"python-package/vscode:/vscode.git/clone" did not exist on "757586b2054629e31ffdd22c2011592cb38732d1"
callback.py 15.9 KB
Newer Older
wxchan's avatar
wxchan committed
1
# coding: utf-8
2
"""Callbacks library."""
wxchan's avatar
wxchan committed
3
import collections
4
from functools import partial
5
from typing import Any, Callable, Dict, List, Tuple, Union
wxchan's avatar
wxchan committed
6

7
from .basic import _ConfigAliases, _LGBM_BoosterEvalMethodResultType, _log_info, _log_warning
wxchan's avatar
wxchan committed
8

9
_EvalResultTuple = Union[
10
    List[_LGBM_BoosterEvalMethodResultType],
11
12
13
    List[Tuple[str, str, float, bool, float]]
]

wxchan's avatar
wxchan committed
14

wxchan's avatar
wxchan committed
15
class EarlyStopException(Exception):
16
    """Exception of early stopping."""
17

18
    def __init__(self, best_iteration: int, best_score: _EvalResultTuple) -> None:
19
20
21
22
23
24
        """Create early stopping exception.

        Parameters
        ----------
        best_iteration : int
            The best iteration stopped.
25
26
        best_score : list of (eval_name, metric_name, eval_result, is_higher_better) tuple or (eval_name, metric_name, eval_result, is_higher_better, stdv) tuple
            Scores for each metric, on each validation set, as of the best iteration.
27
        """
28
        super().__init__()
wxchan's avatar
wxchan committed
29
        self.best_iteration = best_iteration
wxchan's avatar
wxchan committed
30
        self.best_score = best_score
wxchan's avatar
wxchan committed
31

wxchan's avatar
wxchan committed
32

wxchan's avatar
wxchan committed
33
34
# Callback environment used by callbacks
CallbackEnv = collections.namedtuple(
35
    "CallbackEnv",
wxchan's avatar
wxchan committed
36
    ["model",
37
     "params",
wxchan's avatar
wxchan committed
38
39
40
41
42
     "iteration",
     "begin_iteration",
     "end_iteration",
     "evaluation_result_list"])

wxchan's avatar
wxchan committed
43

44
def _format_eval_result(value: _EvalResultTuple, show_stdv: bool = True) -> str:
45
    """Format metric string."""
wxchan's avatar
wxchan committed
46
    if len(value) == 4:
47
        return f"{value[0]}'s {value[1]}: {value[2]:g}"
wxchan's avatar
wxchan committed
48
49
    elif len(value) == 5:
        if show_stdv:
50
            return f"{value[0]}'s {value[1]}: {value[2]:g} + {value[4]:g}"
wxchan's avatar
wxchan committed
51
        else:
52
            return f"{value[0]}'s {value[1]}: {value[2]:g}"
wxchan's avatar
wxchan committed
53
    else:
54
        raise ValueError("Wrong metric value")
wxchan's avatar
wxchan committed
55
56


57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
class _LogEvaluationCallback:
    """Internal log evaluation callable class."""

    def __init__(self, period: int = 1, show_stdv: bool = True) -> None:
        self.order = 10
        self.before_iteration = False

        self.period = period
        self.show_stdv = show_stdv

    def __call__(self, env: CallbackEnv) -> None:
        if self.period > 0 and env.evaluation_result_list and (env.iteration + 1) % self.period == 0:
            result = '\t'.join([_format_eval_result(x, self.show_stdv) for x in env.evaluation_result_list])
            _log_info(f'[{env.iteration + 1}]\t{result}')


def log_evaluation(period: int = 1, show_stdv: bool = True) -> _LogEvaluationCallback:
74
75
    """Create a callback that logs the evaluation results.

76
77
78
79
80
81
    By default, standard output resource is used.
    Use ``register_logger()`` function to register a custom logger.

