engine.py 27.1 KB
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# coding: utf-8
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"""Library with training routines of LightGBM."""
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import collections
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import copy
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from operator import attrgetter
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from pathlib import Path
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from typing import Any, Callable, Dict, List, Optional, Tuple, Union
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import numpy as np
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from . import callback
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from .basic import (Booster, Dataset, LightGBMError, _ArrayLike, _choose_param_value, _ConfigAliases, _InnerPredictor,
                    _log_warning)
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from .compat import SKLEARN_INSTALLED, _LGBMGroupKFold, _LGBMStratifiedKFold
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_LGBM_CustomObjectiveFunction = Callable[
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    [np.ndarray, Dataset],
    Tuple[_ArrayLike, _ArrayLike]
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]
_LGBM_CustomMetricFunction = Callable[
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    [np.ndarray, Dataset],
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    Tuple[str, float, bool]
]
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def train(
    params: Dict[str, Any],
    train_set: Dataset,
    num_boost_round: int = 100,
    valid_sets: Optional[List[Dataset]] = None,
    valid_names: Optional[List[str]] = None,
    fobj: Optional[_LGBM_CustomObjectiveFunction] = None,
    feval: Optional[Union[_LGBM_CustomMetricFunction, List[_LGBM_CustomMetricFunction]]] = None,
    init_model: Optional[Union[str, Path, Booster]] = None,
    feature_name: Union[List[str], str] = 'auto',
    categorical_feature: Union[List[str], List[int], str] = 'auto',
    keep_training_booster: bool = False,
    callbacks: Optional[List[Callable]] = None
) -> Booster:
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    """Perform the training with given parameters.
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    Parameters
    ----------
    params : dict
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        Parameters for training.
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    train_set : Dataset
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        Data to be trained on.
    num_boost_round : int, optional (default=100)
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        Number of boosting iterations.
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    valid_sets : list of Dataset, or None, optional (default=None)
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        List of data to be evaluated on during training.
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    valid_names : list of str, or None, optional (default=None)
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        Names of ``valid_sets``.
    fobj : callable or None, optional (default=None)
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        Customized objective function.
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        Should accept two parameters: preds, train_data,
        and return (grad, hess).

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            preds : numpy 1-D array
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                The predicted values.
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                Predicted values are returned before any transformation,
                e.g. they are raw margin instead of probability of positive class for binary task.
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            train_data : Dataset
                The training dataset.
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            grad : list, numpy 1-D array or pandas Series
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                The value of the first order derivative (gradient) of the loss
                with respect to the elements of preds for each sample point.
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            hess : list, numpy 1-D array or pandas Series
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                The value of the second order derivative (Hessian) of the loss
                with respect to the elements of preds for each sample point.
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        For multi-class task, the preds is group by class_id first, then group by row_id.
        If you want to get i-th row preds in j-th class, the access way is score[j * num_data + i]
        and you should group grad and hess in this way as well.

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    feval : callable, list of callable, or None, optional (default=None)
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        Customized evaluation function.
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        Each evaluation function should accept two parameters: preds, eval_data,
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        and return (eval_name, eval_result, is_higher_better) or list of such tuples.
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            preds : numpy 1-D array
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                The predicted values.
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                If ``fobj`` is specified, predicted values are returned before any transformation,
                e.g. they are raw margin instead of probability of positive class for binary task in this case.
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            eval_data : Dataset
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                The training dataset.
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            eval_name : str
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                The name of evaluation function (without whitespaces).
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            eval_result : float
                The eval result.
            is_higher_better : bool
                Is eval result higher better, e.g. AUC is ``is_higher_better``.

