497 lines
24 KiB
ReStructuredText
497 lines
24 KiB
ReStructuredText
.. _gaussian_process:
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==================
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Gaussian Processes
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==================
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.. currentmodule:: sklearn.gaussian_process
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**Gaussian Processes (GP)** are a nonparametric supervised learning method used
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to solve *regression* and *probabilistic classification* problems.
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The advantages of Gaussian processes are:
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- The prediction interpolates the observations (at least for regular
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kernels).
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- The prediction is probabilistic (Gaussian) so that one can compute
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empirical confidence intervals and decide based on those if one should
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refit (online fitting, adaptive fitting) the prediction in some
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region of interest.
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- Versatile: different :ref:`kernels
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<gp_kernels>` can be specified. Common kernels are provided, but
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it is also possible to specify custom kernels.
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The disadvantages of Gaussian processes include:
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- Our implementation is not sparse, i.e., they use the whole samples/features
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information to perform the prediction.
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- They lose efficiency in high dimensional spaces -- namely when the number
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of features exceeds a few dozens.
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.. _gpr:
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Gaussian Process Regression (GPR)
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=================================
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.. currentmodule:: sklearn.gaussian_process
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The :class:`GaussianProcessRegressor` implements Gaussian processes (GP) for
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regression purposes. For this, the prior of the GP needs to be specified. GP
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will combine this prior and the likelihood function based on training samples.
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It allows to give a probabilistic approach to prediction by giving the mean and
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standard deviation as output when predicting.
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.. figure:: ../auto_examples/gaussian_process/images/sphx_glr_plot_gpr_noisy_targets_002.png
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:target: ../auto_examples/gaussian_process/plot_gpr_noisy_targets.html
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:align: center
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The prior mean is assumed to be constant and zero (for `normalize_y=False`) or
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the training data's mean (for `normalize_y=True`). The prior's covariance is
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specified by passing a :ref:`kernel <gp_kernels>` object. The hyperparameters
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of the kernel are optimized when fitting the :class:`GaussianProcessRegressor`
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by maximizing the log-marginal-likelihood (LML) based on the passed
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`optimizer`. As the LML may have multiple local optima, the optimizer can be
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started repeatedly by specifying `n_restarts_optimizer`. The first run is
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always conducted starting from the initial hyperparameter values of the kernel;
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subsequent runs are conducted from hyperparameter values that have been chosen
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randomly from the range of allowed values. If the initial hyperparameters
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should be kept fixed, `None` can be passed as optimizer.
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The noise level in the targets can be specified by passing it via the parameter
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`alpha`, either globally as a scalar or per datapoint. Note that a moderate
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noise level can also be helpful for dealing with numeric instabilities during
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fitting as it is effectively implemented as Tikhonov regularization, i.e., by
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adding it to the diagonal of the kernel matrix. An alternative to specifying
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the noise level explicitly is to include a
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:class:`~sklearn.gaussian_process.kernels.WhiteKernel` component into the
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kernel, which can estimate the global noise level from the data (see example
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below). The figure below shows the effect of noisy target handled by setting
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the parameter `alpha`.
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.. figure:: ../auto_examples/gaussian_process/images/sphx_glr_plot_gpr_noisy_targets_003.png
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:target: ../auto_examples/gaussian_process/plot_gpr_noisy_targets.html
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:align: center
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The implementation is based on Algorithm 2.1 of [RW2006]_. In addition to
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the API of standard scikit-learn estimators, :class:`GaussianProcessRegressor`:
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* allows prediction without prior fitting (based on the GP prior)
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* provides an additional method ``sample_y(X)``, which evaluates samples
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drawn from the GPR (prior or posterior) at given inputs
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* exposes a method ``log_marginal_likelihood(theta)``, which can be used
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externally for other ways of selecting hyperparameters, e.g., via
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Markov chain Monte Carlo.
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.. rubric:: Examples
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* :ref:`sphx_glr_auto_examples_gaussian_process_plot_gpr_noisy_targets.py`
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* :ref:`sphx_glr_auto_examples_gaussian_process_plot_gpr_noisy.py`
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* :ref:`sphx_glr_auto_examples_gaussian_process_plot_compare_gpr_krr.py`
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* :ref:`sphx_glr_auto_examples_gaussian_process_plot_gpr_co2.py`
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.. _gpc:
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Gaussian Process Classification (GPC)
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=====================================
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.. currentmodule:: sklearn.gaussian_process
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The :class:`GaussianProcessClassifier` implements Gaussian processes (GP) for
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classification purposes, more specifically for probabilistic classification,
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where test predictions take the form of class probabilities.
