"examples/multiclass_classification/README.md" did not exist on "f20a2c4de29f269414ce755ab9e1d7675a7d03f4"
sklearn.py 48.2 KB
Newer Older
wxchan's avatar
wxchan committed
1
# coding: utf-8
2
"""Scikit-learn wrapper interface for LightGBM."""
3
import copy
4
5
from inspect import signature

wxchan's avatar
wxchan committed
6
import numpy as np
7

8
9
10
11
from .basic import Dataset, LightGBMError, _choose_param_value, _ConfigAliases, _log_warning
from .compat import (SKLEARN_INSTALLED, LGBMNotFittedError, _LGBMAssertAllFinite, _LGBMCheckArray,
                     _LGBMCheckClassificationTargets, _LGBMCheckSampleWeight, _LGBMCheckXY, _LGBMClassifierBase,
                     _LGBMComputeSampleWeight, _LGBMLabelEncoder, _LGBMModelBase, _LGBMRegressorBase, dt_DataTable,
12
                     pd_DataFrame)
wxchan's avatar
wxchan committed
13
from .engine import train
14

wxchan's avatar
wxchan committed
15

16
class _ObjectiveFunctionWrapper:
17
    """Proxy class for objective function."""
18

19
20
    def __init__(self, func):
        """Construct a proxy class.
21

22
23
        This class transforms objective function to match objective function with signature ``new_func(preds, dataset)``
        as expected by ``lightgbm.engine.train``.
24

25
26
27
28
29
30
31
32
33
34
35
        Parameters
        ----------
        func : callable
            Expects a callable with signature ``func(y_true, y_pred)`` or ``func(y_true, y_pred, group)
            and returns (grad, hess):

                y_true : array-like of shape = [n_samples]
                    The target values.
                y_pred : array-like of shape = [n_samples] or shape = [n_samples * n_classes] (for multi-class task)
                    The predicted values.
                group : array-like
36
37
38
                    Group/query data.
                    Only used in the learning-to-rank task.
                    sum(group) = n_samples.
39
40
                    For example, if you have a 100-document dataset with ``group = [10, 20, 40, 10, 10, 10]``, that means that you have 6 groups,
                    where the first 10 records are in the first group, records 11-30 are in the second group, records 31-70 are in the third group, etc.
41
42
43
44
                grad : array-like of shape = [n_samples] or shape = [n_samples * n_classes] (for multi-class task)
                    The value of the first order derivative (gradient) for each sample point.
                hess : array-like of shape = [n_samples] or shape = [n_samples * n_classes] (for multi-class task)
                    The value of the second order derivative (Hessian) for each sample point.
wxchan's avatar
wxchan committed
45

Nikita Titov's avatar
Nikita Titov committed
46
47
        .. note::

48
            For binary task, the y_pred is margin.
Nikita Titov's avatar
Nikita Titov committed
49
50
51
            For multi-class task, the y_pred is group by class_id first, then group by row_id.
            If you want to get i-th row y_pred in j-th class, the access way is y_pred[j * num_data + i]
            and you should group grad and hess in this way as well.
52
53
        """
        self.func = func
wxchan's avatar
wxchan committed
54

55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
    def __call__(self, preds, dataset):
        """Call passed function with appropriate arguments.

        Parameters
        ----------
        preds : array-like of shape = [n_samples] or shape = [n_samples * n_classes] (for multi-class task)
            The predicted values.
        dataset : Dataset
            The training dataset.

        Returns
        -------
        grad : array-like of shape = [n_samples] or shape = [n_samples * n_classes] (for multi-class task)
            The value of the first order derivative (gradient) for each sample point.
        hess : array-like of shape = [n_samples] or shape = [n_samples * n_classes] (for multi-class task)
            The value of the second order derivative (Hessian) for each sample point.
        """
wxchan's avatar
wxchan committed
72
        labels = dataset.get_label()
73
        argc = len(signature(self.func).parameters)
74
        if argc == 2:
75
            grad, hess = self.func(labels, preds)
76
        elif argc == 3:
77
            grad, hess = self.func(labels, preds, dataset.get_group())
78
        else:
79
            raise TypeError(f"Self-defined objective function should have 2 or 3 arguments, got {argc}")
wxchan's avatar
wxchan committed
80
81
82
83
84
85
86
87
88
89
90
        """weighted for objective"""
        weight = dataset.get_weight()
        if weight is not None:
            """only one class"""
            if len(weight) == len(grad):
                grad = np.multiply(grad, weight)
                hess = np.multiply(hess, weight)
            else:
                num_data = len(weight)
                num_class = len(grad) // num_data
                if num_class * num_data != len(grad):
91
                    raise ValueError("Length of grad and hess should equal to num_class * num_data")
92
93
                for k in range(num_class):
                    for i in range(num_data):
wxchan's avatar
wxchan committed
94
95
96
97
98
                        idx = k * num_data + i
                        grad[idx] *= weight[i]
                        hess[idx] *= weight[i]
        return grad, hess

wxchan's avatar
wxchan committed
99

100
class _EvalFunctionWrapper:
101
    """Proxy class for evaluation function."""
102

103
104
    def __init__(self, func):
        """Construct a proxy class.
105

106
107
        This class transforms evaluation function to match evaluation function with signature ``new_func(preds, dataset)``
        as expected by ``lightgbm.engine.train``.
108

109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
        Parameters
        ----------
        func : callable
            Expects a callable with following signatures:
            ``func(y_true, y_pred)``,
            ``func(y_true, y_pred, weight)``
            or ``func(y_true, y_pred, weight, group)``
            and returns (eval_name, eval_result, is_higher_better) or
            list of (eval_name, eval_result, is_higher_better):

                y_true : array-like of shape = [n_samples]
                    The target values.
                y_pred : array-like of shape = [n_samples] or shape = [n_samples * n_classes] (for multi-class task)
                    The predicted values.
                weight : array-like of shape = [n_samples]
                    The weight of samples.
                group : array-like
126
127
128
                    Group/query data.
                    Only used in the learning-to-rank task.
                    sum(group) = n_samples.
129
130
                    For example, if you have a 100-document dataset with ``group = [10, 20, 40, 10, 10, 10]``, that means that you have 6 groups,
                    where the first 10 records are in the first group, records 11-30 are in the second group, records 31-70 are in the third group, etc.
131
                eval_name : string
132
                    The name of evaluation function (without whitespaces).
133
134
135
136
137
                eval_result : float
                    The eval result.
                is_higher_better : bool
                    Is eval result higher better, e.g. AUC is ``is_higher_better``.