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        For multi-class task, the preds is group by class_id first, then group by row_id.
        If you want to get i-th row preds in j-th class, the access way is preds[j * num_data + i].
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        To ignore the default metric corresponding to the used objective,
        set the ``metric`` parameter to the string ``"None"`` in ``params``.
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    init_model : str, pathlib.Path, Booster or None, optional (default=None)
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        Filename of LightGBM model or Booster instance used for continue training.
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    feature_name : list of str, or 'auto', optional (default="auto")
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        Feature names.
        If 'auto' and data is pandas DataFrame, data columns names are used.
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    categorical_feature : list of str or int, or 'auto', optional (default="auto")
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        Categorical features.
        If list of int, interpreted as indices.
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        If list of str, interpreted as feature names (need to specify ``feature_name`` as well).
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        If 'auto' and data is pandas DataFrame, pandas unordered categorical columns are used.
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        All values in categorical features should be less than int32 max value (2147483647).
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        Large values could be memory consuming. Consider using consecutive integers starting from zero.
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        All negative values in categorical features will be treated as missing values.
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        The output cannot be monotonically constrained with respect to a categorical feature.
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    keep_training_booster : bool, optional (default=False)
        Whether the returned Booster will be used to keep training.
        If False, the returned value will be converted into _InnerPredictor before returning.
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        This means you won't be able to use ``eval``, ``eval_train`` or ``eval_valid`` methods of the returned Booster.
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        When your model is very large and cause the memory error,
        you can try to set this param to ``True`` to avoid the model conversion performed during the internal call of ``model_to_string``.
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        You can still use _InnerPredictor as ``init_model`` for future continue training.
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    callbacks : list of callable, or None, optional (default=None)
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        List of callback functions that are applied at each iteration.
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        See Callbacks in Python API for more information.
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    Returns
    -------
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    booster : Booster
        The trained Booster model.
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    """
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    # create predictor first
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    params = copy.deepcopy(params)
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    if fobj is not None:
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        for obj_alias in _ConfigAliases.get("objective"):
            params.pop(obj_alias, None)
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        params['objective'] = 'none'
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    for alias in _ConfigAliases.get("num_iterations"):
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        if alias in params:
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            num_boost_round = params.pop(alias)
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            _log_warning(f"Found `{alias}` in params. Will use it instead of argument")
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    params["num_iterations"] = num_boost_round
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    # setting early stopping via global params should be possible
    params = _choose_param_value(
        main_param_name="early_stopping_round",
        params=params,
        default_value=None
    )
    if params["early_stopping_round"] is None:
        params.pop("early_stopping_round")
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    first_metric_only = params.get('first_metric_only', False)
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    if num_boost_round <= 0:
        raise ValueError("num_boost_round should be greater than zero.")
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    predictor: Optional[_InnerPredictor] = None
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    if isinstance(init_model, (str, Path)):
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        predictor = _InnerPredictor(model_file=init_model, pred_parameter=params)
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    elif isinstance(init_model, Booster):
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        predictor = init_model._to_predictor(dict(init_model.params, **params))
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    init_iteration = predictor.num_total_iteration if predictor is not None else 0
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    # check dataset
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    if not isinstance(train_set, Dataset):
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        raise TypeError("Training only accepts Dataset object")
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    train_set._update_params(params) \
             ._set_predictor(predictor) \
             .set_feature_name(feature_name) \
             .set_categorical_feature(categorical_feature)
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    is_valid_contain_train = False
    train_data_name = "training"
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    reduced_valid_sets = []
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    name_valid_sets = []
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    if valid_sets is not None:
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        if isinstance(valid_sets, Dataset):
            valid_sets = [valid_sets]
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        if isinstance(valid_names, str):
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            valid_names = [valid_names]
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        for i, valid_data in enumerate(valid_sets):
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            # reduce cost for prediction training data
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            if valid_data is train_set:
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                is_valid_contain_train = True
                if valid_names is not None:
                    train_data_name = valid_names[i]
                continue
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            if not isinstance(valid_data, Dataset):
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                raise TypeError("Training only accepts Dataset object")
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            reduced_valid_sets.append(valid_data._update_params(params).set_reference(train_set))
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            if valid_names is not None and len(valid_names) > i:
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                name_valid_sets.append(valid_names[i])
            else:
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                name_valid_sets.append(f'valid_{i}')
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    # process callbacks
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    if callbacks is None:
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        callbacks_set = set()
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    else:
        for i, cb in enumerate(callbacks):
            cb.__dict__.setdefault('order', i - len(callbacks))
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        callbacks_set = set(callbacks)
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    if "early_stopping_round" in params:
        callbacks_set.add(
            callback.early_stopping(
                stopping_rounds=params["early_stopping_round"],
                first_metric_only=first_metric_only,
                verbose=_choose_param_value(
                    main_param_name="verbosity",
                    params=params,
                    default_value=1
                ).pop("verbosity") > 0
            )
        )
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    callbacks_before_iter_set = {cb for cb in callbacks_set if getattr(cb, 'before_iteration', False)}
    callbacks_after_iter_set = callbacks_set - callbacks_before_iter_set
    callbacks_before_iter = sorted(callbacks_before_iter_set, key=attrgetter('order'))
    callbacks_after_iter = sorted(callbacks_after_iter_set, key=attrgetter('order'))
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    # construct booster
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    try:
        booster = Booster(params=params, train_set=train_set)
        if is_valid_contain_train:
            booster.set_train_data_name(train_data_name)
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        for valid_set, name_valid_set in zip(reduced_valid_sets, name_valid_sets):
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            booster.add_valid(valid_set, name_valid_set)
    finally:
        train_set._reverse_update_params()
        for valid_set in reduced_valid_sets:
            valid_set._reverse_update_params()
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    booster.best_iteration = 0
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    # start training
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    for i in range(init_iteration, init_iteration + num_boost_round):
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        for cb in callbacks_before_iter:
            cb(callback.CallbackEnv(model=booster,
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                                    params=params,
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                                    iteration=i,
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                                    begin_iteration=init_iteration,
                                    end_iteration=init_iteration + num_boost_round,
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                                    evaluation_result_list=None))

