1579 lines
64 KiB
Python
1579 lines
64 KiB
Python
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# Authors: Peter Prettenhofer <peter.prettenhofer@gmail.com> (main author)
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# Mathieu Blondel (partial_fit support)
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#
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# License: BSD 3 clause
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"""Classification and regression using Stochastic Gradient Descent (SGD)."""
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import numpy as np
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import warnings
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from abc import ABCMeta, abstractmethod
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from joblib import Parallel, delayed
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from ..base import clone, is_classifier
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from ._base import LinearClassifierMixin, SparseCoefMixin
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from ._base import make_dataset
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from ..base import BaseEstimator, RegressorMixin
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from ..utils import check_array, check_random_state, check_X_y
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from ..utils.extmath import safe_sparse_dot
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from ..utils.multiclass import _check_partial_fit_first_call
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from ..utils.validation import check_is_fitted, _check_sample_weight
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from ..utils.validation import _deprecate_positional_args
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from ..exceptions import ConvergenceWarning
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from ..model_selection import StratifiedShuffleSplit, ShuffleSplit
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from ._sgd_fast import _plain_sgd
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from ..utils import compute_class_weight
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from ._sgd_fast import Hinge
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from ._sgd_fast import SquaredHinge
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from ._sgd_fast import Log
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from ._sgd_fast import ModifiedHuber
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from ._sgd_fast import SquaredLoss
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from ._sgd_fast import Huber
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from ._sgd_fast import EpsilonInsensitive
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from ._sgd_fast import SquaredEpsilonInsensitive
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from ..utils.fixes import _joblib_parallel_args
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from ..utils import deprecated
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LEARNING_RATE_TYPES = {"constant": 1, "optimal": 2, "invscaling": 3,
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"adaptive": 4, "pa1": 5, "pa2": 6}
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PENALTY_TYPES = {"none": 0, "l2": 2, "l1": 1, "elasticnet": 3}
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DEFAULT_EPSILON = 0.1
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# Default value of ``epsilon`` parameter.
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MAX_INT = np.iinfo(np.int32).max
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class _ValidationScoreCallback:
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"""Callback for early stopping based on validation score"""
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def __init__(self, estimator, X_val, y_val, sample_weight_val,
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classes=None):
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self.estimator = clone(estimator)
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self.estimator.t_ = 1 # to pass check_is_fitted
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if classes is not None:
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self.estimator.classes_ = classes
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self.X_val = X_val
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self.y_val = y_val
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self.sample_weight_val = sample_weight_val
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def __call__(self, coef, intercept):
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est = self.estimator
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est.coef_ = coef.reshape(1, -1)
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est.intercept_ = np.atleast_1d(intercept)
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return est.score(self.X_val, self.y_val, self.sample_weight_val)
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class BaseSGD(SparseCoefMixin, BaseEstimator, metaclass=ABCMeta):
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"""Base class for SGD classification and regression."""
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@_deprecate_positional_args
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def __init__(self, loss, *, penalty='l2', alpha=0.0001, C=1.0,
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l1_ratio=0.15, fit_intercept=True, max_iter=1000, tol=1e-3,
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shuffle=True, verbose=0, epsilon=0.1, random_state=None,
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learning_rate="optimal", eta0=0.0, power_t=0.5,
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early_stopping=False, validation_fraction=0.1,
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n_iter_no_change=5, warm_start=False, average=False):
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self.loss = loss
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self.penalty = penalty
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self.learning_rate = learning_rate
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self.epsilon = epsilon
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self.alpha = alpha
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self.C = C
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self.l1_ratio = l1_ratio
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self.fit_intercept = fit_intercept
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self.shuffle = shuffle
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self.random_state = random_state
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self.verbose = verbose
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self.eta0 = eta0
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self.power_t = power_t
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self.early_stopping = early_stopping
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self.validation_fraction = validation_fraction
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self.n_iter_no_change = n_iter_no_change
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self.warm_start = warm_start
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self.average = average
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self.max_iter = max_iter
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self.tol = tol
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# current tests expect init to do parameter validation
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# but we are not allowed to set attributes
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self._validate_params()
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def set_params(self, **kwargs):
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"""Set and validate the parameters of estimator.
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Parameters
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----------
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**kwargs : dict
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Estimator parameters.
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Returns
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-------
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self : object
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Estimator instance.
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"""
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super().set_params(**kwargs)
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self._validate_params()
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return self
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@abstractmethod
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def fit(self, X, y):
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"""Fit model."""
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def _validate_params(self, for_partial_fit=False):
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"""Validate input params. """
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if not isinstance(self.shuffle, bool):
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raise ValueError("shuffle must be either True or False")
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if not isinstance(self.early_stopping, bool):
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raise ValueError("early_stopping must be either True or False")
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if self.early_stopping and for_partial_fit:
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raise ValueError("early_stopping should be False with partial_fit")
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if self.max_iter is not None and self.max_iter <= 0:
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raise ValueError("max_iter must be > zero. Got %f" % self.max_iter)
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if not (0.0 <= self.l1_ratio <= 1.0):
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raise ValueError("l1_ratio must be in [0, 1]")
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if self.alpha < 0.0:
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raise ValueError("alpha must be >= 0")
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if self.n_iter_no_change < 1:
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raise ValueError("n_iter_no_change must be >= 1")
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if not (0.0 < self.validation_fraction < 1.0):
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raise ValueError("validation_fraction must be in range (0, 1)")
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if self.learning_rate in ("constant", "invscaling", "adaptive"):
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if self.eta0 <= 0.0:
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raise ValueError("eta0 must be > 0")
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if self.learning_rate == "optimal" and self.alpha == 0:
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raise ValueError("alpha must be > 0 since "
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"learning_rate is 'optimal'. alpha is used "
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"to compute the optimal learning rate.")
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# raises ValueError if not registered
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self._get_penalty_type(self.penalty)
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self._get_learning_rate_type(self.learning_rate)
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if self.loss not in self.loss_functions:
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raise ValueError("The loss %s is not supported. " % self.loss)
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def _get_loss_function(self, loss):
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"""Get concrete ``LossFunction`` object for str ``loss``. """
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try:
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loss_ = self.loss_functions[loss]
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loss_class, args = loss_[0], loss_[1:]
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if loss in ('huber', 'epsilon_insensitive',
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'squared_epsilon_insensitive'):
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args = (self.epsilon, )
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return loss_class(*args)
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except KeyError:
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raise ValueError("The loss %s is not supported. " % loss)
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def _get_learning_rate_type(self, learning_rate):
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try:
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return LEARNING_RATE_TYPES[learning_rate]
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except KeyError:
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raise ValueError("learning rate %s "
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"is not supported. " % learning_rate)
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def _get_penalty_type(self, penalty):
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penalty = str(penalty).lower()
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try:
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return PENALTY_TYPES[penalty]
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except KeyError:
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raise ValueError("Penalty %s is not supported. " % penalty)
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def _allocate_parameter_mem(self, n_classes, n_features, coef_init=None,
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intercept_init=None):
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"""Allocate mem for parameters; initialize if provided."""
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if n_classes > 2:
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# allocate coef_ for multi-class
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if coef_init is not None:
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coef_init = np.asarray(coef_init, order="C")
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if coef_init.shape != (n_classes, n_features):
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raise ValueError("Provided ``coef_`` does not match "
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"dataset. ")
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self.coef_ = coef_init
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else:
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self.coef_ = np.zeros((n_classes, n_features),
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dtype=np.float64, order="C")
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# allocate intercept_ for multi-class
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if intercept_init is not None:
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intercept_init = np.asarray(intercept_init, order="C")
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if intercept_init.shape != (n_classes, ):
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raise ValueError("Provided intercept_init "
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"does not match dataset.")