Nikita Titov's avatar
Nikita Titov committed
138
139
        .. note::

140
            For binary task, the y_pred is probability of positive class (or margin in case of custom ``objective``).
Nikita Titov's avatar
Nikita Titov committed
141
142
            For multi-class task, the y_pred is group by class_id first, then group by row_id.
            If you want to get i-th row y_pred in j-th class, the access way is y_pred[j * num_data + i].
143
144
        """
        self.func = func
145

146
147
    def __call__(self, preds, dataset):
        """Call passed function with appropriate arguments.
148

149
150
151
152
153
154
155
156
157
158
        Parameters
        ----------
        preds : array-like of shape = [n_samples] or shape = [n_samples * n_classes] (for multi-class task)
            The predicted values.
        dataset : Dataset
            The training dataset.

        Returns
        -------
        eval_name : string
159
            The name of evaluation function (without whitespaces).
160
161
162
163
164
        eval_result : float
            The eval result.
        is_higher_better : bool
            Is eval result higher better, e.g. AUC is ``is_higher_better``.
        """
165
        labels = dataset.get_label()
166
        argc = len(signature(self.func).parameters)
167
        if argc == 2:
168
            return self.func(labels, preds)
169
        elif argc == 3:
170
            return self.func(labels, preds, dataset.get_weight())
171
        elif argc == 4:
172
            return self.func(labels, preds, dataset.get_weight(), dataset.get_group())
173
        else:
174
            raise TypeError(f"Self-defined eval function should have 2, 3 or 4 arguments, got {argc}")
175

wxchan's avatar
wxchan committed
176

177
178
179
180
181
182
183
184
185
186
187
188
189
190
191
# documentation templates for LGBMModel methods are shared between the classes in
# this module and those in the ``dask`` module

_lgbmmodel_doc_fit = (
    """
    Build a gradient boosting model from the training set (X, y).

    Parameters
    ----------
    X : {X_shape}
        Input feature matrix.
    y : {y_shape}
        The target values (class labels in classification, real numbers in regression).
    sample_weight : {sample_weight_shape}
        Weights of training data.
192
    init_score : {init_score_shape}
193
194
195
196
197
198
199
200
201
202
203
204
205
206
207
208
209
210
211
212
213
214
215
216
217
218
219
220
221
222
223
224
225
226
227
228
229
230
231
232
233
234
235
236
237
238
239
240
241
242
243
244
245
246
247
248
249
250
251
252
253
254
255
256
257
258
259
260
261
262
263
264
265
266
267
268
269
270
271
272
273
274
275
276
277
278
279
280
281
282
283
284
285
286
287
288
289
290
291
292
293
294
295
296
297
298
299
300
301
302
303
304
305
306
307
308
309
310
311
312
313
314
315
316
317
318
319
320
321
322
323
324
325
326
327
328
329
330
331
332
333
334
335
336
337
338
339
340
        Init score of training data.
    group : {group_shape}
        Group/query data.
        Only used in the learning-to-rank task.
        sum(group) = n_samples.
        For example, if you have a 100-document dataset with ``group = [10, 20, 40, 10, 10, 10]``, that means that you have 6 groups,
        where the first 10 records are in the first group, records 11-30 are in the second group, records 31-70 are in the third group, etc.
    eval_set : list or None, optional (default=None)
        A list of (X, y) tuple pairs to use as validation sets.
    eval_names : list of strings or None, optional (default=None)
        Names of eval_set.
    eval_sample_weight : list of arrays or None, optional (default=None)
        Weights of eval data.
    eval_class_weight : list or None, optional (default=None)
        Class weights of eval data.
    eval_init_score : list of arrays or None, optional (default=None)
        Init score of eval data.
    eval_group : list of arrays or None, optional (default=None)
        Group data of eval data.
    eval_metric : string, callable, list or None, optional (default=None)
        If string, it should be a built-in evaluation metric to use.
        If callable, it should be a custom evaluation metric, see note below for more details.
        If list, it can be a list of built-in metrics, a list of custom evaluation metrics, or a mix of both.
        In either case, the ``metric`` from the model parameters will be evaluated and used as well.
        Default: 'l2' for LGBMRegressor, 'logloss' for LGBMClassifier, 'ndcg' for LGBMRanker.
    early_stopping_rounds : int or None, optional (default=None)
        Activates early stopping. The model will train until the validation score stops improving.
        Validation score needs to improve at least every ``early_stopping_rounds`` round(s)
        to continue training.
        Requires at least one validation data and one metric.
        If there's more than one, will check all of them. But the training data is ignored anyway.
        To check only the first metric, set the ``first_metric_only`` parameter to ``True``
        in additional parameters ``**kwargs`` of the model constructor.
    verbose : bool or int, optional (default=True)
        Requires at least one evaluation data.
        If True, the eval metric on the eval set is printed at each boosting stage.
        If int, the eval metric on the eval set is printed at every ``verbose`` boosting stage.
        The last boosting stage or the boosting stage found by using ``early_stopping_rounds`` is also printed.

        .. rubric:: Example

        With ``verbose`` = 4 and at least one item in ``eval_set``,
        an evaluation metric is printed every 4 (instead of 1) boosting stages.

    feature_name : list of strings or 'auto', optional (default='auto')
        Feature names.
        If 'auto' and data is pandas DataFrame, data columns names are used.
    categorical_feature : list of strings or int, or 'auto', optional (default='auto')
        Categorical features.
        If list of int, interpreted as indices.
        If list of strings, interpreted as feature names (need to specify ``feature_name`` as well).
        If 'auto' and data is pandas DataFrame, pandas unordered categorical columns are used.
        All values in categorical features should be less than int32 max value (2147483647).
        Large values could be memory consuming. Consider using consecutive integers starting from zero.
        All negative values in categorical features will be treated as missing values.
        The output cannot be monotonically constrained with respect to a categorical feature.
    callbacks : list of callback functions or None, optional (default=None)
        List of callback functions that are applied at each iteration.
        See Callbacks in Python API for more information.
    init_model : string, Booster, LGBMModel or None, optional (default=None)
        Filename of LightGBM model, Booster instance or LGBMModel instance used for continue training.