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GaussianProcessClassifier places a GP prior on a latent function :math:`f`,
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which is then squashed through a link function to obtain the probabilistic
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classification. The latent function :math:`f` is a so-called nuisance function,
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whose values are not observed and are not relevant by themselves.
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Its purpose is to allow a convenient formulation of the model, and :math:`f`
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is removed (integrated out) during prediction. GaussianProcessClassifier
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implements the logistic link function, for which the integral cannot be
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computed analytically but is easily approximated in the binary case.
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In contrast to the regression setting, the posterior of the latent function
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:math:`f` is not Gaussian even for a GP prior since a Gaussian likelihood is
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inappropriate for discrete class labels. Rather, a non-Gaussian likelihood
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corresponding to the logistic link function (logit) is used.
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GaussianProcessClassifier approximates the non-Gaussian posterior with a
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Gaussian based on the Laplace approximation. More details can be found in
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Chapter 3 of [RW2006]_.
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The GP prior mean is assumed to be zero. The prior's
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covariance is specified by passing a :ref:`kernel <gp_kernels>` object. The
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hyperparameters of the kernel are optimized during fitting of
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GaussianProcessRegressor by maximizing the log-marginal-likelihood (LML) based
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on the passed ``optimizer``. As the LML may have multiple local optima, the
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optimizer can be started repeatedly by specifying ``n_restarts_optimizer``. The
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first run is always conducted starting from the initial hyperparameter values
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of the kernel; subsequent runs are conducted from hyperparameter values
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that have been chosen randomly from the range of allowed values.
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If the initial hyperparameters should be kept fixed, `None` can be passed as
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optimizer.
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:class:`GaussianProcessClassifier` supports multi-class classification
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by performing either one-versus-rest or one-versus-one based training and
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prediction. In one-versus-rest, one binary Gaussian process classifier is
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fitted for each class, which is trained to separate this class from the rest.
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In "one_vs_one", one binary Gaussian process classifier is fitted for each pair
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of classes, which is trained to separate these two classes. The predictions of
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these binary predictors are combined into multi-class predictions. See the
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section on :ref:`multi-class classification <multiclass>` for more details.
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In the case of Gaussian process classification, "one_vs_one" might be
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computationally cheaper since it has to solve many problems involving only a
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subset of the whole training set rather than fewer problems on the whole
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dataset. Since Gaussian process classification scales cubically with the size
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of the dataset, this might be considerably faster. However, note that
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"one_vs_one" does not support predicting probability estimates but only plain
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predictions. Moreover, note that :class:`GaussianProcessClassifier` does not
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(yet) implement a true multi-class Laplace approximation internally, but
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as discussed above is based on solving several binary classification tasks
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internally, which are combined using one-versus-rest or one-versus-one.
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GPC examples
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============
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Probabilistic predictions with GPC
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----------------------------------
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This example illustrates the predicted probability of GPC for an RBF kernel
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with different choices of the hyperparameters. The first figure shows the
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predicted probability of GPC with arbitrarily chosen hyperparameters and with
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the hyperparameters corresponding to the maximum log-marginal-likelihood (LML).
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While the hyperparameters chosen by optimizing LML have a considerably larger
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LML, they perform slightly worse according to the log-loss on test data. The
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figure shows that this is because they exhibit a steep change of the class
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probabilities at the class boundaries (which is good) but have predicted
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probabilities close to 0.5 far away from the class boundaries (which is bad)
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This undesirable effect is caused by the Laplace approximation used
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internally by GPC.
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The second figure shows the log-marginal-likelihood for different choices of
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the kernel's hyperparameters, highlighting the two choices of the
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hyperparameters used in the first figure by black dots.
