.. index:: single: gaussian_process_regression .. _gaussian_process_regression/0: .. rst-class:: right **object** ``gaussian_process_regression`` =============================== Gaussian process regression regressor supporting continuous and mixed-feature datasets using an exact mixed Gaussian process with posterior uncertainty estimates. Learns from a dataset object implementing the ``regression_dataset_protocol`` protocol and returns a regressor term that can be used for prediction, predictive-distribution queries, and export as predicate clauses. | **Availability:** | ``logtalk_load(gaussian_process_regression(loader))`` | **Author:** Paulo Moura | **Version:** 1:0:0 | **Date:** 2026-05-05 | **Compilation flags:** | ``static, context_switching_calls`` | **Imports:** | ``public`` :ref:`regressor_common ` | **Uses:** | :ref:`format ` | :ref:`linear_algebra ` | :ref:`list ` | :ref:`numberlist ` | :ref:`population ` | :ref:`type ` | **Remarks:** | (none) | **Inherited public predicates:** |  :ref:`options_protocol/0::check_option/1`  :ref:`options_protocol/0::check_options/1`  :ref:`regressor_protocol/0::check_regressor/1`  :ref:`options_protocol/0::default_option/1`  :ref:`options_protocol/0::default_options/1`  :ref:`regressor_protocol/0::diagnostic/2`  :ref:`regressor_protocol/0::diagnostics/2`  :ref:`regressor_protocol/0::export_to_clauses/4`  :ref:`regressor_protocol/0::export_to_file/4`  :ref:`regressor_protocol/0::learn/2`  :ref:`regressor_protocol/0::learn/3`  :ref:`options_protocol/0::option/2`  :ref:`options_protocol/0::option/3`  :ref:`regressor_protocol/0::predict/3`  :ref:`regressor_protocol/0::print_regressor/1`  :ref:`regressor_protocol/0::regressor_options/2`  :ref:`options_protocol/0::valid_option/1`  :ref:`options_protocol/0::valid_options/1`  :ref:`regressor_protocol/0::valid_regressor/1`   .. contents:: :local: :backlinks: top Public predicates ----------------- .. index:: predict_distribution/3 .. _gaussian_process_regression/0::predict_distribution/3: ``predict_distribution/3`` ^^^^^^^^^^^^^^^^^^^^^^^^^^ Predicts the posterior predictive Gaussian distribution for a new instance using the learned regressor. The returned term has the shape ``gaussian(Mean, Variance)`` where ``Variance`` includes the learned observation noise variance. | **Compilation flags:** | ``static`` | **Template:** | ``predict_distribution(Regressor,Instance,Distribution)`` | **Mode and number of proofs:** | ``predict_distribution(+compound,+list,-compound)`` - ``one`` ------------ Protected predicates -------------------- (no local declarations; see entity ancestors if any) Private predicates ------------------ (no local declarations; see entity ancestors if any) Operators --------- (none) .. seealso:: :ref:`linear_regression `, :ref:`ridge_regression `, :ref:`lasso_regression `, :ref:`elastic_net_regression `, :ref:`regression_tree `, :ref:`random_forest_regression `