    Returns
    -------
    self : object
        Returns self.
    """
)

_lgbmmodel_doc_custom_eval_note = """
    Note
    ----
    Custom eval function expects a callable with following signatures:
    ``func(y_true, y_pred)``, ``func(y_true, y_pred, weight)`` or
    ``func(y_true, y_pred, weight, group)``
    and returns (eval_name, eval_result, is_higher_better) or
    list of (eval_name, eval_result, is_higher_better):

        y_true : array-like of shape = [n_samples]
            The target values.
        y_pred : array-like of shape = [n_samples] or shape = [n_samples * n_classes] (for multi-class task)
            The predicted values.
        weight : array-like of shape = [n_samples]
            The weight of samples.
        group : array-like
            Group/query data.
            Only used in the learning-to-rank task.
            sum(group) = n_samples.
            For example, if you have a 100-document dataset with ``group = [10, 20, 40, 10, 10, 10]``, that means that you have 6 groups,
            where the first 10 records are in the first group, records 11-30 are in the second group, records 31-70 are in the third group, etc.
        eval_name : string
            The name of evaluation function (without whitespaces).
        eval_result : float
            The eval result.
        is_higher_better : bool
            Is eval result higher better, e.g. AUC is ``is_higher_better``.

    For binary task, the y_pred is probability of positive class (or margin in case of custom ``objective``).
    For multi-class task, the y_pred is group by class_id first, then group by row_id.
    If you want to get i-th row y_pred in j-th class, the access way is y_pred[j * num_data + i].
"""

_lgbmmodel_doc_predict = (
    """
    {description}

    Parameters
    ----------
    X : {X_shape}
        Input features matrix.
    raw_score : bool, optional (default=False)
        Whether to predict raw scores.
    start_iteration : int, optional (default=0)
        Start index of the iteration to predict.
        If <= 0, starts from the first iteration.
    num_iteration : int or None, optional (default=None)
        Total number of iterations used in the prediction.
        If None, if the best iteration exists and start_iteration <= 0, the best iteration is used;
        otherwise, all iterations from ``start_iteration`` are used (no limits).
        If <= 0, all iterations from ``start_iteration`` are used (no limits).
    pred_leaf : bool, optional (default=False)
        Whether to predict leaf index.
    pred_contrib : bool, optional (default=False)
        Whether to predict feature contributions.

        .. note::

            If you want to get more explanations for your model's predictions using SHAP values,
            like SHAP interaction values,
            you can install the shap package (https://github.com/slundberg/shap).
            Note that unlike the shap package, with ``pred_contrib`` we return a matrix with an extra
            column, where the last column is the expected value.

    **kwargs
        Other parameters for the prediction.

    Returns
    -------
    {output_name} : {predicted_result_shape}
        The predicted values.
    X_leaves : {X_leaves_shape}
        If ``pred_leaf=True``, the predicted leaf of every tree for each sample.
    X_SHAP_values : {X_SHAP_values_shape}
        If ``pred_contrib=True``, the feature contributions for each sample.
    """
)


341
342
class LGBMModel(_LGBMModelBase):
    """Implementation of the scikit-learn API for LightGBM."""
wxchan's avatar
wxchan committed
343

344
    def __init__(self, boosting_type='gbdt', num_leaves=31, max_depth=-1,
345
                 learning_rate=0.1, n_estimators=100,
346
                 subsample_for_bin=200000, objective=None, class_weight=None,
347
                 min_split_gain=0., min_child_weight=1e-3, min_child_samples=20,
348
                 subsample=1., subsample_freq=0, colsample_bytree=1.,
349
                 reg_alpha=0., reg_lambda=0., random_state=None,
350
                 n_jobs=-1, silent=True, importance_type='split', **kwargs):
351
        r"""Construct a gradient boosting model.
wxchan's avatar
wxchan committed
352
353
354

        Parameters
        ----------
355
        boosting_type : string, optional (default='gbdt')
356
357
358
359
360
            'gbdt', traditional Gradient Boosting Decision Tree.
            'dart', Dropouts meet Multiple Additive Regression Trees.
            'goss', Gradient-based One-Side Sampling.
            'rf', Random Forest.
        num_leaves : int, optional (default=31)
wxchan's avatar
wxchan committed
361
            Maximum tree leaves for base learners.
362
        max_depth : int, optional (default=-1)
363
            Maximum tree depth for base learners, <=0 means no limit.
364
        learning_rate : float, optional (default=0.1)
365
            Boosting learning rate.
366
367
368
            You can use ``callbacks`` parameter of ``fit`` method to shrink/adapt learning rate
            in training using ``reset_parameter`` callback.
            Note, that this will ignore the ``learning_rate`` argument in training.
369
        n_estimators : int, optional (default=100)
wxchan's avatar
wxchan committed
370
            Number of boosted trees to fit.
371
        subsample_for_bin : int, optional (default=200000)
wxchan's avatar
wxchan committed
372
            Number of samples for constructing bins.
373
        objective : string, callable or None, optional (default=None)
wxchan's avatar
wxchan committed
374
375
            Specify the learning task and the corresponding learning objective or
            a custom objective function to be used (see note below).
376
            Default: 'regression' for LGBMRegressor, 'binary' or 'multiclass' for LGBMClassifier, 'lambdarank' for LGBMRanker.
377
378
379
380
        class_weight : dict, 'balanced' or None, optional (default=None)
            Weights associated with classes in the form ``{class_label: weight}``.
            Use this parameter only for multi-class classification task;
            for binary classification task you may use ``is_unbalance`` or ``scale_pos_weight`` parameters.
381
382
383
            Note, that the usage of all these parameters will result in poor estimates of the individual class probabilities.
            You may want to consider performing probability calibration
            (https://scikit-learn.org/stable/modules/calibration.html) of your model.
384
385
386
            The 'balanced' mode uses the values of y to automatically adjust weights
            inversely proportional to class frequencies in the input data as ``n_samples / (n_classes * np.bincount(y))``.
            If None, all classes are supposed to have weight one.
387
            Note, that these weights will be multiplied with ``sample_weight`` (passed through the ``fit`` method)
388
            if ``sample_weight`` is specified.
389
        min_split_gain : float, optional (default=0.)
wxchan's avatar
wxchan committed
390
            Minimum loss reduction required to make a further partition on a leaf node of the tree.
391
        min_child_weight : float, optional (default=1e-3)
392
            Minimum sum of instance weight (hessian) needed in a child (leaf).
393
        min_child_samples : int, optional (default=20)
394
            Minimum number of data needed in a child (leaf).
395
        subsample : float, optional (default=1.)
wxchan's avatar
wxchan committed
396
            Subsample ratio of the training instance.
397
        subsample_freq : int, optional (default=0)
398
399
            Frequence of subsample, <=0 means no enable.
        colsample_bytree : float, optional (default=1.)
wxchan's avatar
wxchan committed
400
            Subsample ratio of columns when constructing each tree.
401
        reg_alpha : float, optional (default=0.)
402
            L1 regularization term on weights.
403
        reg_lambda : float, optional (default=0.)
404
            L2 regularization term on weights.
405
        random_state : int, RandomState object or None, optional (default=None)
wxchan's avatar
wxchan committed
406
            Random number seed.
407
408
409
            If int, this number is used to seed the C++ code.
            If RandomState object (numpy), a random integer is picked based on its state to seed the C++ code.
            If None, default seeds in C++ code are used.
410
        n_jobs : int, optional (default=-1)
411
            Number of parallel threads.
412
        silent : bool, optional (default=True)
wxchan's avatar
wxchan committed
413
            Whether to print messages while running boosting.
414
        importance_type : string, optional (default='split')
415
            The type of feature importance to be filled into ``feature_importances_``.
416
417
418
419
            If 'split', result contains numbers of times the feature is used in a model.
            If 'gain', result contains total gains of splits which use the feature.
        **kwargs
            Other parameters for the model.
wxchan's avatar
wxchan committed
420
            Check http://lightgbm.readthedocs.io/en/latest/Parameters.html for more parameters.
421

