This example demonstrates the problems of underfitting and overfitting and how we can use linear regression with polynomial features to approximate nonlinear functions
class sklearn.kernel_approximation.Nystroem(kernel='rbf', gamma=None, coef0=1, degree=3, kernel_params=None, n_components=100
Using orthogonal matching pursuit for recovering a sparse signal from a noisy measurement encoded with a dictionary print(__doc__)
This submodule contains functions that approximate the feature mappings that correspond to certain kernels, as they are used for example in support vector machines (see
The RandomForestClassifier is trained using bootstrap aggregation, where each new tree is fit from a bootstrap sample of the training observations
This example plots the ellipsoids obtained from a toy dataset (mixture of three Gaussians) fitted by the Baye
sklearn.metrics.pairwise.linear_kernel(X, Y=None)
This example uses a large dataset of faces to learn a set of 20 x 20 images patches that constitute faces. From the programming standpoint
class sklearn.linear_model.RidgeClassifier(alpha=1.0, fit_intercept=True, normalize=False, copy_X=True, max_iter=None, tol=0.001
This is an example of applying Non-negative Matrix Factorization and Latent Dirichlet Allocation on a
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