    Note
    ----
    Requires at least one validation data.
wxchan's avatar
wxchan committed
82
83
84

    Parameters
    ----------
85
    period : int, optional (default=1)
86
87
        The period to log the evaluation results.
        The last boosting stage or the boosting stage found by using ``early_stopping`` callback is also logged.
88
    show_stdv : bool, optional (default=True)
89
        Whether to log stdv (if provided).
wxchan's avatar
wxchan committed
90
91
92

    Returns
    -------
93
    callback : _LogEvaluationCallback
94
        The callback that logs the evaluation results every ``period`` boosting iteration(s).
wxchan's avatar
wxchan committed
95
    """
96
    return _LogEvaluationCallback(period=period, show_stdv=show_stdv)
wxchan's avatar
wxchan committed
97
98


99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
class _RecordEvaluationCallback:
    """Internal record evaluation callable class."""

    def __init__(self, eval_result: Dict[str, Dict[str, List[Any]]]) -> None:
        self.order = 20
        self.before_iteration = False

        if not isinstance(eval_result, dict):
            raise TypeError('eval_result should be a dictionary')
        self.eval_result = eval_result

    def _init(self, env: CallbackEnv) -> None:
        self.eval_result.clear()
        for item in env.evaluation_result_list:
            if len(item) == 4:  # regular train
                data_name, eval_name = item[:2]
            else:  # cv
                data_name, eval_name = item[1].split()
            self.eval_result.setdefault(data_name, collections.OrderedDict())
            if len(item) == 4:
                self.eval_result[data_name].setdefault(eval_name, [])
            else:
                self.eval_result[data_name].setdefault(f'{eval_name}-mean', [])
                self.eval_result[data_name].setdefault(f'{eval_name}-stdv', [])

    def __call__(self, env: CallbackEnv) -> None:
        if env.iteration == env.begin_iteration:
            self._init(env)
        for item in env.evaluation_result_list:
            if len(item) == 4:
                data_name, eval_name, result = item[:3]
                self.eval_result[data_name][eval_name].append(result)
            else:
                data_name, eval_name = item[1].split()
133
134
                res_mean = item[2]
                res_stdv = item[4]
135
136
137
138
                self.eval_result[data_name][f'{eval_name}-mean'].append(res_mean)
                self.eval_result[data_name][f'{eval_name}-stdv'].append(res_stdv)


139
def record_evaluation(eval_result: Dict[str, Dict[str, List[Any]]]) -> Callable:
140
    """Create a callback that records the evaluation history into ``eval_result``.
wxchan's avatar
wxchan committed
141
142
143
144

    Parameters
    ----------
    eval_result : dict
145
146
147
        Dictionary used to store all evaluation results of all validation sets.
        This should be initialized outside of your call to ``record_evaluation()`` and should be empty.
        Any initial contents of the dictionary will be deleted.
wxchan's avatar
wxchan committed
148

149
150
151
152
153
154
155
156
157
158
159
160
161
162
163
164
165
166
        .. rubric:: Example

        With two validation sets named 'eval' and 'train', and one evaluation metric named 'logloss'
        this dictionary after finishing a model training process will have the following structure:

        .. code-block::

            {
             'train':
                 {
                  'logloss': [0.48253, 0.35953, ...]
                 },
             'eval':
                 {
                  'logloss': [0.480385, 0.357756, ...]
                 }
            }

wxchan's avatar
wxchan committed
167
168
    Returns
    -------
169
    callback : _RecordEvaluationCallback
170
        The callback that records the evaluation history into the passed dictionary.
wxchan's avatar
wxchan committed
171
    """
172
    return _RecordEvaluationCallback(eval_result=eval_result)
wxchan's avatar
wxchan committed
173
174


175
176
177
178
179
180
181
182
183
184
185
186
187
188
189
190
191
192
193
194
195
196
197
198
199
200
201
202
class _ResetParameterCallback:
    """Internal reset parameter callable class."""

    def __init__(self, **kwargs: Union[list, Callable]) -> None:
        self.order = 10
        self.before_iteration = True

        self.kwargs = kwargs

    def __call__(self, env: CallbackEnv) -> None:
        new_parameters = {}
        for key, value in self.kwargs.items():
            if isinstance(value, list):
                if len(value) != env.end_iteration - env.begin_iteration:
                    raise ValueError(f"Length of list {key!r} has to be equal to 'num_boost_round'.")
                new_param = value[env.iteration - env.begin_iteration]
            elif callable(value):
                new_param = value(env.iteration - env.begin_iteration)
            else:
                raise ValueError("Only list and callable values are supported "
                                 "as a mapping from boosting round index to new parameter value.")
            if new_param != env.params.get(key, None):
                new_parameters[key] = new_param
        if new_parameters:
            env.model.reset_parameter(new_parameters)
            env.params.update(new_parameters)


203
def reset_parameter(**kwargs: Union[list, Callable]) -> Callable:
204
    """Create a callback that resets the parameter after the first iteration.
wxchan's avatar
wxchan committed
205