Nikita Titov's avatar
Nikita Titov committed
422
423
424
            .. warning::

                \*\*kwargs is not supported in sklearn, it may cause unexpected issues.
wxchan's avatar
wxchan committed
425
426
427

        Note
        ----
428
429
        A custom objective function can be provided for the ``objective`` parameter.
        In this case, it should have the signature
430
431
        ``objective(y_true, y_pred) -> grad, hess`` or
        ``objective(y_true, y_pred, group) -> grad, hess``:
wxchan's avatar
wxchan committed
432

Nikita Titov's avatar
Nikita Titov committed
433
            y_true : array-like of shape = [n_samples]
434
                The target values.
Nikita Titov's avatar
Nikita Titov committed
435
            y_pred : array-like of shape = [n_samples] or shape = [n_samples * n_classes] (for multi-class task)
436
                The predicted values.
Nikita Titov's avatar
Nikita Titov committed
437
            group : array-like
438
439
440
                Group/query data.
                Only used in the learning-to-rank task.
                sum(group) = n_samples.
441
442
                For example, if you have a 100-document dataset with ``group = [10, 20, 40, 10, 10, 10]``, that means that you have 6 groups,
                where the first 10 records are in the first group, records 11-30 are in the second group, records 31-70 are in the third group, etc.
Nikita Titov's avatar
Nikita Titov committed
443
            grad : array-like of shape = [n_samples] or shape = [n_samples * n_classes] (for multi-class task)
444
                The value of the first order derivative (gradient) for each sample point.
Nikita Titov's avatar
Nikita Titov committed
445
            hess : array-like of shape = [n_samples] or shape = [n_samples * n_classes] (for multi-class task)
446
                The value of the second order derivative (Hessian) for each sample point.
wxchan's avatar
wxchan committed
447

448
        For binary task, the y_pred is margin.
449
450
451
        For multi-class task, the y_pred is group by class_id first, then group by row_id.
        If you want to get i-th row y_pred in j-th class, the access way is y_pred[j * num_data + i]
        and you should group grad and hess in this way as well.
wxchan's avatar
wxchan committed
452
        """
wxchan's avatar
wxchan committed
453
        if not SKLEARN_INSTALLED:
454
            raise LightGBMError('scikit-learn is required for lightgbm.sklearn')
wxchan's avatar
wxchan committed
455

456
        self.boosting_type = boosting_type
457
        self.objective = objective
wxchan's avatar
wxchan committed
458
459
460
461
        self.num_leaves = num_leaves
        self.max_depth = max_depth
        self.learning_rate = learning_rate
        self.n_estimators = n_estimators
wxchan's avatar
wxchan committed
462
        self.subsample_for_bin = subsample_for_bin
wxchan's avatar
wxchan committed
463
464
465
466
467
468
469
470
        self.min_split_gain = min_split_gain
        self.min_child_weight = min_child_weight
        self.min_child_samples = min_child_samples
        self.subsample = subsample
        self.subsample_freq = subsample_freq
        self.colsample_bytree = colsample_bytree
        self.reg_alpha = reg_alpha
        self.reg_lambda = reg_lambda
471
472
        self.random_state = random_state
        self.n_jobs = n_jobs
wxchan's avatar
wxchan committed
473
        self.silent = silent
474
        self.importance_type = importance_type
wxchan's avatar
wxchan committed
475
        self._Booster = None
476
477
478
479
        self._evals_result = None
        self._best_score = None
        self._best_iteration = None
        self._other_params = {}
480
        self._objective = objective
481
        self.class_weight = class_weight
482
483
        self._class_weight = None
        self._class_map = None
484
        self._n_features = None
485
        self._n_features_in = None
486
487
        self._classes = None
        self._n_classes = None
488
        self.set_params(**kwargs)
wxchan's avatar
wxchan committed
489

Nikita Titov's avatar
Nikita Titov committed
490
    def _more_tags(self):
491
492
493
494
495
496
497
498
499
500
        return {
            'allow_nan': True,
            'X_types': ['2darray', 'sparse', '1dlabels'],
            '_xfail_checks': {
                'check_no_attributes_set_in_init':
                'scikit-learn incorrectly asserts that private attributes '
                'cannot be set in __init__: '
                '(see https://github.com/microsoft/LightGBM/issues/2628)'
            }
        }
Nikita Titov's avatar
Nikita Titov committed
501

wxchan's avatar
wxchan committed
502
    def get_params(self, deep=True):
503
504
505
506
507
508
509
510
511
512
513
514
515
        """Get parameters for this estimator.

        Parameters
        ----------
        deep : bool, optional (default=True)
            If True, will return the parameters for this estimator and
            contained subobjects that are estimators.

        Returns
        -------
        params : dict
            Parameter names mapped to their values.
        """
516
        params = super().get_params(deep=deep)
517
        params.update(self._other_params)
wxchan's avatar
wxchan committed
518
519
520
        return params

    def set_params(self, **params):
521
522
523
524
525
526
527
528
529
530
531
532
        """Set the parameters of this estimator.

        Parameters
        ----------
        **params
            Parameter names with their new values.