        booster.update(fobj=fobj)

        evaluation_result_list = []
        # check evaluation result.
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        if valid_sets is not None:
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            if is_valid_contain_train:
                evaluation_result_list.extend(booster.eval_train(feval))
            evaluation_result_list.extend(booster.eval_valid(feval))
        try:
            for cb in callbacks_after_iter:
                cb(callback.CallbackEnv(model=booster,
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                                        params=params,
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                                        iteration=i,
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                                        begin_iteration=init_iteration,
                                        end_iteration=init_iteration + num_boost_round,
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                                        evaluation_result_list=evaluation_result_list))
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        except callback.EarlyStopException as earlyStopException:
            booster.best_iteration = earlyStopException.best_iteration + 1
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            evaluation_result_list = earlyStopException.best_score
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            break
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    booster.best_score = collections.defaultdict(collections.OrderedDict)
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    for dataset_name, eval_name, score, _ in evaluation_result_list:
        booster.best_score[dataset_name][eval_name] = score
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    if not keep_training_booster:
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        booster.model_from_string(booster.model_to_string()).free_dataset()
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    return booster


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class CVBooster:
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    """CVBooster in LightGBM.

    Auxiliary data structure to hold and redirect all boosters of ``cv`` function.
    This class has the same methods as Booster class.
    All method calls are actually performed for underlying Boosters and then all returned results are returned in a list.

    Attributes
    ----------
    boosters : list of Booster
        The list of underlying fitted models.
    best_iteration : int
        The best iteration of fitted model.
    """
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    def __init__(self):
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        """Initialize the CVBooster.

        Generally, no need to instantiate manually.
        """
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        self.boosters = []
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        self.best_iteration = -1
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    def _append(self, booster):
        """Add a booster to CVBooster."""
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        self.boosters.append(booster)

