lightgbm_regressor ============================================================================== .. py:module:: evalml.pipelines.components.estimators.regressors.lightgbm_regressor .. autoapi-nested-parse:: LightGBM Regressor. Module Contents --------------- Classes Summary ~~~~~~~~~~~~~~~ .. autoapisummary:: evalml.pipelines.components.estimators.regressors.lightgbm_regressor.LightGBMRegressor Contents ~~~~~~~~~~~~~~~~~~~ .. py:class:: LightGBMRegressor(boosting_type='gbdt', learning_rate=0.1, n_estimators=20, max_depth=0, num_leaves=31, min_child_samples=20, bagging_fraction=0.9, bagging_freq=0, n_jobs=-1, random_seed=0, **kwargs) LightGBM Regressor. :param boosting_type: Type of boosting to use. Defaults to "gbdt". - 'gbdt' uses traditional Gradient Boosting Decision Tree - "dart", uses Dropouts meet Multiple Additive Regression Trees - "goss", uses Gradient-based One-Side Sampling - "rf", uses Random Forest :type boosting_type: string :param learning_rate: Boosting learning rate. Defaults to 0.1. :type learning_rate: float :param n_estimators: Number of boosted trees to fit. Defaults to 100. :type n_estimators: int :param max_depth: Maximum tree depth for base learners, <=0 means no limit. Defaults to 0. :type max_depth: int :param num_leaves: Maximum tree leaves for base learners. Defaults to 31. :type num_leaves: int :param min_child_samples: Minimum number of data needed in a child (leaf). Defaults to 20. :type min_child_samples: int :param bagging_fraction: LightGBM will randomly select a subset of features on each iteration (tree) without resampling if this is smaller than 1.0. For example, if set to 0.8, LightGBM will select 80% of features before training each tree. This can be used to speed up training and deal with overfitting. Defaults to 0.9. :type bagging_fraction: float :param bagging_freq: Frequency for bagging. 0 means bagging is disabled. k means perform bagging at every k iteration. Every k-th iteration, LightGBM will randomly select bagging_fraction * 100 % of the data to use for the next k iterations. Defaults to 0. :type bagging_freq: int :param n_jobs: Number of threads to run in parallel. -1 uses all threads. Defaults to -1. :type n_jobs: int or None :param random_seed: Seed for the random number generator. Defaults to 0. :type random_seed: int **Attributes** .. list-table:: :widths: 15 85 :header-rows: 0 * - **hyperparameter_ranges** - { "learning_rate": Real(0.000001, 1), "boosting_type": ["gbdt", "dart", "goss", "rf"], "n_estimators": Integer(10, 100), "max_depth": Integer(0, 10), "num_leaves": Integer(2, 100), "min_child_samples": Integer(1, 100), "bagging_fraction": Real(0.000001, 1), "bagging_freq": Integer(0, 1),} * - **model_family** - ModelFamily.LIGHTGBM * - **modifies_features** - True * - **modifies_target** - False * - **name** - LightGBM Regressor * - **SEED_MAX** - SEED_BOUNDS.max_bound * - **SEED_MIN** - 0 * - **supported_problem_types** - [ProblemTypes.REGRESSION] * - **training_only** - False **Methods** .. autoapisummary:: :nosignatures: evalml.pipelines.components.estimators.regressors.lightgbm_regressor.LightGBMRegressor.clone evalml.pipelines.components.estimators.regressors.lightgbm_regressor.LightGBMRegressor.default_parameters evalml.pipelines.components.estimators.regressors.lightgbm_regressor.LightGBMRegressor.describe evalml.pipelines.components.estimators.regressors.lightgbm_regressor.LightGBMRegressor.feature_importance evalml.pipelines.components.estimators.regressors.lightgbm_regressor.LightGBMRegressor.fit evalml.pipelines.components.estimators.regressors.lightgbm_regressor.LightGBMRegressor.load evalml.pipelines.components.estimators.regressors.lightgbm_regressor.LightGBMRegressor.needs_fitting evalml.pipelines.components.estimators.regressors.lightgbm_regressor.LightGBMRegressor.parameters evalml.pipelines.components.estimators.regressors.lightgbm_regressor.LightGBMRegressor.predict evalml.pipelines.components.estimators.regressors.lightgbm_regressor.LightGBMRegressor.predict_proba evalml.pipelines.components.estimators.regressors.lightgbm_regressor.LightGBMRegressor.save .. py:method:: clone(self) Constructs a new component with the same parameters and random state. :returns: A new instance of this component with identical parameters and random state. .. py:method:: default_parameters(cls) Returns the default parameters for this component. Our convention is that Component.default_parameters == Component().parameters. :returns: Default parameters for this component. :rtype: dict .. py:method:: describe(self, print_name=False, return_dict=False) Describe a component and its parameters. :param print_name: whether to print name of component :type print_name: bool, optional :param return_dict: whether to return description as dictionary in the format {"name": name, "parameters": parameters} :type return_dict: bool, optional :returns: Returns dictionary if return_dict is True, else None. :rtype: None or dict .. py:method:: feature_importance(self) :property: Returns importance associated with each feature. :returns: Importance associated with each feature. :rtype: np.ndarray :raises MethodPropertyNotFoundError: If estimator does not have a feature_importance method or a component_obj that implements feature_importance. .. py:method:: fit(self, X, y=None) Fits LightGBM regressor to data. :param X: The input training data of shape [n_samples, n_features]. :type X: pd.DataFrame :param y: The target training data of length [n_samples]. :type y: pd.Series :returns: self .. py:method:: load(file_path) :staticmethod: Loads component at file path. :param file_path: Location to load file. :type file_path: str :returns: ComponentBase object .. py:method:: needs_fitting(self) Returns boolean determining if component needs fitting before calling predict, predict_proba, transform, or feature_importances. This can be overridden to False for components that do not need to be fit or whose fit methods do nothing. :returns: True. .. py:method:: parameters(self) :property: Returns the parameters which were used to initialize the component. .. py:method:: predict(self, X) Make predictions using fitted LightGBM regressor. :param X: Data of shape [n_samples, n_features]. :type X: pd.DataFrame :returns: Predicted values. :rtype: pd.Series .. py:method:: predict_proba(self, X) Make probability estimates for labels. :param X: Features. :type X: pd.DataFrame :returns: Probability estimates. :rtype: pd.Series :raises MethodPropertyNotFoundError: If estimator does not have a predict_proba method or a component_obj that implements predict_proba. .. py:method:: save(self, file_path, pickle_protocol=cloudpickle.DEFAULT_PROTOCOL) Saves component at file path. :param file_path: Location to save file. :type file_path: str :param pickle_protocol: The pickle data stream format. :type pickle_protocol: int