253 lines
8.7 KiB
Python
253 lines
8.7 KiB
Python
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"""
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=================================================
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Lasso model selection: AIC-BIC / cross-validation
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=================================================
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This example focuses on model selection for Lasso models that are
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linear models with an L1 penalty for regression problems.
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Indeed, several strategies can be used to select the value of the
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regularization parameter: via cross-validation or using an information
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criterion, namely AIC or BIC.
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In what follows, we will discuss in details the different strategies.
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"""
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# Author: Olivier Grisel
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# Gael Varoquaux
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# Alexandre Gramfort
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# Guillaume Lemaitre
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# License: BSD 3 clause
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# %%
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# Dataset
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# -------
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# In this example, we will use the diabetes dataset.
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from sklearn.datasets import load_diabetes
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X, y = load_diabetes(return_X_y=True, as_frame=True)
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X.head()
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# %%
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# In addition, we add some random features to the original data to
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# better illustrate the feature selection performed by the Lasso model.
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import numpy as np
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import pandas as pd
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rng = np.random.RandomState(42)
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n_random_features = 14
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X_random = pd.DataFrame(
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rng.randn(X.shape[0], n_random_features),
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columns=[f"random_{i:02d}" for i in range(n_random_features)],
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)
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X = pd.concat([X, X_random], axis=1)
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# Show only a subset of the columns
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X[X.columns[::3]].head()
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# %%
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# Selecting Lasso via an information criterion
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# --------------------------------------------
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# :class:`~sklearn.linear_model.LassoLarsIC` provides a Lasso estimator that
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# uses the Akaike information criterion (AIC) or the Bayes information
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# criterion (BIC) to select the optimal value of the regularization
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# parameter alpha.
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#
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# Before fitting the model, we will standardize the data with a
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# :class:`~sklearn.preprocessing.StandardScaler`. In addition, we will
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# measure the time to fit and tune the hyperparameter alpha in order to
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# compare with the cross-validation strategy.
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#
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# We will first fit a Lasso model with the AIC criterion.
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import time
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from sklearn.linear_model import LassoLarsIC
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from sklearn.pipeline import make_pipeline
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from sklearn.preprocessing import StandardScaler
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start_time = time.time()
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lasso_lars_ic = make_pipeline(StandardScaler(), LassoLarsIC(criterion="aic")).fit(X, y)
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fit_time = time.time() - start_time
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# %%
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# We store the AIC metric for each value of alpha used during `fit`.
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results = pd.DataFrame(
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{
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"alphas": lasso_lars_ic[-1].alphas_,
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"AIC criterion": lasso_lars_ic[-1].criterion_,
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}
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).set_index("alphas")
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alpha_aic = lasso_lars_ic[-1].alpha_
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# %%
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# Now, we perform the same analysis using the BIC criterion.
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lasso_lars_ic.set_params(lassolarsic__criterion="bic").fit(X, y)
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results["BIC criterion"] = lasso_lars_ic[-1].criterion_
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alpha_bic = lasso_lars_ic[-1].alpha_
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# %%
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# We can check which value of `alpha` leads to the minimum AIC and BIC.
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def highlight_min(x):
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x_min = x.min()
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return ["font-weight: bold" if v == x_min else "" for v in x]
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results.style.apply(highlight_min)
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# %%
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# Finally, we can plot the AIC and BIC values for the different alpha values.
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# The vertical lines in the plot correspond to the alpha chosen for each
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# criterion. The selected alpha corresponds to the minimum of the AIC or BIC
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# criterion.
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ax = results.plot()
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ax.vlines(
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alpha_aic,
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results["AIC criterion"].min(),
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results["AIC criterion"].max(),
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label="alpha: AIC estimate",
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linestyles="--",
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color="tab:blue",
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)
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ax.vlines(
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alpha_bic,
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results["BIC criterion"].min(),
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results["BIC criterion"].max(),
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label="alpha: BIC estimate",
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linestyle="--",
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color="tab:orange",
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)
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ax.set_xlabel(r"$\alpha$")
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ax.set_ylabel("criterion")
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ax.set_xscale("log")
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ax.legend()
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_ = ax.set_title(
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f"Information-criterion for model selection (training time {fit_time:.2f}s)"
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)
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# %%
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# Model selection with an information-criterion is very fast. It relies on
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# computing the criterion on the in-sample set provided to `fit`. Both criteria
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# estimate the model generalization error based on the training set error and
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# penalize this overly optimistic error. However, this penalty relies on a
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# proper estimation of the degrees of freedom and the noise variance. Both are
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# derived for large samples (asymptotic results) and assume the model is
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# correct, i.e. that the data are actually generated by this model.