    def __getattr__(self, name):
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        """Redirect methods call of CVBooster."""
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        def handler_function(*args, **kwargs):
            """Call methods with each booster, and concatenate their results."""
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            ret = []
            for booster in self.boosters:
                ret.append(getattr(booster, name)(*args, **kwargs))
            return ret
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        return handler_function
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def _make_n_folds(full_data, folds, nfold, params, seed, fpreproc=None, stratified=True,
                  shuffle=True, eval_train_metric=False):
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    """Make a n-fold list of Booster from random indices."""
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    full_data = full_data.construct()
    num_data = full_data.num_data()
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    if folds is not None:
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        if not hasattr(folds, '__iter__') and not hasattr(folds, 'split'):
            raise AttributeError("folds should be a generator or iterator of (train_idx, test_idx) tuples "
                                 "or scikit-learn splitter object with split method")
        if hasattr(folds, 'split'):
            group_info = full_data.get_group()
            if group_info is not None:
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                group_info = np.array(group_info, dtype=np.int32, copy=False)
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                flatted_group = np.repeat(range(len(group_info)), repeats=group_info)
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            else:
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                flatted_group = np.zeros(num_data, dtype=np.int32)
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            folds = folds.split(X=np.empty(num_data), y=full_data.get_label(), groups=flatted_group)
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    else:
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        if any(params.get(obj_alias, "") in {"lambdarank", "rank_xendcg", "xendcg",
                                             "xe_ndcg", "xe_ndcg_mart", "xendcg_mart"}
               for obj_alias in _ConfigAliases.get("objective")):
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            if not SKLEARN_INSTALLED:
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                raise LightGBMError('scikit-learn is required for ranking cv')
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            # ranking task, split according to groups
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            group_info = np.array(full_data.get_group(), dtype=np.int32, copy=False)
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            flatted_group = np.repeat(range(len(group_info)), repeats=group_info)
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            group_kfold = _LGBMGroupKFold(n_splits=nfold)
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            folds = group_kfold.split(X=np.empty(num_data), groups=flatted_group)
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        elif stratified:
            if not SKLEARN_INSTALLED:
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                raise LightGBMError('scikit-learn is required for stratified cv')
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            skf = _LGBMStratifiedKFold(n_splits=nfold, shuffle=shuffle, random_state=seed)
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            folds = skf.split(X=np.empty(num_data), y=full_data.get_label())
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        else:
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            if shuffle:
                randidx = np.random.RandomState(seed).permutation(num_data)
            else:
                randidx = np.arange(num_data)
            kstep = int(num_data / nfold)
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            test_id = [randidx[i: i + kstep] for i in range(0, num_data, kstep)]
            train_id = [np.concatenate([test_id[i] for i in range(nfold) if k != i]) for k in range(nfold)]
            folds = zip(train_id, test_id)
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    ret = CVBooster()
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    for train_idx, test_idx in folds:
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        train_set = full_data.subset(sorted(train_idx))
        valid_set = full_data.subset(sorted(test_idx))
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        # run preprocessing on the data set if needed
        if fpreproc is not None:
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            train_set, valid_set, tparam = fpreproc(train_set, valid_set, params.copy())
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        else:
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            tparam = params
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        cvbooster = Booster(tparam, train_set)
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        if eval_train_metric:
            cvbooster.add_valid(train_set, 'train')
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        cvbooster.add_valid(valid_set, 'valid')
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        ret._append(cvbooster)
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    return ret

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def _agg_cv_result(raw_results):
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    """Aggregate cross-validation results."""
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    cvmap = collections.OrderedDict()
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    metric_type = {}
    for one_result in raw_results:
        for one_line in one_result:
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            key = f"{one_line[0]} {one_line[1]}"
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            metric_type[key] = one_line[3]
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            cvmap.setdefault(key, [])
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            cvmap[key].append(one_line[2])
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    return [('cv_agg', k, np.mean(v), metric_type[k], np.std(v)) for k, v in cvmap.items()]
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def cv(params, train_set, num_boost_round=100,
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       folds=None, nfold=5, stratified=True, shuffle=True,
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       metrics=None, fobj=None, feval=None, init_model=None,
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       feature_name='auto', categorical_feature='auto',
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       fpreproc=None, seed=0, callbacks=None, eval_train_metric=False,
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       return_cvbooster=False):
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    """Perform the cross-validation with given parameters.
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    Parameters
    ----------
    params : dict
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        Parameters for Booster.
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    train_set : Dataset
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        Data to be trained on.
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    num_boost_round : int, optional (default=100)
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        Number of boosting iterations.
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    folds : generator or iterator of (train_idx, test_idx) tuples, scikit-learn splitter object or None, optional (default=None)
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        If generator or iterator, it should yield the train and test indices for each fold.
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        If object, it should be one of the scikit-learn splitter classes
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        (https://scikit-learn.org/stable/modules/classes.html#splitter-classes)
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        and have ``split`` method.
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        This argument has highest priority over other data split arguments.
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    nfold : int, optional (default=5)
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        Number of folds in CV.
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    stratified : bool, optional (default=True)
        Whether to perform stratified sampling.
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    shuffle : bool, optional (default=True)
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        Whether to shuffle before splitting data.
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    metrics : str, list of str, or None, optional (default=None)
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        Evaluation metrics to be monitored while CV.
        If not None, the metric in ``params`` will be overridden.
    fobj : callable or None, optional (default=None)
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        Customized objective function.
        Should accept two parameters: preds, train_data,
        and return (grad, hess).