        Returns
        -------
        self : object
            Returns self.
        """
wxchan's avatar
wxchan committed
533
534
        for key, value in params.items():
            setattr(self, key, value)
535
536
            if hasattr(self, f"_{key}"):
                setattr(self, f"_{key}", value)
537
            self._other_params[key] = value
wxchan's avatar
wxchan committed
538
        return self
wxchan's avatar
wxchan committed
539

Guolin Ke's avatar
Guolin Ke committed
540
    def fit(self, X, y,
541
            sample_weight=None, init_score=None, group=None,
542
            eval_set=None, eval_names=None, eval_sample_weight=None,
543
544
            eval_class_weight=None, eval_init_score=None, eval_group=None,
            eval_metric=None, early_stopping_rounds=None, verbose=True,
545
546
            feature_name='auto', categorical_feature='auto',
            callbacks=None, init_model=None):
547
        """Docstring is set after definition, using a template."""
548
549
550
551
552
553
554
555
556
557
        if self._objective is None:
            if isinstance(self, LGBMRegressor):
                self._objective = "regression"
            elif isinstance(self, LGBMClassifier):
                self._objective = "binary"
            elif isinstance(self, LGBMRanker):
                self._objective = "lambdarank"
            else:
                raise ValueError("Unknown LGBMModel type.")
        if callable(self._objective):
558
            self._fobj = _ObjectiveFunctionWrapper(self._objective)
559
560
        else:
            self._fobj = None
wxchan's avatar
wxchan committed
561
562
        evals_result = {}
        params = self.get_params()
wxchan's avatar
wxchan committed
563
        # user can set verbose with kwargs, it has higher priority
564
        if not any(verbose_alias in params for verbose_alias in _ConfigAliases.get("verbosity")) and self.silent:
565
            params['verbose'] = -1
wxchan's avatar
wxchan committed
566
        params.pop('silent', None)
567
        params.pop('importance_type', None)
wxchan's avatar
wxchan committed
568
        params.pop('n_estimators', None)
569
        params.pop('class_weight', None)
570
571
        if isinstance(params['random_state'], np.random.RandomState):
            params['random_state'] = params['random_state'].randint(np.iinfo(np.int32).max)
572
573
        for alias in _ConfigAliases.get('objective'):
            params.pop(alias, None)
574
        if self._n_classes is not None and self._n_classes > 2:
575
576
            for alias in _ConfigAliases.get('num_class'):
                params.pop(alias, None)
577
578
            params['num_class'] = self._n_classes
        if hasattr(self, '_eval_at'):
579
580
            for alias in _ConfigAliases.get('eval_at'):
                params.pop(alias, None)
581
            params['eval_at'] = self._eval_at
582
583
        params['objective'] = self._objective
        if self._fobj:
wxchan's avatar
wxchan committed
584
            params['objective'] = 'None'  # objective = nullptr for unknown objective
wxchan's avatar
wxchan committed
585

586
587
588
589
590
591
592
593
        # Do not modify original args in fit function
        # Refer to https://github.com/microsoft/LightGBM/pull/2619
        eval_metric_list = copy.deepcopy(eval_metric)
        if not isinstance(eval_metric_list, list):
            eval_metric_list = [eval_metric_list]

        # Separate built-in from callable evaluation metrics
        eval_metrics_callable = [_EvalFunctionWrapper(f) for f in eval_metric_list if callable(f)]
594
        eval_metrics_builtin = [m for m in eval_metric_list if isinstance(m, str)]
595
596

        # register default metric for consistency with callable eval_metric case
597
        original_metric = self._objective if isinstance(self._objective, str) else None
598
599
600
601
602
603
604
605
606
607
        if original_metric is None:
            # try to deduce from class instance
            if isinstance(self, LGBMRegressor):
                original_metric = "l2"
            elif isinstance(self, LGBMClassifier):
                original_metric = "multi_logloss" if self._n_classes > 2 else "binary_logloss"
            elif isinstance(self, LGBMRanker):
                original_metric = "ndcg"

        # overwrite default metric by explicitly set metric
608
        params = _choose_param_value("metric", params, original_metric)
609
610

        # concatenate metric from params (or default if not provided in params) and eval_metric
611
612
        params['metric'] = [params['metric']] if isinstance(params['metric'], (str, type(None))) else params['metric']
        params['metric'] = [e for e in eval_metrics_builtin if e not in params['metric']] + params['metric']
613
        params['metric'] = [metric for metric in params['metric'] if metric is not None]
wxchan's avatar
wxchan committed
614

615
        if not isinstance(X, (pd_DataFrame, dt_DataTable)):
616
            _X, _y = _LGBMCheckXY(X, y, accept_sparse=True, force_all_finite=False, ensure_min_samples=2)
617
618
            if sample_weight is not None:
                sample_weight = _LGBMCheckSampleWeight(sample_weight, _X)
619
620
        else:
            _X, _y = X, y
621

622
623
624
625
        if self._class_weight is None:
            self._class_weight = self.class_weight
        if self._class_weight is not None:
            class_sample_weight = _LGBMComputeSampleWeight(self._class_weight, y)
626
627
628
629
            if sample_weight is None or len(sample_weight) == 0:
                sample_weight = class_sample_weight
            else:
                sample_weight = np.multiply(sample_weight, class_sample_weight)
630

631
        self._n_features = _X.shape[1]
632
633
        # copy for consistency
        self._n_features_in = self._n_features
634

635
636
        def _construct_dataset(X, y, sample_weight, init_score, group, params,
                               categorical_feature='auto'):
637
            return Dataset(X, label=y, weight=sample_weight, group=group,
638
639
                           init_score=init_score, params=params,
                           categorical_feature=categorical_feature)
Guolin Ke's avatar
Guolin Ke committed
640

641
642
        train_set = _construct_dataset(_X, _y, sample_weight, init_score, group, params,
                                       categorical_feature=categorical_feature)
Guolin Ke's avatar
Guolin Ke committed
643
644
645

        valid_sets = []
        if eval_set is not None:
646

647
            def _get_meta_data(collection, name, i):
648
649
650
651
652
653
654
                if collection is None:
                    return None
                elif isinstance(collection, list):
                    return collection[i] if len(collection) > i else None
                elif isinstance(collection, dict):
                    return collection.get(i, None)
                else:
655
                    raise TypeError(f"{name} should be dict or list")
656