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#
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# These models also tend to break when the problem is badly conditioned (more
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# features than samples). It is then required to provide an estimate of the
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# noise variance.
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#
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# Selecting Lasso via cross-validation
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# ------------------------------------
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# The Lasso estimator can be implemented with different solvers: coordinate
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# descent and least angle regression. They differ with regards to their
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# execution speed and sources of numerical errors.
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#
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# In scikit-learn, two different estimators are available with integrated
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# cross-validation: :class:`~sklearn.linear_model.LassoCV` and
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# :class:`~sklearn.linear_model.LassoLarsCV` that respectively solve the
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# problem with coordinate descent and least angle regression.
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#
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# In the remainder of this section, we will present both approaches. For both
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# algorithms, we will use a 20-fold cross-validation strategy.
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#
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# Lasso via coordinate descent
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# ............................
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# Let's start by making the hyperparameter tuning using
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# :class:`~sklearn.linear_model.LassoCV`.
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from sklearn.linear_model import LassoCV
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start_time = time.time()
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model = make_pipeline(StandardScaler(), LassoCV(cv=20)).fit(X, y)
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fit_time = time.time() - start_time
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# %%
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import matplotlib.pyplot as plt
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ymin, ymax = 2300, 3800
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lasso = model[-1]
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plt.semilogx(lasso.alphas_, lasso.mse_path_, linestyle=":")
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plt.plot(
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lasso.alphas_,
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lasso.mse_path_.mean(axis=-1),
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color="black",
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label="Average across the folds",
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linewidth=2,
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)
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plt.axvline(lasso.alpha_, linestyle="--", color="black", label="alpha: CV estimate")
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plt.ylim(ymin, ymax)
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plt.xlabel(r"$\alpha$")
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plt.ylabel("Mean square error")
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plt.legend()
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_ = plt.title(
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f"Mean square error on each fold: coordinate descent (train time: {fit_time:.2f}s)"
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)
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# %%
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# Lasso via least angle regression
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# ................................
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# Let's start by making the hyperparameter tuning using
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# :class:`~sklearn.linear_model.LassoLarsCV`.
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from sklearn.linear_model import LassoLarsCV
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start_time = time.time()
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model = make_pipeline(StandardScaler(), LassoLarsCV(cv=20)).fit(X, y)
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fit_time = time.time() - start_time
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# %%
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lasso = model[-1]
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plt.semilogx(lasso.cv_alphas_, lasso.mse_path_, ":")
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plt.semilogx(
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lasso.cv_alphas_,
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lasso.mse_path_.mean(axis=-1),
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color="black",
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label="Average across the folds",
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linewidth=2,
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)
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plt.axvline(lasso.alpha_, linestyle="--", color="black", label="alpha CV")
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plt.ylim(ymin, ymax)
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plt.xlabel(r"$\alpha$")
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plt.ylabel("Mean square error")
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plt.legend()
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_ = plt.title(f"Mean square error on each fold: Lars (train time: {fit_time:.2f}s)")
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# %%
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# Summary of cross-validation approach
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# ....................................
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# Both algorithms give roughly the same results.
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#
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# Lars computes a solution path only for each kink in the path. As a result, it
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# is very efficient when there are only of few kinks, which is the case if
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# there are few features or samples. Also, it is able to compute the full path
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# without setting any hyperparameter. On the opposite, coordinate descent
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# computes the path points on a pre-specified grid (here we use the default).
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# Thus it is more efficient if the number of grid points is smaller than the
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# number of kinks in the path. Such a strategy can be interesting if the number
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# of features is really large and there are enough samples to be selected in
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# each of the cross-validation fold. In terms of numerical errors, for heavily
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# correlated variables, Lars will accumulate more errors, while the coordinate
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# descent algorithm will only sample the path on a grid.
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#
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# Note how the optimal value of alpha varies for each fold. This illustrates
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# why nested-cross validation is a good strategy when trying to evaluate the
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# performance of a method for which a parameter is chosen by cross-validation:
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# this choice of parameter may not be optimal for a final evaluation on
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# unseen test set only.
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#
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# Conclusion
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# ----------
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# In this tutorial, we presented two approaches for selecting the best
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# hyperparameter `alpha`: one strategy finds the optimal value of `alpha`
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# by only using the training set and some information criterion, and another
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# strategy is based on cross-validation.
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#
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# In this example, both approaches are working similarly. The in-sample
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# hyperparameter selection even shows its efficacy in terms of computational
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# performance. However, it can only be used when the number of samples is large
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# enough compared to the number of features.
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#
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# That's why hyperparameter optimization via cross-validation is a safe
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# strategy: it works in different settings.
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