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.. figure:: ../auto_examples/gaussian_process/images/sphx_glr_plot_gpc_001.png
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:target: ../auto_examples/gaussian_process/plot_gpc.html
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:align: center
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.. figure:: ../auto_examples/gaussian_process/images/sphx_glr_plot_gpc_002.png
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:target: ../auto_examples/gaussian_process/plot_gpc.html
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:align: center
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Illustration of GPC on the XOR dataset
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--------------------------------------
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.. currentmodule:: sklearn.gaussian_process.kernels
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This example illustrates GPC on XOR data. Compared are a stationary, isotropic
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kernel (:class:`RBF`) and a non-stationary kernel (:class:`DotProduct`). On
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this particular dataset, the :class:`DotProduct` kernel obtains considerably
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better results because the class-boundaries are linear and coincide with the
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coordinate axes. In practice, however, stationary kernels such as :class:`RBF`
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often obtain better results.
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.. figure:: ../auto_examples/gaussian_process/images/sphx_glr_plot_gpc_xor_001.png
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:target: ../auto_examples/gaussian_process/plot_gpc_xor.html
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:align: center
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.. currentmodule:: sklearn.gaussian_process
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Gaussian process classification (GPC) on iris dataset
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-----------------------------------------------------
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This example illustrates the predicted probability of GPC for an isotropic
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and anisotropic RBF kernel on a two-dimensional version for the iris-dataset.
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This illustrates the applicability of GPC to non-binary classification.
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The anisotropic RBF kernel obtains slightly higher log-marginal-likelihood by
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assigning different length-scales to the two feature dimensions.
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.. figure:: ../auto_examples/gaussian_process/images/sphx_glr_plot_gpc_iris_001.png
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:target: ../auto_examples/gaussian_process/plot_gpc_iris.html
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:align: center
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.. _gp_kernels:
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Kernels for Gaussian Processes
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==============================
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.. currentmodule:: sklearn.gaussian_process.kernels
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Kernels (also called "covariance functions" in the context of GPs) are a crucial
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ingredient of GPs which determine the shape of prior and posterior of the GP.
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They encode the assumptions on the function being learned by defining the "similarity"
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of two datapoints combined with the assumption that similar datapoints should
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have similar target values. Two categories of kernels can be distinguished:
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stationary kernels depend only on the distance of two datapoints and not on their
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absolute values :math:`k(x_i, x_j)= k(d(x_i, x_j))` and are thus invariant to
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translations in the input space, while non-stationary kernels
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depend also on the specific values of the datapoints. Stationary kernels can further
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be subdivided into isotropic and anisotropic kernels, where isotropic kernels are
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also invariant to rotations in the input space. For more details, we refer to
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Chapter 4 of [RW2006]_. For guidance on how to best combine different kernels,
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we refer to [Duv2014]_.
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.. dropdown:: Gaussian Process Kernel API
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The main usage of a :class:`Kernel` is to compute the GP's covariance between
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datapoints. For this, the method ``__call__`` of the kernel can be called. This
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method can either be used to compute the "auto-covariance" of all pairs of
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datapoints in a 2d array X, or the "cross-covariance" of all combinations
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of datapoints of a 2d array X with datapoints in a 2d array Y. The following
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identity holds true for all kernels k (except for the :class:`WhiteKernel`):
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``k(X) == K(X, Y=X)``
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If only the diagonal of the auto-covariance is being used, the method ``diag()``
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of a kernel can be called, which is more computationally efficient than the
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equivalent call to ``__call__``: ``np.diag(k(X, X)) == k.diag(X)``
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Kernels are parameterized by a vector :math:`\theta` of hyperparameters. These
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hyperparameters can for instance control length-scales or periodicity of a
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kernel (see below). All kernels support computing analytic gradients
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of the kernel's auto-covariance with respect to :math:`log(\theta)` via setting
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``eval_gradient=True`` in the ``__call__`` method.
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That is, a ``(len(X), len(X), len(theta))`` array is returned where the entry
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``[i, j, l]`` contains :math:`\frac{\partial k_\theta(x_i, x_j)}{\partial log(\theta_l)}`.
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This gradient is used by the Gaussian process (both regressor and classifier)
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in computing the gradient of the log-marginal-likelihood, which in turn is used
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to determine the value of :math:`\theta`, which maximizes the log-marginal-likelihood,
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via gradient ascent. For each hyperparameter, the initial value and the
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bounds need to be specified when creating an instance of the kernel. The
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current value of :math:`\theta` can be get and set via the property
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``theta`` of the kernel object. Moreover, the bounds of the hyperparameters can be
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accessed by the property ``bounds`` of the kernel. Note that both properties
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(theta and bounds) return log-transformed values of the internally used values
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since those are typically more amenable to gradient-based optimization.