Nikita Titov's avatar
Nikita Titov committed
206
207
208
    .. note::

        The initial parameter will still take in-effect on first iteration.
wxchan's avatar
wxchan committed
209
210
211

    Parameters
    ----------
212
    **kwargs : value should be list or callable
213
        List of parameters for each boosting round
214
        or a callable that calculates the parameter in terms of
215
216
        current number of round (e.g. yields learning rate decay).
        If list lst, parameter = lst[current_round].
217
        If callable func, parameter = func(current_round).
218

wxchan's avatar
wxchan committed
219
220
    Returns
    -------
221
    callback : _ResetParameterCallback
222
        The callback that resets the parameter after the first iteration.
wxchan's avatar
wxchan committed
223
    """
224
    return _ResetParameterCallback(**kwargs)
wxchan's avatar
wxchan committed
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
class _EarlyStoppingCallback:
    """Internal early stopping callable class."""

    def __init__(
        self,
        stopping_rounds: int,
        first_metric_only: bool = False,
        verbose: bool = True,
        min_delta: Union[float, List[float]] = 0.0
    ) -> None:
        self.order = 30
        self.before_iteration = False

        self.stopping_rounds = stopping_rounds
        self.first_metric_only = first_metric_only
        self.verbose = verbose
        self.min_delta = min_delta

        self.enabled = True
        self._reset_storages()

    def _reset_storages(self) -> None:
        self.best_score = []
        self.best_iter = []
        self.best_score_list = []
        self.cmp_op = []
        self.first_metric = ''

    def _gt_delta(self, curr_score: float, best_score: float, delta: float) -> bool:
        return curr_score > best_score + delta

    def _lt_delta(self, curr_score: float, best_score: float, delta: float) -> bool:
        return curr_score < best_score - delta

    def _init(self, env: CallbackEnv) -> None:
        self.enabled = not any(env.params.get(boost_alias, "") == 'dart' for boost_alias
                               in _ConfigAliases.get("boosting"))
        if not self.enabled:
265
            _log_warning('Early stopping is not available in dart mode')
266
            return
267
        if not env.evaluation_result_list:
268
269
            raise ValueError('For early stopping, '
                             'at least one dataset and eval metric is required for evaluation')
wxchan's avatar
wxchan committed
270

271
        if self.stopping_rounds <= 0:
272
273
            raise ValueError("stopping_rounds should be greater than zero.")

274
275
        if self.verbose:
            _log_info(f"Training until validation scores don't improve for {self.stopping_rounds} rounds")
wxchan's avatar
wxchan committed
276

277
        self._reset_storages()
278

279
280
        n_metrics = len(set(m[1] for m in env.evaluation_result_list))
        n_datasets = len(env.evaluation_result_list) // n_metrics
281
282
        if isinstance(self.min_delta, list):
            if not all(t >= 0 for t in self.min_delta):
283
                raise ValueError('Values for early stopping min_delta must be non-negative.')
284
285
            if len(self.min_delta) == 0:
                if self.verbose:
286
287
                    _log_info('Disabling min_delta for early stopping.')
                deltas = [0.0] * n_datasets * n_metrics
288
289
290
291
            elif len(self.min_delta) == 1:
                if self.verbose:
                    _log_info(f'Using {self.min_delta[0]} as min_delta for all metrics.')
                deltas = self.min_delta * n_datasets * n_metrics
292
            else:
293
                if len(self.min_delta) != n_metrics:
294
                    raise ValueError('Must provide a single value for min_delta or as many as metrics.')
295
296
297
                if self.first_metric_only and self.verbose:
                    _log_info(f'Using only {self.min_delta[0]} as early stopping min_delta.')
                deltas = self.min_delta * n_datasets
298
        else:
299
            if self.min_delta < 0:
300
                raise ValueError('Early stopping min_delta must be non-negative.')
301
302
303
            if self.min_delta > 0 and n_metrics > 1 and not self.first_metric_only and self.verbose:
                _log_info(f'Using {self.min_delta} as min_delta for all metrics.')
            deltas = [self.min_delta] * n_datasets * n_metrics
304

