim=(0.7, 1.01), cv=cv, n_jobs=4)
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plt.show()
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print('done')
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