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self.intercept_ = intercept_init
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else:
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self.intercept_ = np.zeros(n_classes, dtype=np.float64,
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order="C")
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else:
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# allocate coef_ for binary problem
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if coef_init is not None:
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coef_init = np.asarray(coef_init, dtype=np.float64,
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order="C")
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coef_init = coef_init.ravel()
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if coef_init.shape != (n_features,):
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raise ValueError("Provided coef_init does not "
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"match dataset.")
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self.coef_ = coef_init
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else:
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self.coef_ = np.zeros(n_features,
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dtype=np.float64,
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order="C")
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# allocate intercept_ for binary problem
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if intercept_init is not None:
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intercept_init = np.asarray(intercept_init, dtype=np.float64)
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if intercept_init.shape != (1,) and intercept_init.shape != ():
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raise ValueError("Provided intercept_init "
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"does not match dataset.")
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self.intercept_ = intercept_init.reshape(1,)
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else:
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self.intercept_ = np.zeros(1, dtype=np.float64, order="C")
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# initialize average parameters
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if self.average > 0:
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self._standard_coef = self.coef_
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self._standard_intercept = self.intercept_
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self._average_coef = np.zeros(self.coef_.shape,
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dtype=np.float64,
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order="C")
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self._average_intercept = np.zeros(self._standard_intercept.shape,
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dtype=np.float64,
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order="C")
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def _make_validation_split(self, y):
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"""Split the dataset between training set and validation set.
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Parameters
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----------
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y : ndarray of shape (n_samples, )
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Target values.
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Returns
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-------
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validation_mask : ndarray of shape (n_samples, )
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Equal to 1 on the validation set, 0 on the training set.
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"""
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n_samples = y.shape[0]
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validation_mask = np.zeros(n_samples, dtype=np.uint8)
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if not self.early_stopping:
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# use the full set for training, with an empty validation set
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return validation_mask
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if is_classifier(self):
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splitter_type = StratifiedShuffleSplit
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else:
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splitter_type = ShuffleSplit
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cv = splitter_type(test_size=self.validation_fraction,
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random_state=self.random_state)
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idx_train, idx_val = next(cv.split(np.zeros(shape=(y.shape[0], 1)), y))
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if idx_train.shape[0] == 0 or idx_val.shape[0] == 0:
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raise ValueError(
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"Splitting %d samples into a train set and a validation set "
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"with validation_fraction=%r led to an empty set (%d and %d "
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"samples). Please either change validation_fraction, increase "
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"number of samples, or disable early_stopping."
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% (n_samples, self.validation_fraction, idx_train.shape[0],
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idx_val.shape[0]))
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validation_mask[idx_val] = 1
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return validation_mask
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def _make_validation_score_cb(self, validation_mask, X, y, sample_weight,
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classes=None):
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if not self.early_stopping:
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return None
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return _ValidationScoreCallback(
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self, X[validation_mask], y[validation_mask],
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sample_weight[validation_mask], classes=classes)
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# mypy error: Decorated property not supported
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@deprecated("Attribute standard_coef_ was deprecated " # type: ignore
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"in version 0.23 and will be removed in 0.25.")
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@property
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def standard_coef_(self):
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return self._standard_coef
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# mypy error: Decorated property not supported
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@deprecated( # type: ignore
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"Attribute standard_intercept_ was deprecated "
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"in version 0.23 and will be removed in 0.25."
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)
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@property
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def standard_intercept_(self):
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return self._standard_intercept
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# mypy error: Decorated property not supported
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@deprecated("Attribute average_coef_ was deprecated " # type: ignore
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"in version 0.23 and will be removed in 0.25.")
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@property
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def average_coef_(self):
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return self._average_coef
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# mypy error: Decorated property not supported
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@deprecated("Attribute average_intercept_ was deprecated " # type: ignore
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"in version 0.23 and will be removed in 0.25.")
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@property
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def average_intercept_(self):
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return self._average_intercept
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def _prepare_fit_binary(est, y, i):
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"""Initialization for fit_binary.
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Returns y, coef, intercept, average_coef, average_intercept.
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"""
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y_i = np.ones(y.shape, dtype=np.float64, order="C")
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y_i[y != est.classes_[i]] = -1.0
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average_intercept = 0
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average_coef = None
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if len(est.classes_) == 2:
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if not est.average:
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coef = est.coef_.ravel()
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intercept = est.intercept_[0]
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else:
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coef = est._standard_coef.ravel()
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intercept = est._standard_intercept[0]
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average_coef = est._average_coef.ravel()
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average_intercept = est._average_intercept[0]
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else:
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if not est.average:
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coef = est.coef_[i]
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intercept = est.intercept_[i]
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else:
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coef = est._standard_coef[i]
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intercept = est._standard_intercept[i]
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average_coef = est._average_coef[i]
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average_intercept = est._average_intercept[i]
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return y_i, coef, intercept, average_coef, average_intercept
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def fit_binary(est, i, X, y, alpha, C, learning_rate, max_iter,
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pos_weight, neg_weight, sample_weight, validation_mask=None,
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random_state=None):
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"""Fit a single binary classifier.
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The i'th class is considered the "positive" class.
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Parameters
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----------
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est : Estimator object
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The estimator to fit
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i : int
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Index of the positive class
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X : numpy array or sparse matrix of shape [n_samples,n_features]
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Training data
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y : numpy array of shape [n_samples, ]
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Target values
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alpha : float
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The regularization parameter
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C : float
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Maximum step size for passive aggressive
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learning_rate : string
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The learning rate. Accepted values are 'constant', 'optimal',
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'invscaling', 'pa1' and 'pa2'.
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max_iter : int
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The maximum number of iterations (epochs)
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pos_weight : float
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The weight of the positive class
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neg_weight : float
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The weight of the negative class
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sample_weight : numpy array of shape [n_samples, ]
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The weight of each sample
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validation_mask : numpy array of shape [n_samples, ], default=None
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Precomputed validation mask in case _fit_binary is called in the
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context of a one-vs-rest reduction.
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random_state : int, RandomState instance, default=None
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If int, random_state is the seed used by the random number generator;
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If RandomState instance, random_state is the random number generator;
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If None, the random number generator is the RandomState instance used
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by `np.random`.