Guolin Ke's avatar
Guolin Ke committed
657
658
659
            if isinstance(eval_set, tuple):
                eval_set = [eval_set]
            for i, valid_data in enumerate(eval_set):
660
                # reduce cost for prediction training data
Guolin Ke's avatar
Guolin Ke committed
661
662
663
                if valid_data[0] is X and valid_data[1] is y:
                    valid_set = train_set
                else:
664
665
666
667
668
669
                    valid_weight = _get_meta_data(eval_sample_weight, 'eval_sample_weight', i)
                    valid_class_weight = _get_meta_data(eval_class_weight, 'eval_class_weight', i)
                    if valid_class_weight is not None:
                        if isinstance(valid_class_weight, dict) and self._class_map is not None:
                            valid_class_weight = {self._class_map[k]: v for k, v in valid_class_weight.items()}
                        valid_class_sample_weight = _LGBMComputeSampleWeight(valid_class_weight, valid_data[1])
670
671
672
673
                        if valid_weight is None or len(valid_weight) == 0:
                            valid_weight = valid_class_sample_weight
                        else:
                            valid_weight = np.multiply(valid_weight, valid_class_sample_weight)
674
675
                    valid_init_score = _get_meta_data(eval_init_score, 'eval_init_score', i)
                    valid_group = _get_meta_data(eval_group, 'eval_group', i)
676
677
                    valid_set = _construct_dataset(valid_data[0], valid_data[1],
                                                   valid_weight, valid_init_score, valid_group, params)
Guolin Ke's avatar
Guolin Ke committed
678
679
                valid_sets.append(valid_set)

680
681
682
        if isinstance(init_model, LGBMModel):
            init_model = init_model.booster_

Guolin Ke's avatar
Guolin Ke committed
683
        self._Booster = train(params, train_set,
684
                              self.n_estimators, valid_sets=valid_sets, valid_names=eval_names,
wxchan's avatar
wxchan committed
685
                              early_stopping_rounds=early_stopping_rounds,
686
                              evals_result=evals_result, fobj=self._fobj, feval=eval_metrics_callable,
Guolin Ke's avatar
Guolin Ke committed
687
                              verbose_eval=verbose, feature_name=feature_name,
688
                              callbacks=callbacks, init_model=init_model)
wxchan's avatar
wxchan committed
689
690

        if evals_result:
691
            self._evals_result = evals_result
wxchan's avatar
wxchan committed
692

693
        if early_stopping_rounds is not None and early_stopping_rounds > 0:
694
            self._best_iteration = self._Booster.best_iteration
695
696

        self._best_score = self._Booster.best_score
wxchan's avatar
wxchan committed
697

698
699
        self.fitted_ = True

wxchan's avatar
wxchan committed
700
        # free dataset
701
        self._Booster.free_dataset()
wxchan's avatar
wxchan committed
702
        del train_set, valid_sets
wxchan's avatar
wxchan committed
703
704
        return self

705
706
707
708
    fit.__doc__ = _lgbmmodel_doc_fit.format(
        X_shape="array-like or sparse matrix of shape = [n_samples, n_features]",
        y_shape="array-like of shape = [n_samples]",
        sample_weight_shape="array-like of shape = [n_samples] or None, optional (default=None)",
709
        init_score_shape="array-like of shape = [n_samples] or None, optional (default=None)",
710
711
712
        group_shape="array-like or None, optional (default=None)"
    ) + "\n\n" + _lgbmmodel_doc_custom_eval_note

713
    def predict(self, X, raw_score=False, start_iteration=0, num_iteration=None,
714
                pred_leaf=False, pred_contrib=False, **kwargs):
715
        """Docstring is set after definition, using a template."""
716
717
        if self._n_features is None:
            raise LGBMNotFittedError("Estimator not fitted, call `fit` before exploiting the model.")
718
        if not isinstance(X, (pd_DataFrame, dt_DataTable)):
719
            X = _LGBMCheckArray(X, accept_sparse=True, force_all_finite=False)
720
721
722
        n_features = X.shape[1]
        if self._n_features != n_features:
            raise ValueError("Number of features of the model must "
723
724
                             f"match the input. Model n_features_ is {self._n_features} and "
                             f"input n_features is {n_features}")
725
        return self._Booster.predict(X, raw_score=raw_score, start_iteration=start_iteration, num_iteration=num_iteration,
726
                                     pred_leaf=pred_leaf, pred_contrib=pred_contrib, **kwargs)
wxchan's avatar
wxchan committed
727

728
729
730
731
732
733
734
735
736
    predict.__doc__ = _lgbmmodel_doc_predict.format(
        description="Return the predicted value for each sample.",
        X_shape="array-like or sparse matrix of shape = [n_samples, n_features]",
        output_name="predicted_result",
        predicted_result_shape="array-like of shape = [n_samples] or shape = [n_samples, n_classes]",
        X_leaves_shape="array-like of shape = [n_samples, n_trees] or shape = [n_samples, n_trees * n_classes]",
        X_SHAP_values_shape="array-like of shape = [n_samples, n_features + 1] or shape = [n_samples, (n_features + 1) * n_classes] or list with n_classes length of such objects"
    )

737
738
    @property
    def n_features_(self):
739
        """:obj:`int`: The number of features of fitted model."""
740
741
742
743
        if self._n_features is None:
            raise LGBMNotFittedError('No n_features found. Need to call fit beforehand.')
        return self._n_features

744
745
746
747
748
749
750
    @property
    def n_features_in_(self):
        """:obj:`int`: The number of features of fitted model."""
        if self._n_features_in is None:
            raise LGBMNotFittedError('No n_features_in found. Need to call fit beforehand.')
        return self._n_features_in

751
752
    @property
    def best_score_(self):
753
        """:obj:`dict` or :obj:`None`: The best score of fitted model."""
754
755
756
757
758
759
        if self._n_features is None:
            raise LGBMNotFittedError('No best_score found. Need to call fit beforehand.')
        return self._best_score

    @property
    def best_iteration_(self):
760
        """:obj:`int` or :obj:`None`: The best iteration of fitted model if ``early_stopping_rounds`` has been specified."""
761
762
763
764
765
766
        if self._n_features is None:
            raise LGBMNotFittedError('No best_iteration found. Need to call fit with early_stopping_rounds beforehand.')
        return self._best_iteration

    @property
    def objective_(self):
767
        """:obj:`string` or :obj:`callable`: The concrete objective used while fitting this model."""
768
769
770
771
        if self._n_features is None:
            raise LGBMNotFittedError('No objective found. Need to call fit beforehand.')
        return self._objective