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            preds : numpy 1-D array
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                The predicted values.
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                Predicted values are returned before any transformation,
                e.g. they are raw margin instead of probability of positive class for binary task.
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            train_data : Dataset
                The training dataset.
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            grad : list, numpy 1-D array or pandas Series
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                The value of the first order derivative (gradient) of the loss
                with respect to the elements of preds for each sample point.
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            hess : list, numpy 1-D array or pandas Series
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                The value of the second order derivative (Hessian) of the loss
                with respect to the elements of preds for each sample point.
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        For multi-class task, the preds is group by class_id first, then group by row_id.
        If you want to get i-th row preds in j-th class, the access way is score[j * num_data + i]
        and you should group grad and hess in this way as well.

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    feval : callable, list of callable, or None, optional (default=None)
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        Customized evaluation function.
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        Each evaluation function should accept two parameters: preds, train_data,
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        and return (eval_name, eval_result, is_higher_better) or list of such tuples.
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            preds : numpy 1-D array
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                The predicted values.
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                If ``fobj`` is specified, predicted values are returned before any transformation,
                e.g. they are raw margin instead of probability of positive class for binary task in this case.
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            train_data : Dataset
                The training dataset.
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            eval_name : str
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                The name of evaluation function (without whitespace).
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            eval_result : float
                The eval result.
            is_higher_better : bool
                Is eval result higher better, e.g. AUC is ``is_higher_better``.

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        For multi-class task, the preds is group by class_id first, then group by row_id.
        If you want to get i-th row preds in j-th class, the access way is preds[j * num_data + i].
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        To ignore the default metric corresponding to the used objective,
        set ``metrics`` to the string ``"None"``.
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    init_model : str, pathlib.Path, Booster or None, optional (default=None)
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        Filename of LightGBM model or Booster instance used for continue training.
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    feature_name : list of str, or 'auto', optional (default="auto")
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        Feature names.
        If 'auto' and data is pandas DataFrame, data columns names are used.
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    categorical_feature : list of str or int, or 'auto', optional (default="auto")
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        Categorical features.
        If list of int, interpreted as indices.
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        If list of str, interpreted as feature names (need to specify ``feature_name`` as well).
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        If 'auto' and data is pandas DataFrame, pandas unordered categorical columns are used.
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        All values in categorical features should be less than int32 max value (2147483647).
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        Large values could be memory consuming. Consider using consecutive integers starting from zero.
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        All negative values in categorical features will be treated as missing values.
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        The output cannot be monotonically constrained with respect to a categorical feature.
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    fpreproc : callable or None, optional (default=None)
        Preprocessing function that takes (dtrain, dtest, params)
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        and returns transformed versions of those.
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    seed : int, optional (default=0)
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        Seed used to generate the folds (passed to numpy.random.seed).
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    callbacks : list of callable, or None, optional (default=None)
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        List of callback functions that are applied at each iteration.
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        See Callbacks in Python API for more information.
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    eval_train_metric : bool, optional (default=False)
        Whether to display the train metric in progress.
        The score of the metric is calculated again after each training step, so there is some impact on performance.
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    return_cvbooster : bool, optional (default=False)
        Whether to return Booster models trained on each fold through ``CVBooster``.
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    Returns
    -------
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    eval_hist : dict
        Evaluation history.
        The dictionary has the following format:
        {'metric1-mean': [values], 'metric1-stdv': [values],
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        'metric2-mean': [values], 'metric2-stdv': [values],
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        ...}.
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        If ``return_cvbooster=True``, also returns trained boosters via ``cvbooster`` key.
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    """
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    if not isinstance(train_set, Dataset):
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        raise TypeError("Training only accepts Dataset object")
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    params = copy.deepcopy(params)
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    if fobj is not None:
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        for obj_alias in _ConfigAliases.get("objective"):
            params.pop(obj_alias, None)
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        params['objective'] = 'none'
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    for alias in _ConfigAliases.get("num_iterations"):
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        if alias in params:
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            _log_warning(f"Found '{alias}' in params. Will use it instead of 'num_boost_round' argument")
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            num_boost_round = params.pop(alias)
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    params["num_iterations"] = num_boost_round
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    # setting early stopping via global params should be possible
    params = _choose_param_value(
        main_param_name="early_stopping_round",
        params=params,
        default_value=None
    )
    if params["early_stopping_round"] is None:
        params.pop("early_stopping_round")
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    first_metric_only = params.get('first_metric_only', False)
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    if num_boost_round <= 0:
        raise ValueError("num_boost_round should be greater than zero.")
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    if isinstance(init_model, (str, Path)):
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        predictor = _InnerPredictor(model_file=init_model, pred_parameter=params)
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    elif isinstance(init_model, Booster):
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        predictor = init_model._to_predictor(dict(init_model.params, **params))
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    else:
        predictor = None