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"""
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# if average is not true, average_coef, and average_intercept will be
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# unused
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y_i, coef, intercept, average_coef, average_intercept = \
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_prepare_fit_binary(est, y, i)
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assert y_i.shape[0] == y.shape[0] == sample_weight.shape[0]
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random_state = check_random_state(random_state)
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dataset, intercept_decay = make_dataset(
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||
|
X, y_i, sample_weight, random_state=random_state)
|
||
|
|
||
|
penalty_type = est._get_penalty_type(est.penalty)
|
||
|
learning_rate_type = est._get_learning_rate_type(learning_rate)
|
||
|
|
||
|
if validation_mask is None:
|
||
|
validation_mask = est._make_validation_split(y_i)
|
||
|
classes = np.array([-1, 1], dtype=y_i.dtype)
|
||
|
validation_score_cb = est._make_validation_score_cb(
|
||
|
validation_mask, X, y_i, sample_weight, classes=classes)
|
||
|
|
||
|
# numpy mtrand expects a C long which is a signed 32 bit integer under
|
||
|
# Windows
|
||
|
seed = random_state.randint(MAX_INT)
|
||
|
|
||
|
tol = est.tol if est.tol is not None else -np.inf
|
||
|
|
||
|
coef, intercept, average_coef, average_intercept, n_iter_ = _plain_sgd(
|
||
|
coef, intercept, average_coef, average_intercept, est.loss_function_,
|
||
|
penalty_type, alpha, C, est.l1_ratio, dataset, validation_mask,
|
||
|
est.early_stopping, validation_score_cb, int(est.n_iter_no_change),
|
||
|
max_iter, tol, int(est.fit_intercept), int(est.verbose),
|
||
|
int(est.shuffle), seed, pos_weight, neg_weight, learning_rate_type,
|
||
|
est.eta0, est.power_t, est.t_, intercept_decay, est.average)
|
||
|
|
||
|
if est.average:
|
||
|
if len(est.classes_) == 2:
|
||
|
est._average_intercept[0] = average_intercept
|
||
|
else:
|
||
|
est._average_intercept[i] = average_intercept
|
||
|
|
||
|
return coef, intercept, n_iter_
|
||
|
|
||
|
|
||
|
class BaseSGDClassifier(LinearClassifierMixin, BaseSGD, metaclass=ABCMeta):
|
||
|
|
||
|
loss_functions = {
|
||
|
"hinge": (Hinge, 1.0),
|
||
|
"squared_hinge": (SquaredHinge, 1.0),
|
||
|
"perceptron": (Hinge, 0.0),
|
||
|
"log": (Log, ),
|
||
|
"modified_huber": (ModifiedHuber, ),
|
||
|
"squared_loss": (SquaredLoss, ),
|
||
|
"huber": (Huber, DEFAULT_EPSILON),
|
||
|
"epsilon_insensitive": (EpsilonInsensitive, DEFAULT_EPSILON),
|
||
|
"squared_epsilon_insensitive": (SquaredEpsilonInsensitive,
|
||
|
DEFAULT_EPSILON),
|
||
|
}
|
||
|
|
||
|
@abstractmethod
|
||
|
@_deprecate_positional_args
|
||
|
def __init__(self, loss="hinge", *, penalty='l2', alpha=0.0001,
|
||
|
l1_ratio=0.15, fit_intercept=True, max_iter=1000, tol=1e-3,
|
||
|
shuffle=True, verbose=0, epsilon=DEFAULT_EPSILON, n_jobs=None,
|
||
|
random_state=None, learning_rate="optimal", eta0=0.0,
|
||
|
power_t=0.5, early_stopping=False,
|
||
|
validation_fraction=0.1, n_iter_no_change=5,
|
||
|
class_weight=None, warm_start=False, average=False):
|
||
|
|
||
|
super().__init__(
|
||
|
loss=loss, penalty=penalty, alpha=alpha, l1_ratio=l1_ratio,
|
||
|
fit_intercept=fit_intercept, max_iter=max_iter, tol=tol,
|
||
|
shuffle=shuffle, verbose=verbose, epsilon=epsilon,
|
||
|
random_state=random_state, learning_rate=learning_rate, eta0=eta0,
|
||
|
power_t=power_t, early_stopping=early_stopping,
|
||
|
validation_fraction=validation_fraction,
|
||
|
n_iter_no_change=n_iter_no_change, warm_start=warm_start,
|
||
|
average=average)
|
||
|
self.class_weight = class_weight
|
||
|
self.n_jobs = n_jobs
|
||
|
|
||
|
def _partial_fit(self, X, y, alpha, C,
|
||
|
loss, learning_rate, max_iter,
|
||
|
classes, sample_weight,
|
||
|
coef_init, intercept_init):
|
||
|
X, y = check_X_y(X, y, accept_sparse='csr', dtype=np.float64,
|
||
|
order="C", accept_large_sparse=False)
|
||
|
|
||
|
n_samples, n_features = X.shape
|
||
|
|
||
|
_check_partial_fit_first_call(self, classes)
|
||
|
|
||
|
n_classes = self.classes_.shape[0]
|
||
|
|
||
|
# Allocate datastructures from input arguments
|
||
|
self._expanded_class_weight = compute_class_weight(
|
||
|
self.class_weight, classes=self.classes_, y=y)
|
||
|
sample_weight = _check_sample_weight(sample_weight, X)
|
||
|
|
||
|
if getattr(self, "coef_", None) is None or coef_init is not None:
|
||
|
self._allocate_parameter_mem(n_classes, n_features,
|
||
|
coef_init, intercept_init)
|
||
|
elif n_features != self.coef_.shape[-1]:
|
||
|
raise ValueError("Number of features %d does not match previous "
|
||
|
"data %d." % (n_features, self.coef_.shape[-1]))
|
||
|
|
||
|
self.loss_function_ = self._get_loss_function(loss)
|
||
|
if not hasattr(self, "t_"):
|
||
|
self.t_ = 1.0
|
||
|
|
||
|
# delegate to concrete training procedure
|
||
|
if n_classes > 2:
|
||
|
self._fit_multiclass(X, y, alpha=alpha, C=C,
|
||
|
learning_rate=learning_rate,
|
||
|
sample_weight=sample_weight,
|
||
|
max_iter=max_iter)
|
||
|
elif n_classes == 2:
|
||
|
self._fit_binary(X, y, alpha=alpha, C=C,
|
||
|
learning_rate=learning_rate,
|
||
|
sample_weight=sample_weight,
|
||
|
max_iter=max_iter)
|
||
|
else:
|
||
|
raise ValueError(
|
||
|
"The number of classes has to be greater than one;"
|
||
|
" got %d class" % n_classes)
|
||
|
|
||
|
return self
|
||
|
|
||
|
def _fit(self, X, y, alpha, C, loss, learning_rate, coef_init=None,
|
||
|
intercept_init=None, sample_weight=None):
|
||
|
self._validate_params()
|
||
|
if hasattr(self, "classes_"):
|
||
|
self.classes_ = None
|
||
|
|
||
|
X, y = self._validate_data(X, y, accept_sparse='csr',
|
||
|
dtype=np.float64, order="C",
|
||
|
accept_large_sparse=False)
|
||
|
|
||
|
# labels can be encoded as float, int, or string literals
|
||
|
# np.unique sorts in asc order; largest class id is positive class
|
||
|
classes = np.unique(y)
|
||
|
|
||
|
if self.warm_start and hasattr(self, "coef_"):
|
||
|
if coef_init is None:
|
||
|
coef_init = self.coef_
|
||
|
if intercept_init is None:
|
||
|
intercept_init = self.intercept_
|
||
|
else:
|
||
|
self.coef_ = None
|
||
|
self.intercept_ = None
|
||
|
|
||
|
if self.average > 0:
|
||
|
self._standard_coef = self.coef_
|
||
|
self._standard_intercept = self.intercept_
|
||
|
self._average_coef = None
|
||
|
self._average_intercept = None
|
||
|
|
||
|
# Clear iteration count for multiple call to fit.
|
||
|
self.t_ = 1.0
|
||
|
|
||
|
self._partial_fit(X, y, alpha, C, loss, learning_rate, self.max_iter,
|
||
|
classes, sample_weight, coef_init, intercept_init)
|
||
|
|
||
|
if (self.tol is not None and self.tol > -np.inf
|
||
|
and self.n_iter_ == self.max_iter):
|
||
|
warnings.warn("Maximum number of iteration reached before "
|
||
|
"convergence. Consider increasing max_iter to "
|
||
|
"improve the fit.",
|
||
|
ConvergenceWarning)
|
||
|
return self
|
||
|
|
||
|
def _fit_binary(self, X, y, alpha, C, sample_weight,
|
||
|
learning_rate, max_iter):
|
||
|
"""Fit a binary classifier on X and y. """
|
||
|
coef, intercept, n_iter_ = fit_binary(self, 1, X, y, alpha, C,
|
||
|
learning_rate, max_iter,
|
||
|
self._expanded_class_weight[1],
|
||
|
self._expanded_class_weight[0],
|
||
|
sample_weight,
|
||
|
random_state=self.random_state)
|
||
|
|
||
|
self.t_ += n_iter_ * X.shape[0]
|
||
|
self.n_iter_ = n_iter_
|
||
|
|
||
|
# need to be 2d
|
||
|
if self.average > 0:
|
||
|
if self.average <= self.t_ - 1:
|
||
|
self.coef_ = self._average_coef.reshape(1, -1)
|
||
|
self.intercept_ = self._average_intercept
|
||
|
else:
|
||
|
self.coef_ = self._standard_coef.reshape(1, -1)
|
||
|
self._standard_intercept = np.atleast_1d(intercept)
|
||
|
self.intercept_ = self._standard_intercept
|
||
|
else:
|
||
|
self.coef_ = coef.reshape(1, -1)
|
||
|
# intercept is a float, need to convert it to an array of length 1
|
||
|
self.intercept_ = np.atleast_1d(intercept)
|
||
|
|
||
|
def _fit_multiclass(self, X, y, alpha, C, learning_rate,
|
||
|
sample_weight, max_iter):
|
||
|
"""Fit a multi-class classifier by combining binary classifiers
|
||
|
|
||
|
Each binary classifier predicts one class versus all others. This
|
||
|
strategy is called OvA (One versus All) or OvR (One versus Rest).
|
||
|
"""
|
||
|
# Precompute the validation split using the multiclass labels
|
||
|
# to ensure proper balancing of the classes.
|
||
|
validation_mask = self._make_validation_split(y)
|
||
|
|
||
|
# Use joblib to fit OvA in parallel.
|
||
|
# Pick the random seed for each job outside of fit_binary to avoid
|
||
|
# sharing the estimator random state between threads which could lead
|
||
|
# to non-deterministic behavior
|
||
|
random_state = check_random_state(self.random_state)
|
||
|
seeds = random_state.randint(MAX_INT, size=len(self.classes_))
|
||
|
result = Parallel(n_jobs=self.n_jobs, verbose=self.verbose,
|
||
|
**_joblib_parallel_args(require="sharedmem"))(
|
||
|
delayed(fit_binary)(self, i, X, y, alpha, C, learning_rate,
|
||
|
max_iter, self._expanded_class_weight[i],
|
||
|
1., sample_weight,
|
||
|
validation_mask=validation_mask,
|
||
|
random_state=seed)
|
||
|
for i, seed in enumerate(seeds))
|
||
|
|
||
|
# take the maximum of n_iter_ over every binary fit
|
||
|
n_iter_ = 0.
|
||
|
for i, (_, intercept, n_iter_i) in enumerate(result):
|
||
|
self.intercept_[i] = intercept
|
||
|
n_iter_ = max(n_iter_, n_iter_i)
|
||
|
|
||
|
self.t_ += n_iter_ * X.shape[0]
|
||
|
self.n_iter_ = n_iter_
|
||
|
|
||
|
if self.average > 0:
|
||
|
if self.average <= self.t_ - 1.0:
|
||
|
self.coef_ = self._average_coef
|
||
|
self.intercept_ = self._average_intercept
|
||
|
else:
|
||
|
self.coef_ = self._standard_coef
|
||
|
self._standard_intercept = np.atleast_1d(self.intercept_)
|
||
|
self.intercept_ = self._standard_intercept
|
||
|
|
||
|
def partial_fit(self, X, y, classes=None, sample_weight=None):
|
||
|
"""Perform one epoch of stochastic gradient descent on given samples.
|
||
|
|
||
|
Internally, this method uses ``max_iter = 1``. Therefore, it is not
|
||
|
guaranteed that a minimum of the cost function is reached after calling
|
||
|
it once. Matters such as objective convergence and early stopping
|
||
|
should be handled by the user.
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
X : {array-like, sparse matrix}, shape (n_samples, n_features)
|
||
|
Subset of the training data.
|
||
|
|
||
|
y : ndarray of shape (n_samples,)
|
||
|
Subset of the target values.
|
||
|
|
||
|
classes : ndarray of shape (n_classes,), default=None
|
||
|
Classes across all calls to partial_fit.
|
||
|
Can be obtained by via `np.unique(y_all)`, where y_all is the
|
||
|
target vector of the entire dataset.
|
||
|
This argument is required for the first call to partial_fit
|
||
|
and can be omitted in the subsequent calls.
|
||
|
Note that y doesn't need to contain all labels in `classes`.
|
||
|
|
||
|
sample_weight : array-like, shape (n_samples,), default=None
|
||
|
Weights applied to individual samples.
|
||
|
If not provided, uniform weights are assumed.
|
||
|
|
||
|
Returns
|
||
|
-------
|
||
|
self :
|
||
|
Returns an instance of self.
|
||
|
"""
|
||
|
self._validate_params(for_partial_fit=True)
|
||
|
if self.class_weight in ['balanced']:
|
||
|
raise ValueError("class_weight '{0}' is not supported for "
|
||
|
"partial_fit. In order to use 'balanced' weights,"
|
||
|
" use compute_class_weight('{0}', "
|
||
|
"classes=classes, y=y). "
|
||
|
"In place of y you can us a large enough sample "
|
||
|
"of the full training set target to properly "
|
||
|
"estimate the class frequency distributions. "
|
||
|
"Pass the resulting weights as the class_weight "
|
||
|
"parameter.".format(self.class_weight))
|
||
|
return self._partial_fit(X, y, alpha=self.alpha, C=1.0, loss=self.loss,
|
||
|
learning_rate=self.learning_rate, max_iter=1,
|
||
|
classes=classes, sample_weight=sample_weight,
|
||
|
coef_init=None, intercept_init=None)
|
||
|
|
||
|
def fit(self, X, y, coef_init=None, intercept_init=None,
|
||
|
sample_weight=None):
|
||
|
"""Fit linear model with Stochastic Gradient Descent.