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The specification of each hyperparameter is stored in the form of an instance of
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:class:`Hyperparameter` in the respective kernel. Note that a kernel using a
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hyperparameter with name "x" must have the attributes self.x and self.x_bounds.
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The abstract base class for all kernels is :class:`Kernel`. Kernel implements a
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similar interface as :class:`~sklearn.base.BaseEstimator`, providing the
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methods ``get_params()``, ``set_params()``, and ``clone()``. This allows
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setting kernel values also via meta-estimators such as
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:class:`~sklearn.pipeline.Pipeline` or
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:class:`~sklearn.model_selection.GridSearchCV`. Note that due to the nested
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structure of kernels (by applying kernel operators, see below), the names of
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kernel parameters might become relatively complicated. In general, for a binary
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kernel operator, parameters of the left operand are prefixed with ``k1__`` and
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parameters of the right operand with ``k2__``. An additional convenience method
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is ``clone_with_theta(theta)``, which returns a cloned version of the kernel
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but with the hyperparameters set to ``theta``. An illustrative example:
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>>> from sklearn.gaussian_process.kernels import ConstantKernel, RBF
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>>> kernel = ConstantKernel(constant_value=1.0, constant_value_bounds=(0.0, 10.0)) * RBF(length_scale=0.5, length_scale_bounds=(0.0, 10.0)) + RBF(length_scale=2.0, length_scale_bounds=(0.0, 10.0))
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>>> for hyperparameter in kernel.hyperparameters: print(hyperparameter)
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Hyperparameter(name='k1__k1__constant_value', value_type='numeric', bounds=array([[ 0., 10.]]), n_elements=1, fixed=False)
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Hyperparameter(name='k1__k2__length_scale', value_type='numeric', bounds=array([[ 0., 10.]]), n_elements=1, fixed=False)
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Hyperparameter(name='k2__length_scale', value_type='numeric', bounds=array([[ 0., 10.]]), n_elements=1, fixed=False)
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>>> params = kernel.get_params()
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>>> for key in sorted(params): print("%s : %s" % (key, params[key]))
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k1 : 1**2 * RBF(length_scale=0.5)
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k1__k1 : 1**2
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k1__k1__constant_value : 1.0
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k1__k1__constant_value_bounds : (0.0, 10.0)
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k1__k2 : RBF(length_scale=0.5)
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k1__k2__length_scale : 0.5
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k1__k2__length_scale_bounds : (0.0, 10.0)
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k2 : RBF(length_scale=2)
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k2__length_scale : 2.0
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k2__length_scale_bounds : (0.0, 10.0)
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>>> print(kernel.theta) # Note: log-transformed
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[ 0. -0.69314718 0.69314718]
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>>> print(kernel.bounds) # Note: log-transformed
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[[ -inf 2.30258509]
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[ -inf 2.30258509]
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[ -inf 2.30258509]]
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All Gaussian process kernels are interoperable with :mod:`sklearn.metrics.pairwise`
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and vice versa: instances of subclasses of :class:`Kernel` can be passed as
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``metric`` to ``pairwise_kernels`` from :mod:`sklearn.metrics.pairwise`. Moreover,
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kernel functions from pairwise can be used as GP kernels by using the wrapper
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class :class:`PairwiseKernel`. The only caveat is that the gradient of
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the hyperparameters is not analytic but numeric and all those kernels support
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only isotropic distances. The parameter ``gamma`` is considered to be a
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hyperparameter and may be optimized. The other kernel parameters are set
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directly at initialization and are kept fixed.
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Basic kernels
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-------------
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The :class:`ConstantKernel` kernel can be used as part of a :class:`Product`
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kernel where it scales the magnitude of the other factor (kernel) or as part
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of a :class:`Sum` kernel, where it modifies the mean of the Gaussian process.
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It depends on a parameter :math:`constant\_value`. It is defined as:
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.. math::
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k(x_i, x_j) = constant\_value \;\forall\; x_1, x_2
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The main use-case of the :class:`WhiteKernel` kernel is as part of a
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sum-kernel where it explains the noise-component of the signal. Tuning its
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parameter :math:`noise\_level` corresponds to estimating the noise-level.