772
773
    @property
    def booster_(self):
774
        """Booster: The underlying Booster of this model."""
775
        if self._Booster is None:
776
            raise LGBMNotFittedError('No booster found. Need to call fit beforehand.')
777
        return self._Booster
wxchan's avatar
wxchan committed
778

779
780
    @property
    def evals_result_(self):
781
        """:obj:`dict` or :obj:`None`: The evaluation results if ``early_stopping_rounds`` has been specified."""
782
783
784
        if self._n_features is None:
            raise LGBMNotFittedError('No results found. Need to call fit with eval_set beforehand.')
        return self._evals_result
785
786

    @property
787
    def feature_importances_(self):
788
        """:obj:`array` of shape = [n_features]: The feature importances (the higher, the more important).
789

Nikita Titov's avatar
Nikita Titov committed
790
791
792
793
        .. note::

            ``importance_type`` attribute is passed to the function
            to configure the type of importance values to be extracted.
794
        """
795
796
        if self._n_features is None:
            raise LGBMNotFittedError('No feature_importances found. Need to call fit beforehand.')
797
        return self._Booster.feature_importance(importance_type=self.importance_type)
wxchan's avatar
wxchan committed
798

799
800
    @property
    def feature_name_(self):
801
        """:obj:`array` of shape = [n_features]: The names of features."""
802
803
804
805
        if self._n_features is None:
            raise LGBMNotFittedError('No feature_name found. Need to call fit beforehand.')
        return self._Booster.feature_name()

wxchan's avatar
wxchan committed
806

807
class LGBMRegressor(_LGBMRegressorBase, LGBMModel):
808
    """LightGBM regressor."""
wxchan's avatar
wxchan committed
809

Guolin Ke's avatar
Guolin Ke committed
810
811
    def fit(self, X, y,
            sample_weight=None, init_score=None,
812
            eval_set=None, eval_names=None, eval_sample_weight=None,
813
            eval_init_score=None, eval_metric=None, early_stopping_rounds=None,
814
815
            verbose=True, feature_name='auto', categorical_feature='auto',
            callbacks=None, init_model=None):
816
        """Docstring is inherited from the LGBMModel."""
817
818
819
820
821
        super().fit(X, y, sample_weight=sample_weight, init_score=init_score,
                    eval_set=eval_set, eval_names=eval_names, eval_sample_weight=eval_sample_weight,
                    eval_init_score=eval_init_score, eval_metric=eval_metric,
                    early_stopping_rounds=early_stopping_rounds, verbose=verbose, feature_name=feature_name,
                    categorical_feature=categorical_feature, callbacks=callbacks, init_model=init_model)
Guolin Ke's avatar
Guolin Ke committed
822
823
        return self

824
    _base_doc = LGBMModel.fit.__doc__
825
826
    _base_doc = (_base_doc[:_base_doc.find('group :')]  # type: ignore
                 + _base_doc[_base_doc.find('eval_set :'):])  # type: ignore
827
828
829
830
    _base_doc = (_base_doc[:_base_doc.find('eval_class_weight :')]
                 + _base_doc[_base_doc.find('eval_init_score :'):])
    fit.__doc__ = (_base_doc[:_base_doc.find('eval_group :')]
                   + _base_doc[_base_doc.find('eval_metric :'):])
wxchan's avatar
wxchan committed
831

832

833
class LGBMClassifier(_LGBMClassifierBase, LGBMModel):
834
    """LightGBM classifier."""
wxchan's avatar
wxchan committed
835

Guolin Ke's avatar
Guolin Ke committed
836
837
    def fit(self, X, y,
            sample_weight=None, init_score=None,
838
            eval_set=None, eval_names=None, eval_sample_weight=None,
839
            eval_class_weight=None, eval_init_score=None, eval_metric=None,
wxchan's avatar
wxchan committed
840
            early_stopping_rounds=None, verbose=True,
841
842
            feature_name='auto', categorical_feature='auto',
            callbacks=None, init_model=None):
843
        """Docstring is inherited from the LGBMModel."""
844
        _LGBMAssertAllFinite(y)
845
846
        _LGBMCheckClassificationTargets(y)
        self._le = _LGBMLabelEncoder().fit(y)
847
        _y = self._le.transform(y)
848
        self._class_map = dict(zip(self._le.classes_, self._le.transform(self._le.classes_)))
849
850
        if isinstance(self.class_weight, dict):
            self._class_weight = {self._class_map[k]: v for k, v in self.class_weight.items()}
851

852
853
        self._classes = self._le.classes_
        self._n_classes = len(self._classes)
854

855
        if self._n_classes > 2:
wxchan's avatar
wxchan committed
856
            # Switch to using a multiclass objective in the underlying LGBM instance
857
            ova_aliases = {"multiclassova", "multiclass_ova", "ova", "ovr"}
858
            if self._objective not in ova_aliases and not callable(self._objective):
859
                self._objective = "multiclass"
860
861

        if not callable(eval_metric):
862
            if isinstance(eval_metric, (str, type(None))):
863
864
865
866
867
868
869
870
871
872
873
874
875
                eval_metric = [eval_metric]
            if self._n_classes > 2:
                for index, metric in enumerate(eval_metric):
                    if metric in {'logloss', 'binary_logloss'}:
                        eval_metric[index] = "multi_logloss"
                    elif metric in {'error', 'binary_error'}:
                        eval_metric[index] = "multi_error"
            else:
                for index, metric in enumerate(eval_metric):
                    if metric in {'logloss', 'multi_logloss'}:
                        eval_metric[index] = 'binary_logloss'
                    elif metric in {'error', 'multi_error'}:
                        eval_metric[index] = 'binary_error'
wxchan's avatar
wxchan committed
876

877
878
        # do not modify args, as it causes errors in model selection tools
        valid_sets = None
wxchan's avatar
wxchan committed
879
        if eval_set is not None:
880
881
            if isinstance(eval_set, tuple):
                eval_set = [eval_set]
882
            valid_sets = [None] * len(eval_set)
883
884
            for i, (valid_x, valid_y) in enumerate(eval_set):
                if valid_x is X and valid_y is y:
885
                    valid_sets[i] = (valid_x, _y)
886
                else:
887
                    valid_sets[i] = (valid_x, self._le.transform(valid_y))
888

889
890
891
892
893
894
        super().fit(X, _y, sample_weight=sample_weight, init_score=init_score, eval_set=valid_sets,
                    eval_names=eval_names, eval_sample_weight=eval_sample_weight,
                    eval_class_weight=eval_class_weight, eval_init_score=eval_init_score,
                    eval_metric=eval_metric, early_stopping_rounds=early_stopping_rounds,
                    verbose=verbose, feature_name=feature_name, categorical_feature=categorical_feature,
                    callbacks=callbacks, init_model=init_model)
wxchan's avatar
wxchan committed
895
896
        return self