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
X : {array-like, sparse matrix}, shape (n_samples, n_features)
|
||
|
Training data.
|
||
|
|
||
|
y : ndarray of shape (n_samples,)
|
||
|
Target values.
|
||
|
|
||
|
coef_init : ndarray of shape (n_classes, n_features), default=None
|
||
|
The initial coefficients to warm-start the optimization.
|
||
|
|
||
|
intercept_init : ndarray of shape (n_classes,), default=None
|
||
|
The initial intercept to warm-start the optimization.
|
||
|
|
||
|
sample_weight : array-like, shape (n_samples,), default=None
|
||
|
Weights applied to individual samples.
|
||
|
If not provided, uniform weights are assumed. These weights will
|
||
|
be multiplied with class_weight (passed through the
|
||
|
constructor) if class_weight is specified.
|
||
|
|
||
|
Returns
|
||
|
-------
|
||
|
self :
|
||
|
Returns an instance of self.
|
||
|
"""
|
||
|
return self._fit(X, y, alpha=self.alpha, C=1.0,
|
||
|
loss=self.loss, learning_rate=self.learning_rate,
|
||
|
coef_init=coef_init, intercept_init=intercept_init,
|
||
|
sample_weight=sample_weight)
|
||
|
|
||
|
|
||
|
class SGDClassifier(BaseSGDClassifier):
|
||
|
"""Linear classifiers (SVM, logistic regression, etc.) with SGD training.
|
||
|
|
||
|
This estimator implements regularized linear models with stochastic
|
||
|
gradient descent (SGD) learning: the gradient of the loss is estimated
|
||
|
each sample at a time and the model is updated along the way with a
|
||
|
decreasing strength schedule (aka learning rate). SGD allows minibatch
|
||
|
(online/out-of-core) learning via the `partial_fit` method.
|
||
|
For best results using the default learning rate schedule, the data should
|
||
|
have zero mean and unit variance.
|
||
|
|
||
|
This implementation works with data represented as dense or sparse arrays
|
||
|
of floating point values for the features. The model it fits can be
|
||
|
controlled with the loss parameter; by default, it fits a linear support
|
||
|
vector machine (SVM).
|
||
|
|
||
|
The regularizer is a penalty added to the loss function that shrinks model
|
||
|
parameters towards the zero vector using either the squared euclidean norm
|
||
|
L2 or the absolute norm L1 or a combination of both (Elastic Net). If the
|
||
|
parameter update crosses the 0.0 value because of the regularizer, the
|
||
|
update is truncated to 0.0 to allow for learning sparse models and achieve
|
||
|
online feature selection.
|
||
|
|
||
|
Read more in the :ref:`User Guide <sgd>`.
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
loss : str, default='hinge'
|
||
|
The loss function to be used. Defaults to 'hinge', which gives a
|
||
|
linear SVM.
|
||
|
|
||
|
The possible options are 'hinge', 'log', 'modified_huber',
|
||
|
'squared_hinge', 'perceptron', or a regression loss: 'squared_loss',
|
||
|
'huber', 'epsilon_insensitive', or 'squared_epsilon_insensitive'.
|
||
|
|
||
|
The 'log' loss gives logistic regression, a probabilistic classifier.
|
||
|
'modified_huber' is another smooth loss that brings tolerance to
|
||
|
outliers as well as probability estimates.
|
||
|
'squared_hinge' is like hinge but is quadratically penalized.
|
||
|
'perceptron' is the linear loss used by the perceptron algorithm.
|
||
|
The other losses are designed for regression but can be useful in
|
||
|
classification as well; see
|
||
|
:class:`~sklearn.linear_model.SGDRegressor` for a description.
|
||
|
|
||
|
More details about the losses formulas can be found in the
|
||
|
:ref:`User Guide <sgd_mathematical_formulation>`.
|
||
|
|
||
|
penalty : {'l2', 'l1', 'elasticnet'}, default='l2'
|
||
|
The penalty (aka regularization term) to be used. Defaults to 'l2'
|
||
|
which is the standard regularizer for linear SVM models. 'l1' and
|
||
|
'elasticnet' might bring sparsity to the model (feature selection)
|
||
|
not achievable with 'l2'.
|
||
|
|
||
|
alpha : float, default=0.0001
|
||
|
Constant that multiplies the regularization term. The higher the
|
||
|
value, the stronger the regularization.
|
||
|
Also used to compute the learning rate when set to `learning_rate` is
|
||
|
set to 'optimal'.
|
||
|
|
||
|
l1_ratio : float, default=0.15
|
||
|
The Elastic Net mixing parameter, with 0 <= l1_ratio <= 1.
|
||
|
l1_ratio=0 corresponds to L2 penalty, l1_ratio=1 to L1.
|
||
|
Only used if `penalty` is 'elasticnet'.
|
||
|
|
||
|
fit_intercept : bool, default=True
|
||
|
Whether the intercept should be estimated or not. If False, the
|
||
|
data is assumed to be already centered.
|
||
|
|
||
|
max_iter : int, default=1000
|
||
|
The maximum number of passes over the training data (aka epochs).
|
||
|
It only impacts the behavior in the ``fit`` method, and not the
|
||
|
:meth:`partial_fit` method.
|
||
|
|
||
|
.. versionadded:: 0.19
|
||
|
|
||
|
tol : float, default=1e-3
|
||
|
The stopping criterion. If it is not None, training will stop
|
||
|
when (loss > best_loss - tol) for ``n_iter_no_change`` consecutive
|
||
|
epochs.
|
||
|
|
||
|
.. versionadded:: 0.19
|
||
|
|
||
|
shuffle : bool, default=True
|
||
|
Whether or not the training data should be shuffled after each epoch.
|
||
|
|
||
|
verbose : int, default=0
|
||
|
The verbosity level.
|
||
|
|
||
|
epsilon : float, default=0.1
|
||
|
Epsilon in the epsilon-insensitive loss functions; only if `loss` is
|
||
|
'huber', 'epsilon_insensitive', or 'squared_epsilon_insensitive'.
|
||
|
For 'huber', determines the threshold at which it becomes less
|
||
|
important to get the prediction exactly right.
|
||
|
For epsilon-insensitive, any differences between the current prediction
|
||
|
and the correct label are ignored if they are less than this threshold.
|
||
|
|
||
|
n_jobs : int, default=None
|
||
|
The number of CPUs to use to do the OVA (One Versus All, for
|
||
|
multi-class problems) computation.
|
||
|
``None`` means 1 unless in a :obj:`joblib.parallel_backend` context.
|
||
|
``-1`` means using all processors. See :term:`Glossary <n_jobs>`
|
||
|
for more details.
|
||
|
|
||
|
random_state : int, RandomState instance, default=None
|
||
|
Used for shuffling the data, when ``shuffle`` is set to ``True``.
|
||
|
Pass an int for reproducible output across multiple function calls.
|
||
|
See :term:`Glossary <random_state>`.
|
||
|
|
||
|
learning_rate : str, default='optimal'
|
||
|
The learning rate schedule:
|
||
|
|
||
|
- 'constant': `eta = eta0`
|
||
|
- 'optimal': `eta = 1.0 / (alpha * (t + t0))`
|
||
|
where t0 is chosen by a heuristic proposed by Leon Bottou.
|
||
|
- 'invscaling': `eta = eta0 / pow(t, power_t)`
|
||
|
- 'adaptive': eta = eta0, as long as the training keeps decreasing.
|
||
|
Each time n_iter_no_change consecutive epochs fail to decrease the
|
||
|
training loss by tol or fail to increase validation score by tol if
|
||
|
early_stopping is True, the current learning rate is divided by 5.
|
||
|
|
||
|
.. versionadded:: 0.20
|
||
|
Added 'adaptive' option
|
||
|
|
||
|
eta0 : double, default=0.0
|
||
|
The initial learning rate for the 'constant', 'invscaling' or
|
||
|
'adaptive' schedules. The default value is 0.0 as eta0 is not used by
|
||
|
the default schedule 'optimal'.
|
||
|
|
||
|
power_t : double, default=0.5
|
||
|
The exponent for inverse scaling learning rate [default 0.5].
|
||
|
|
||
|
early_stopping : bool, default=False
|
||
|
Whether to use early stopping to terminate training when validation
|
||
|
score is not improving. If set to True, it will automatically set aside
|
||
|
a stratified fraction of training data as validation and terminate
|
||
|
training when validation score returned by the `score` method is not
|
||
|
improving by at least tol for n_iter_no_change consecutive epochs.