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It is defined as:
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.. math::
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k(x_i, x_j) = noise\_level \text{ if } x_i == x_j \text{ else } 0
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Kernel operators
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----------------
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Kernel operators take one or two base kernels and combine them into a new
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kernel. The :class:`Sum` kernel takes two kernels :math:`k_1` and :math:`k_2`
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and combines them via :math:`k_{sum}(X, Y) = k_1(X, Y) + k_2(X, Y)`.
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The :class:`Product` kernel takes two kernels :math:`k_1` and :math:`k_2`
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and combines them via :math:`k_{product}(X, Y) = k_1(X, Y) * k_2(X, Y)`.
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The :class:`Exponentiation` kernel takes one base kernel and a scalar parameter
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:math:`p` and combines them via
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:math:`k_{exp}(X, Y) = k(X, Y)^p`.
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Note that magic methods ``__add__``, ``__mul___`` and ``__pow__`` are
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overridden on the Kernel objects, so one can use e.g. ``RBF() + RBF()`` as
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a shortcut for ``Sum(RBF(), RBF())``.
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Radial basis function (RBF) kernel
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----------------------------------
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The :class:`RBF` kernel is a stationary kernel. It is also known as the "squared
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exponential" kernel. It is parameterized by a length-scale parameter :math:`l>0`, which
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can either be a scalar (isotropic variant of the kernel) or a vector with the same
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number of dimensions as the inputs :math:`x` (anisotropic variant of the kernel).
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The kernel is given by:
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.. math::
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k(x_i, x_j) = \text{exp}\left(- \frac{d(x_i, x_j)^2}{2l^2} \right)
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where :math:`d(\cdot, \cdot)` is the Euclidean distance.
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This kernel is infinitely differentiable, which implies that GPs with this
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kernel as covariance function have mean square derivatives of all orders, and are thus
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very smooth. The prior and posterior of a GP resulting from an RBF kernel are shown in
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the following figure:
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.. figure:: ../auto_examples/gaussian_process/images/sphx_glr_plot_gpr_prior_posterior_001.png
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:target: ../auto_examples/gaussian_process/plot_gpr_prior_posterior.html
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:align: center
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Matérn kernel
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-------------
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The :class:`Matern` kernel is a stationary kernel and a generalization of the
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:class:`RBF` kernel. It has an additional parameter :math:`\nu` which controls
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the smoothness of the resulting function. It is parameterized by a length-scale parameter :math:`l>0`, which can either be a scalar (isotropic variant of the kernel) or a vector with the same number of dimensions as the inputs :math:`x` (anisotropic variant of the kernel).
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.. dropdown:: Mathematical implementation of Matérn kernel
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The kernel is given by:
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.. math::
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k(x_i, x_j) = \frac{1}{\Gamma(\nu)2^{\nu-1}}\Bigg(\frac{\sqrt{2\nu}}{l} d(x_i , x_j )\Bigg)^\nu K_\nu\Bigg(\frac{\sqrt{2\nu}}{l} d(x_i , x_j )\Bigg),
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where :math:`d(\cdot,\cdot)` is the Euclidean distance, :math:`K_\nu(\cdot)` is a modified Bessel function and :math:`\Gamma(\cdot)` is the gamma function.
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As :math:`\nu\rightarrow\infty`, the Matérn kernel converges to the RBF kernel.
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When :math:`\nu = 1/2`, the Matérn kernel becomes identical to the absolute
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exponential kernel, i.e.,
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.. math::
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k(x_i, x_j) = \exp \Bigg(- \frac{1}{l} d(x_i , x_j ) \Bigg) \quad \quad \nu= \tfrac{1}{2}
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In particular, :math:`\nu = 3/2`:
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.. math::
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k(x_i, x_j) = \Bigg(1 + \frac{\sqrt{3}}{l} d(x_i , x_j )\Bigg) \exp \Bigg(-\frac{\sqrt{3}}{l} d(x_i , x_j ) \Bigg) \quad \quad \nu= \tfrac{3}{2}
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and :math:`\nu = 5/2`:
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.. math::
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k(x_i, x_j) = \Bigg(1 + \frac{\sqrt{5}}{l} d(x_i , x_j ) +\frac{5}{3l} d(x_i , x_j )^2 \Bigg) \exp \Bigg(-\frac{\sqrt{5}}{l} d(x_i , x_j ) \Bigg) \quad \quad \nu= \tfrac{5}{2}
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are popular choices for learning functions that are not infinitely
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differentiable (as assumed by the RBF kernel) but at least once (:math:`\nu =
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3/2`) or twice differentiable (:math:`\nu = 5/2`).