897
    _base_doc = LGBMModel.fit.__doc__
898
899
    _base_doc = (_base_doc[:_base_doc.find('group :')]  # type: ignore
                 + _base_doc[_base_doc.find('eval_set :'):])  # type: ignore
900
901
    fit.__doc__ = (_base_doc[:_base_doc.find('eval_group :')]
                   + _base_doc[_base_doc.find('eval_metric :'):])
902

903
    def predict(self, X, raw_score=False, start_iteration=0, num_iteration=None,
904
                pred_leaf=False, pred_contrib=False, **kwargs):
905
        """Docstring is inherited from the LGBMModel."""
906
        result = self.predict_proba(X, raw_score, start_iteration, num_iteration,
907
                                    pred_leaf, pred_contrib, **kwargs)
908
        if callable(self._objective) or raw_score or pred_leaf or pred_contrib:
909
910
911
912
            return result
        else:
            class_index = np.argmax(result, axis=1)
            return self._le.inverse_transform(class_index)
wxchan's avatar
wxchan committed
913

914
915
    predict.__doc__ = LGBMModel.predict.__doc__

916
    def predict_proba(self, X, raw_score=False, start_iteration=0, num_iteration=None,
917
                      pred_leaf=False, pred_contrib=False, **kwargs):
918
        """Docstring is set after definition, using a template."""
919
        result = super().predict(X, raw_score, start_iteration, num_iteration, pred_leaf, pred_contrib, **kwargs)
920
        if callable(self._objective) and not (raw_score or pred_leaf or pred_contrib):
921
922
923
            _log_warning("Cannot compute class probabilities or labels "
                         "due to the usage of customized objective function.\n"
                         "Returning raw scores instead.")
924
925
            return result
        elif self._n_classes > 2 or raw_score or pred_leaf or pred_contrib:
926
            return result
wxchan's avatar
wxchan committed
927
        else:
928
            return np.vstack((1. - result, result)).transpose()
929

930
931
932
933
    predict_proba.__doc__ = _lgbmmodel_doc_predict.format(
        description="Return the predicted probability for each class for each sample.",
        X_shape="array-like or sparse matrix of shape = [n_samples, n_features]",
        output_name="predicted_probability",
934
        predicted_result_shape="array-like of shape = [n_samples] or shape = [n_samples, n_classes]",
935
936
937
938
        X_leaves_shape="array-like of shape = [n_samples, n_trees] or shape = [n_samples, n_trees * n_classes]",
        X_SHAP_values_shape="array-like of shape = [n_samples, n_features + 1] or shape = [n_samples, (n_features + 1) * n_classes] or list with n_classes length of such objects"
    )

939
940
    @property
    def classes_(self):
941
        """:obj:`array` of shape = [n_classes]: The class label array."""
942
943
944
        if self._classes is None:
            raise LGBMNotFittedError('No classes found. Need to call fit beforehand.')
        return self._classes
945
946
947

    @property
    def n_classes_(self):
948
        """:obj:`int`: The number of classes."""
949
950
951
        if self._n_classes is None:
            raise LGBMNotFittedError('No classes found. Need to call fit beforehand.')
        return self._n_classes
wxchan's avatar
wxchan committed
952

wxchan's avatar
wxchan committed
953

wxchan's avatar
wxchan committed
954
class LGBMRanker(LGBMModel):
955
    """LightGBM ranker."""
wxchan's avatar
wxchan committed
956

Guolin Ke's avatar
Guolin Ke committed
957
    def fit(self, X, y,
958
            sample_weight=None, init_score=None, group=None,
959
            eval_set=None, eval_names=None, eval_sample_weight=None,
960
            eval_init_score=None, eval_group=None, eval_metric=None,
961
            eval_at=(1, 2, 3, 4, 5), early_stopping_rounds=None, verbose=True,
962
963
            feature_name='auto', categorical_feature='auto',
            callbacks=None, init_model=None):
964
        """Docstring is inherited from the LGBMModel."""
965
        # check group data
Guolin Ke's avatar
Guolin Ke committed
966
        if group is None:
967
            raise ValueError("Should set group for ranking task")
wxchan's avatar
wxchan committed
968
969

        if eval_set is not None:
Guolin Ke's avatar
Guolin Ke committed
970
            if eval_group is None:
971
                raise ValueError("Eval_group cannot be None when eval_set is not None")
Guolin Ke's avatar
Guolin Ke committed
972
            elif len(eval_group) != len(eval_set):
973
                raise ValueError("Length of eval_group should be equal to eval_set")
974
            elif (isinstance(eval_group, dict)
975
                  and any(i not in eval_group or eval_group[i] is None for i in range(len(eval_group)))
976
977
                  or isinstance(eval_group, list)
                  and any(group is None for group in eval_group)):
978
979
                raise ValueError("Should set group for all eval datasets for ranking task; "
                                 "if you use dict, the index should start from 0")
980

981
        self._eval_at = eval_at
982
983
984
985
986
        super().fit(X, y, sample_weight=sample_weight, init_score=init_score, group=group,
                    eval_set=eval_set, eval_names=eval_names, eval_sample_weight=eval_sample_weight,
                    eval_init_score=eval_init_score, eval_group=eval_group, eval_metric=eval_metric,
                    early_stopping_rounds=early_stopping_rounds, verbose=verbose, feature_name=feature_name,
                    categorical_feature=categorical_feature, callbacks=callbacks, init_model=init_model)
wxchan's avatar
wxchan committed
987
        return self
988

989
    _base_doc = LGBMModel.fit.__doc__
990
991
    fit.__doc__ = (_base_doc[:_base_doc.find('eval_class_weight :')]  # type: ignore
                   + _base_doc[_base_doc.find('eval_init_score :'):])  # type: ignore
992
    _base_doc = fit.__doc__
993
    _before_early_stop, _early_stop, _after_early_stop = _base_doc.partition('early_stopping_rounds :')
994
995
996
997
    fit.__doc__ = (f"{_before_early_stop}"
                   "eval_at : iterable of int, optional (default=(1, 2, 3, 4, 5))\n"
                   f"{' ':12}The evaluation positions of the specified metric.\n"
                   f"{' ':8}{_early_stop}{_after_early_stop}")