|
||
|
|
||
|
.. versionadded:: 0.20
|
||
|
Added 'early_stopping' option
|
||
|
|
||
|
validation_fraction : float, default=0.1
|
||
|
The proportion of training data to set aside as validation set for
|
||
|
early stopping. Must be between 0 and 1.
|
||
|
Only used if `early_stopping` is True.
|
||
|
|
||
|
.. versionadded:: 0.20
|
||
|
Added 'validation_fraction' option
|
||
|
|
||
|
n_iter_no_change : int, default=5
|
||
|
Number of iterations with no improvement to wait before early stopping.
|
||
|
|
||
|
.. versionadded:: 0.20
|
||
|
Added 'n_iter_no_change' option
|
||
|
|
||
|
class_weight : dict, {class_label: weight} or "balanced", default=None
|
||
|
Preset for the class_weight fit parameter.
|
||
|
|
||
|
Weights associated with classes. If not given, all classes
|
||
|
are supposed to have weight one.
|
||
|
|
||
|
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))``.
|
||
|
|
||
|
warm_start : bool, default=False
|
||
|
When set to True, reuse the solution of the previous call to fit as
|
||
|
initialization, otherwise, just erase the previous solution.
|
||
|
See :term:`the Glossary <warm_start>`.
|
||
|
|
||
|
Repeatedly calling fit or partial_fit when warm_start is True can
|
||
|
result in a different solution than when calling fit a single time
|
||
|
because of the way the data is shuffled.
|
||
|
If a dynamic learning rate is used, the learning rate is adapted
|
||
|
depending on the number of samples already seen. Calling ``fit`` resets
|
||
|
this counter, while ``partial_fit`` will result in increasing the
|
||
|
existing counter.
|
||
|
|
||
|
average : bool or int, default=False
|
||
|
When set to True, computes the averaged SGD weights accross all
|
||
|
updates and stores the result in the ``coef_`` attribute. If set to
|
||
|
an int greater than 1, averaging will begin once the total number of
|
||
|
samples seen reaches `average`. So ``average=10`` will begin
|
||
|
averaging after seeing 10 samples.
|
||
|
|
||
|
Attributes
|
||
|
----------
|
||
|
coef_ : ndarray of shape (1, n_features) if n_classes == 2 else \
|
||
|
(n_classes, n_features)
|
||
|
Weights assigned to the features.
|
||
|
|
||
|
intercept_ : ndarray of shape (1,) if n_classes == 2 else (n_classes,)
|
||
|
Constants in decision function.
|
||
|
|
||
|
n_iter_ : int
|
||
|
The actual number of iterations before reaching the stopping criterion.
|
||
|
For multiclass fits, it is the maximum over every binary fit.
|
||
|
|
||
|
loss_function_ : concrete ``LossFunction``
|
||
|
|
||
|
classes_ : array of shape (n_classes,)
|
||
|
|
||
|
t_ : int
|
||
|
Number of weight updates performed during training.
|
||
|
Same as ``(n_iter_ * n_samples)``.
|
||
|
|
||
|
See Also
|
||
|
--------
|
||
|
sklearn.svm.LinearSVC: Linear support vector classification.
|
||
|
LogisticRegression: Logistic regression.
|
||
|
Perceptron: Inherits from SGDClassifier. ``Perceptron()`` is equivalent to
|
||
|
``SGDClassifier(loss="perceptron", eta0=1, learning_rate="constant",
|
||
|
penalty=None)``.
|
||
|
|
||
|
Examples
|
||
|
--------
|
||
|
>>> import numpy as np
|
||
|
>>> from sklearn.linear_model import SGDClassifier
|
||
|
>>> from sklearn.preprocessing import StandardScaler
|
||
|
>>> from sklearn.pipeline import make_pipeline
|
||
|
>>> X = np.array([[-1, -1], [-2, -1], [1, 1], [2, 1]])
|
||
|
>>> Y = np.array([1, 1, 2, 2])
|
||
|
>>> # Always scale the input. The most convenient way is to use a pipeline.
|
||
|
>>> clf = make_pipeline(StandardScaler(),
|
||
|
... SGDClassifier(max_iter=1000, tol=1e-3))
|
||
|
>>> clf.fit(X, Y)
|
||
|
Pipeline(steps=[('standardscaler', StandardScaler()),
|
||
|
('sgdclassifier', SGDClassifier())])
|
||
|
>>> print(clf.predict([[-0.8, -1]]))
|
||
|
[1]
|
||
|
"""
|
||
|
@_deprecate_positional_args
|
||
|
def __init__(self, loss="hinge", *, penalty='l2', alpha=0.0001,
|
||
|
l1_ratio=0.15,
|
||
|
fit_intercept=True, max_iter=1000, tol=1e-3, shuffle=True,
|
||
|
verbose=0, epsilon=DEFAULT_EPSILON, n_jobs=None,
|
||
|
random_state=None, learning_rate="optimal", eta0=0.0,
|
||
|
power_t=0.5, early_stopping=False, validation_fraction=0.1,
|
||
|
n_iter_no_change=5, class_weight=None, warm_start=False,
|
||
|
average=False):
|
||
|
super().__init__(
|
||
|
loss=loss, penalty=penalty, alpha=alpha, l1_ratio=l1_ratio,
|
||
|
fit_intercept=fit_intercept, max_iter=max_iter, tol=tol,
|
||
|
shuffle=shuffle, verbose=verbose, epsilon=epsilon, n_jobs=n_jobs,
|
||
|
random_state=random_state, learning_rate=learning_rate, eta0=eta0,
|
||
|
power_t=power_t, early_stopping=early_stopping,
|
||
|
validation_fraction=validation_fraction,
|
||
|
n_iter_no_change=n_iter_no_change, class_weight=class_weight,
|
||
|
warm_start=warm_start, average=average)
|
||
|
|
||
|
def _check_proba(self):
|
||
|
if self.loss not in ("log", "modified_huber"):
|
||
|
raise AttributeError("probability estimates are not available for"
|
||
|
" loss=%r" % self.loss)
|
||
|
|
||
|
@property
|
||
|
def predict_proba(self):
|
||
|
"""Probability estimates.
|
||
|
|
||
|
This method is only available for log loss and modified Huber loss.
|
||
|
|
||
|
Multiclass probability estimates are derived from binary (one-vs.-rest)
|
||
|
estimates by simple normalization, as recommended by Zadrozny and
|
||
|
Elkan.
|
||
|
|
||
|
Binary probability estimates for loss="modified_huber" are given by
|
||
|
(clip(decision_function(X), -1, 1) + 1) / 2. For other loss functions
|
||
|
it is necessary to perform proper probability calibration by wrapping
|
||
|
the classifier with
|
||
|
:class:`sklearn.calibration.CalibratedClassifierCV` instead.