305
        # split is needed for "<dataset type> <metric>" case (e.g. "train l1")
306
        self.first_metric = env.evaluation_result_list[0][1].split(" ")[-1]
307
        for eval_ret, delta in zip(env.evaluation_result_list, deltas):
308
309
            self.best_iter.append(0)
            self.best_score_list.append(None)
310
            if eval_ret[3]:  # greater is better
311
312
                self.best_score.append(float('-inf'))
                self.cmp_op.append(partial(self._gt_delta, delta=delta))
wxchan's avatar
wxchan committed
313
            else:
314
315
                self.best_score.append(float('inf'))
                self.cmp_op.append(partial(self._lt_delta, delta=delta))
wxchan's avatar
wxchan committed
316

317
    def _final_iteration_check(self, env: CallbackEnv, eval_name_splitted: List[str], i: int) -> None:
318
        if env.iteration == env.end_iteration - 1:
319
320
            if self.verbose:
                best_score_str = '\t'.join([_format_eval_result(x) for x in self.best_score_list[i]])
321
                _log_info('Did not meet early stopping. '
322
323
                          f'Best iteration is:\n[{self.best_iter[i] + 1}]\t{best_score_str}')
                if self.first_metric_only:
324
                    _log_info(f"Evaluated only: {eval_name_splitted[-1]}")
325
            raise EarlyStopException(self.best_iter[i], self.best_score_list[i])
326

327
    def __call__(self, env: CallbackEnv) -> None:
328
        if env.iteration == env.begin_iteration:
329
330
            self._init(env)
        if not self.enabled:
331
            return
332
        for i in range(len(env.evaluation_result_list)):
wxchan's avatar
wxchan committed
333
            score = env.evaluation_result_list[i][2]
334
335
336
337
            if self.best_score_list[i] is None or self.cmp_op[i](score, self.best_score[i]):
                self.best_score[i] = score
                self.best_iter[i] = env.iteration
                self.best_score_list[i] = env.evaluation_result_list
338
339
            # split is needed for "<dataset type> <metric>" case (e.g. "train l1")
            eval_name_splitted = env.evaluation_result_list[i][1].split(" ")
340
            if self.first_metric_only and self.first_metric != eval_name_splitted[-1]:
341
342
                continue  # use only the first metric for early stopping
            if ((env.evaluation_result_list[i][0] == "cv_agg" and eval_name_splitted[0] == "train"
343
344
                    or env.evaluation_result_list[i][0] == env.model._train_data_name)):
                self._final_iteration_check(env, eval_name_splitted, i)
345
                continue  # train data for lgb.cv or sklearn wrapper (underlying lgb.train)
346
347
348
349
350
            elif env.iteration - self.best_iter[i] >= self.stopping_rounds:
                if self.verbose:
                    eval_result_str = '\t'.join([_format_eval_result(x) for x in self.best_score_list[i]])
                    _log_info(f"Early stopping, best iteration is:\n[{self.best_iter[i] + 1}]\t{eval_result_str}")
                    if self.first_metric_only:
351
                        _log_info(f"Evaluated only: {eval_name_splitted[-1]}")
352
353
354
355
356
357
358
359
360
361
362
363
364
365
366
367
368
369
370
371
372
373
374
375
376
377
378
379
380
381
382
383
384
385
386
387
388
                raise EarlyStopException(self.best_iter[i], self.best_score_list[i])
            self._final_iteration_check(env, eval_name_splitted, i)


def early_stopping(stopping_rounds: int, first_metric_only: bool = False, verbose: bool = True, min_delta: Union[float, List[float]] = 0.0) -> _EarlyStoppingCallback:
    """Create a callback that activates early stopping.

    Activates early stopping.
    The model will train until the validation score doesn't improve by at least ``min_delta``.
    Validation score needs to improve at least every ``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 ``first_metric_only`` to True.
    The index of iteration that has the best performance will be saved in the ``best_iteration`` attribute of a model.

    Parameters
    ----------
    stopping_rounds : int
        The possible number of rounds without the trend occurrence.
    first_metric_only : bool, optional (default=False)
        Whether to use only the first metric for early stopping.
    verbose : bool, optional (default=True)
        Whether to log message with early stopping information.
        By default, standard output resource is used.
        Use ``register_logger()`` function to register a custom logger.
    min_delta : float or list of float, optional (default=0.0)
        Minimum improvement in score to keep training.
        If float, this single value is used for all metrics.
        If list, its length should match the total number of metrics.

    Returns
    -------
    callback : _EarlyStoppingCallback
        The callback that activates early stopping.
    """
    return _EarlyStoppingCallback(stopping_rounds=stopping_rounds, first_metric_only=first_metric_only, verbose=verbose, min_delta=min_delta)