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The flexibility of controlling the smoothness of the learned function via :math:`\nu`
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allows adapting to the properties of the true underlying functional relation.
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The prior and posterior of a GP resulting from a Matérn kernel are shown in
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the following figure:
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.. figure:: ../auto_examples/gaussian_process/images/sphx_glr_plot_gpr_prior_posterior_005.png
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:target: ../auto_examples/gaussian_process/plot_gpr_prior_posterior.html
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:align: center
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See [RW2006]_, pp84 for further details regarding the
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different variants of the Matérn kernel.
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Rational quadratic kernel
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-------------------------
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The :class:`RationalQuadratic` kernel can be seen as a scale mixture (an infinite sum)
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of :class:`RBF` kernels with different characteristic length-scales. It is parameterized
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by a length-scale parameter :math:`l>0` and a scale mixture parameter :math:`\alpha>0`
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Only the isotropic variant where :math:`l` is a scalar is supported at the moment.
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The kernel is given by:
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.. math::
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k(x_i, x_j) = \left(1 + \frac{d(x_i, x_j)^2}{2\alpha l^2}\right)^{-\alpha}
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The prior and posterior of a GP resulting from a :class:`RationalQuadratic` kernel are shown in
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the following figure:
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.. figure:: ../auto_examples/gaussian_process/images/sphx_glr_plot_gpr_prior_posterior_002.png
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:target: ../auto_examples/gaussian_process/plot_gpr_prior_posterior.html
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:align: center
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Exp-Sine-Squared kernel
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-----------------------
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The :class:`ExpSineSquared` kernel allows modeling periodic functions.
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It is parameterized by a length-scale parameter :math:`l>0` and a periodicity parameter
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:math:`p>0`. Only the isotropic variant where :math:`l` is a scalar is supported at the moment.
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The kernel is given by:
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.. math::
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k(x_i, x_j) = \text{exp}\left(- \frac{ 2\sin^2(\pi d(x_i, x_j) / p) }{ l^ 2} \right)
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The prior and posterior of a GP resulting from an ExpSineSquared kernel are shown in
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the following figure:
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.. figure:: ../auto_examples/gaussian_process/images/sphx_glr_plot_gpr_prior_posterior_003.png
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:target: ../auto_examples/gaussian_process/plot_gpr_prior_posterior.html
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:align: center
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Dot-Product kernel
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------------------
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The :class:`DotProduct` kernel is non-stationary and can be obtained from linear regression
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by putting :math:`N(0, 1)` priors on the coefficients of :math:`x_d (d = 1, . . . , D)` and
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a prior of :math:`N(0, \sigma_0^2)` on the bias. The :class:`DotProduct` kernel is invariant to a rotation
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of the coordinates about the origin, but not translations.
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It is parameterized by a parameter :math:`\sigma_0^2`. For :math:`\sigma_0^2 = 0`, the kernel
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is called the homogeneous linear kernel, otherwise it is inhomogeneous. The kernel is given by
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.. math::
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k(x_i, x_j) = \sigma_0 ^ 2 + x_i \cdot x_j
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The :class:`DotProduct` kernel is commonly combined with exponentiation. An example with exponent 2 is
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shown in the following figure:
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.. figure:: ../auto_examples/gaussian_process/images/sphx_glr_plot_gpr_prior_posterior_004.png
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:target: ../auto_examples/gaussian_process/plot_gpr_prior_posterior.html
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:align: center
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References
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----------
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.. [RW2006] `Carl E. Rasmussen and Christopher K.I. Williams,
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"Gaussian Processes for Machine Learning",
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MIT Press 2006 <https://www.gaussianprocess.org/gpml/chapters/RW.pdf>`_
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.. [Duv2014] `David Duvenaud, "The Kernel Cookbook: Advice on Covariance functions", 2014
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<https://www.cs.toronto.edu/~duvenaud/cookbook/>`_
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.. currentmodule:: sklearn.gaussian_process
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