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
X : {array-like, sparse matrix}, shape (n_samples, n_features)
|
||
|
Input data for prediction.
|
||
|
|
||
|
Returns
|
||
|
-------
|
||
|
ndarray of shape (n_samples, n_classes)
|
||
|
Returns the probability of the sample for each class in the model,
|
||
|
where classes are ordered as they are in `self.classes_`.
|
||
|
|
||
|
References
|
||
|
----------
|
||
|
Zadrozny and Elkan, "Transforming classifier scores into multiclass
|
||
|
probability estimates", SIGKDD'02,
|
||
|
http://www.research.ibm.com/people/z/zadrozny/kdd2002-Transf.pdf
|
||
|
|
||
|
The justification for the formula in the loss="modified_huber"
|
||
|
case is in the appendix B in:
|
||
|
http://jmlr.csail.mit.edu/papers/volume2/zhang02c/zhang02c.pdf
|
||
|
"""
|
||
|
self._check_proba()
|
||
|
return self._predict_proba
|
||
|
|
||
|
def _predict_proba(self, X):
|
||
|
check_is_fitted(self)
|
||
|
|
||
|
if self.loss == "log":
|
||
|
return self._predict_proba_lr(X)
|
||
|
|
||
|
elif self.loss == "modified_huber":
|
||
|
binary = (len(self.classes_) == 2)
|
||
|
scores = self.decision_function(X)
|
||
|
|
||
|
if binary:
|
||
|
prob2 = np.ones((scores.shape[0], 2))
|
||
|
prob = prob2[:, 1]
|
||
|
else:
|
||
|
prob = scores
|
||
|
|
||
|
np.clip(scores, -1, 1, prob)
|
||
|
prob += 1.
|
||
|
prob /= 2.
|
||
|
|
||
|
if binary:
|
||
|
prob2[:, 0] -= prob
|
||
|
prob = prob2
|
||
|
else:
|
||
|
# the above might assign zero to all classes, which doesn't
|
||
|
# normalize neatly; work around this to produce uniform
|
||
|
# probabilities
|
||
|
prob_sum = prob.sum(axis=1)
|
||
|
all_zero = (prob_sum == 0)
|
||
|
if np.any(all_zero):
|
||
|
prob[all_zero, :] = 1
|
||
|
prob_sum[all_zero] = len(self.classes_)
|
||
|
|
||
|
# normalize
|
||
|
prob /= prob_sum.reshape((prob.shape[0], -1))
|
||
|
|
||
|
return prob
|
||
|
|
||
|
else:
|
||
|
raise NotImplementedError("predict_(log_)proba only supported when"
|
||
|
" loss='log' or loss='modified_huber' "
|
||
|
"(%r given)" % self.loss)
|
||
|
|
||
|
@property
|
||
|
def predict_log_proba(self):
|
||
|
"""Log of probability estimates.
|
||
|
|
||
|
This method is only available for log loss and modified Huber loss.
|
||
|
|
||
|
When loss="modified_huber", probability estimates may be hard zeros
|
||
|
and ones, so taking the logarithm is not possible.
|
||
|
|
||
|
See ``predict_proba`` for details.
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
X : {array-like, sparse matrix} of shape (n_samples, n_features)
|
||
|
Input data for prediction.
|
||
|
|
||
|
Returns
|
||
|
-------
|
||
|
T : array-like, shape (n_samples, n_classes)
|
||
|
Returns the log-probability of the sample for each class in the
|
||
|
model, where classes are ordered as they are in
|
||
|
`self.classes_`.
|
||
|
"""
|
||
|
self._check_proba()
|
||
|
return self._predict_log_proba
|
||
|
|
||
|
def _predict_log_proba(self, X):
|
||
|
return np.log(self.predict_proba(X))
|
||
|
|
||
|
|
||
|
class BaseSGDRegressor(RegressorMixin, BaseSGD):
|
||
|
|
||
|
loss_functions = {
|
||
|
"squared_loss": (SquaredLoss, ),
|
||
|
"huber": (Huber, DEFAULT_EPSILON),
|
||
|
"epsilon_insensitive": (EpsilonInsensitive, DEFAULT_EPSILON),
|
||
|
"squared_epsilon_insensitive": (SquaredEpsilonInsensitive,
|
||
|
DEFAULT_EPSILON),
|
||
|
}
|
||
|
|
||
|
@abstractmethod
|
||
|
@_deprecate_positional_args
|
||
|
def __init__(self, loss="squared_loss", *, penalty="l2", alpha=0.0001,
|
||
|
l1_ratio=0.15, fit_intercept=True, max_iter=1000, tol=1e-3,
|
||
|
shuffle=True, verbose=0, epsilon=DEFAULT_EPSILON,
|
||
|
random_state=None, learning_rate="invscaling", eta0=0.01,
|
||
|
power_t=0.25, early_stopping=False, validation_fraction=0.1,
|
||
|
n_iter_no_change=5, warm_start=False, average=False):
|
||
|
super().__init__(
|
||
|
loss=loss, penalty=penalty, alpha=alpha, l1_ratio=l1_ratio,
|
||
|
fit_intercept=fit_intercept, max_iter=max_iter, tol=tol,
|
||
|
shuffle=shuffle, verbose=verbose, epsilon=epsilon,
|
||
|
random_state=random_state, learning_rate=learning_rate, eta0=eta0,
|
||
|
power_t=power_t, early_stopping=early_stopping,
|
||
|
validation_fraction=validation_fraction,
|
||
|
n_iter_no_change=n_iter_no_change, warm_start=warm_start,
|
||
|
average=average)
|
||
|
|
||
|
def _partial_fit(self, X, y, alpha, C, loss, learning_rate,
|
||
|
max_iter, sample_weight, coef_init, intercept_init):
|
||
|
X, y = self._validate_data(X, y, accept_sparse="csr", copy=False,
|
||
|
order='C', dtype=np.float64,
|
||
|
accept_large_sparse=False)
|
||
|
y = y.astype(np.float64, copy=False)
|
||
|
|
||
|
n_samples, n_features = X.shape
|
||
|
|
||
|
sample_weight = _check_sample_weight(sample_weight, X)
|
||
|
|
||
|
# Allocate datastructures from input arguments
|
||
|
if getattr(self, "coef_", None) is None:
|
||
|
self._allocate_parameter_mem(1, n_features, coef_init,
|
||
|
intercept_init)
|
||
|
elif n_features != self.coef_.shape[-1]:
|
||
|
raise ValueError("Number of features %d does not match previous "
|
||
|
"data %d." % (n_features, self.coef_.shape[-1]))
|
||
|
if self.average > 0 and getattr(self, "_average_coef", None) is None:
|
||
|
self._average_coef = np.zeros(n_features,
|
||
|
dtype=np.float64,
|
||
|
order="C")
|
||
|
self._average_intercept = np.zeros(1, dtype=np.float64, order="C")
|
||
|
|
||
|
self._fit_regressor(X, y, alpha, C, loss, learning_rate,
|
||
|
sample_weight, max_iter)
|
||
|
|
||
|
return self
|
||
|
|
||
|
def partial_fit(self, X, y, sample_weight=None):
|
||
|
"""Perform one epoch of stochastic gradient descent on given samples.
|
||
|
|
||
|
Internally, this method uses ``max_iter = 1``. Therefore, it is not
|
||
|
guaranteed that a minimum of the cost function is reached after calling
|
||
|
it once. Matters such as objective convergence and early stopping
|
||
|
should be handled by the user.