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    if metrics is not None:
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        for metric_alias in _ConfigAliases.get("metric"):
            params.pop(metric_alias, None)
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        params['metric'] = metrics
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    train_set._update_params(params) \
             ._set_predictor(predictor) \
             .set_feature_name(feature_name) \
             .set_categorical_feature(categorical_feature)

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    results = collections.defaultdict(list)
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    cvfolds = _make_n_folds(train_set, folds=folds, nfold=nfold,
                            params=params, seed=seed, fpreproc=fpreproc,
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                            stratified=stratified, shuffle=shuffle,
                            eval_train_metric=eval_train_metric)
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    # setup callbacks
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    if callbacks is None:
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        callbacks = set()
    else:
        for i, cb in enumerate(callbacks):
            cb.__dict__.setdefault('order', i - len(callbacks))
        callbacks = set(callbacks)
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    if "early_stopping_round" in params:
        callbacks.add(
            callback.early_stopping(
                stopping_rounds=params["early_stopping_round"],
                first_metric_only=first_metric_only,
                verbose=_choose_param_value(
                    main_param_name="verbosity",
                    params=params,
                    default_value=1
                ).pop("verbosity") > 0
            )
        )
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    callbacks_before_iter = {cb for cb in callbacks if getattr(cb, 'before_iteration', False)}
    callbacks_after_iter = callbacks - callbacks_before_iter
    callbacks_before_iter = sorted(callbacks_before_iter, key=attrgetter('order'))
    callbacks_after_iter = sorted(callbacks_after_iter, key=attrgetter('order'))
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    for i in range(num_boost_round):
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        for cb in callbacks_before_iter:
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            cb(callback.CallbackEnv(model=cvfolds,
                                    params=params,
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                                    iteration=i,
                                    begin_iteration=0,
                                    end_iteration=num_boost_round,
                                    evaluation_result_list=None))
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        cvfolds.update(fobj=fobj)
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        res = _agg_cv_result(cvfolds.eval_valid(feval))
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        for _, key, mean, _, std in res:
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            results[f'{key}-mean'].append(mean)
            results[f'{key}-stdv'].append(std)
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        try:
            for cb in callbacks_after_iter:
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                cb(callback.CallbackEnv(model=cvfolds,
                                        params=params,
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                                        iteration=i,
                                        begin_iteration=0,
                                        end_iteration=num_boost_round,
                                        evaluation_result_list=res))
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        except callback.EarlyStopException as earlyStopException:
            cvfolds.best_iteration = earlyStopException.best_iteration + 1
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            for k in results:
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                results[k] = results[k][:cvfolds.best_iteration]
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            break
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    if return_cvbooster:
        results['cvbooster'] = cvfolds

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    return dict(results)