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
X : {array-like, sparse matrix}, shape (n_samples, n_features)
|
||
|
Subset of training data
|
||
|
|
||
|
y : numpy array of shape (n_samples,)
|
||
|
Subset of target values
|
||
|
|
||
|
sample_weight : array-like, shape (n_samples,), default=None
|
||
|
Weights applied to individual samples.
|
||
|
If not provided, uniform weights are assumed.
|
||
|
|
||
|
Returns
|
||
|
-------
|
||
|
self : returns an instance of self.
|
||
|
"""
|
||
|
self._validate_params(for_partial_fit=True)
|
||
|
return self._partial_fit(X, y, self.alpha, C=1.0,
|
||
|
loss=self.loss,
|
||
|
learning_rate=self.learning_rate, max_iter=1,
|
||
|
sample_weight=sample_weight, coef_init=None,
|
||
|
intercept_init=None)
|
||
|
|
||
|
def _fit(self, X, y, alpha, C, loss, learning_rate, coef_init=None,
|
||
|
intercept_init=None, sample_weight=None):
|
||
|
self._validate_params()
|
||
|
if self.warm_start and getattr(self, "coef_", None) is not None:
|
||
|
if coef_init is None:
|
||
|
coef_init = self.coef_
|
||
|
if intercept_init is None:
|
||
|
intercept_init = self.intercept_
|
||
|
else:
|
||
|
self.coef_ = None
|
||
|
self.intercept_ = None
|
||
|
|
||
|
# Clear iteration count for multiple call to fit.
|
||
|
self.t_ = 1.0
|
||
|
|
||
|
self._partial_fit(X, y, alpha, C, loss, learning_rate,
|
||
|
self.max_iter, sample_weight, coef_init,
|
||
|
intercept_init)
|
||
|
|
||
|
if (self.tol is not None and self.tol > -np.inf
|
||
|
and self.n_iter_ == self.max_iter):
|
||
|
warnings.warn("Maximum number of iteration reached before "
|
||
|
"convergence. Consider increasing max_iter to "
|
||
|
"improve the fit.",
|
||
|
ConvergenceWarning)
|
||
|
|
||
|
return self
|
||
|
|
||
|
def fit(self, X, y, coef_init=None, intercept_init=None,
|
||
|
sample_weight=None):
|
||
|
"""Fit linear model with Stochastic Gradient Descent.
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
X : {array-like, sparse matrix}, shape (n_samples, n_features)
|
||
|
Training data
|
||
|
|
||
|
y : ndarray of shape (n_samples,)
|
||
|
Target values
|
||
|
|
||
|
coef_init : ndarray of shape (n_features,), default=None
|
||
|
The initial coefficients to warm-start the optimization.
|
||
|
|
||
|
intercept_init : ndarray of shape (1,), default=None
|
||
|
The initial intercept to warm-start the optimization.
|
||
|
|
||
|
sample_weight : array-like, shape (n_samples,), default=None
|
||
|
Weights applied to individual samples (1. for unweighted).
|
||
|
|
||
|
Returns
|
||
|
-------
|
||
|
self : returns an instance of self.
|
||
|
"""
|
||
|
return self._fit(X, y, alpha=self.alpha, C=1.0,
|
||
|
loss=self.loss, learning_rate=self.learning_rate,
|
||
|
coef_init=coef_init,
|
||
|
intercept_init=intercept_init,
|
||
|
sample_weight=sample_weight)
|
||
|
|
||
|
def _decision_function(self, X):
|
||
|
"""Predict using the linear model
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
X : {array-like, sparse matrix}, shape (n_samples, n_features)
|
||
|
|
||
|
Returns
|
||
|
-------
|
||
|
ndarray of shape (n_samples,)
|
||
|
Predicted target values per element in X.
|
||
|
"""
|
||
|
check_is_fitted(self)
|
||
|
|
||
|
X = check_array(X, accept_sparse='csr')
|
||
|
|
||
|
scores = safe_sparse_dot(X, self.coef_.T,
|
||
|
dense_output=True) + self.intercept_
|
||
|
return scores.ravel()
|
||
|
|
||
|
def predict(self, X):
|
||
|
"""Predict using the linear model
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
X : {array-like, sparse matrix}, shape (n_samples, n_features)
|
||
|
|
||
|
Returns
|
||
|
-------
|
||
|
ndarray of shape (n_samples,)
|
||
|
Predicted target values per element in X.
|
||
|
"""
|
||
|
return self._decision_function(X)
|
||
|
|
||
|
def _fit_regressor(self, X, y, alpha, C, loss, learning_rate,
|
||
|
sample_weight, max_iter):
|
||
|
dataset, intercept_decay = make_dataset(X, y, sample_weight)
|
||
|
|
||
|
loss_function = self._get_loss_function(loss)
|
||
|
penalty_type = self._get_penalty_type(self.penalty)
|
||
|
learning_rate_type = self._get_learning_rate_type(learning_rate)
|
||
|
|
||
|
if not hasattr(self, "t_"):
|
||
|
self.t_ = 1.0
|
||
|
|
||
|
validation_mask = self._make_validation_split(y)
|
||
|
validation_score_cb = self._make_validation_score_cb(
|
||
|
validation_mask, X, y, sample_weight)
|
||
|
|
||
|
random_state = check_random_state(self.random_state)
|
||
|
# numpy mtrand expects a C long which is a signed 32 bit integer under
|
||
|
# Windows
|
||
|
seed = random_state.randint(0, np.iinfo(np.int32).max)
|
||
|
|
||
|
tol = self.tol if self.tol is not None else -np.inf
|
||
|
|
||
|
if self.average:
|
||
|
coef = self._standard_coef
|
||
|
intercept = self._standard_intercept
|
||
|
average_coef = self._average_coef
|
||
|
average_intercept = self._average_intercept
|
||
|
else:
|
||
|
coef = self.coef_
|
||
|
intercept = self.intercept_
|
||
|
average_coef = None # Not used
|
||
|
average_intercept = [0] # Not used
|
||
|
|
||
|
coef, intercept, average_coef, average_intercept, self.n_iter_ = \
|
||
|
_plain_sgd(coef,
|
||
|
intercept[0],
|
||
|
average_coef,
|
||
|
average_intercept[0],
|
||
|
loss_function,
|
||
|
penalty_type,
|
||
|
alpha, C,
|
||
|
self.l1_ratio,
|
||
|
dataset,
|
||
|
validation_mask, self.early_stopping,
|
||
|
validation_score_cb,
|
||
|
int(self.n_iter_no_change),
|
||
|
max_iter, tol,
|
||
|
int(self.fit_intercept),
|
||
|
int(self.verbose),
|
||
|
int(self.shuffle),
|
||
|
seed,
|
||
|
1.0, 1.0,
|
||
|
learning_rate_type,
|
||
|
self.eta0, self.power_t, self.t_,
|
||
|
intercept_decay, self.average)
|
||
|
|
||
|
self.t_ += self.n_iter_ * X.shape[0]
|
||
|
|
||
|
if self.average > 0:
|
||
|
self._average_intercept = np.atleast_1d(average_intercept)
|
||
|
self._standard_intercept = np.atleast_1d(intercept)
|
||
|
|
||
|
if self.average <= self.t_ - 1.0:
|
||
|
# made enough updates for averaging to be taken into account
|
||
|
self.coef_ = average_coef
|
||
|
self.intercept_ = np.atleast_1d(average_intercept)
|
||
|
else:
|
||
|
self.coef_ = coef
|
||
|
self.intercept_ = np.atleast_1d(intercept)
|
||
|
|
||
|
else:
|
||
|
self.intercept_ = np.atleast_1d(intercept)
|
||
|
|
||
|
|
||
|
class SGDRegressor(BaseSGDRegressor):
|
||
|
"""Linear model fitted by minimizing a regularized empirical loss with SGD
|
||
|
|
||
|
SGD stands for Stochastic Gradient Descent: the gradient of the loss is
|
||
|
estimated each sample at a time and the model is updated along the way with
|
||
|
a decreasing strength schedule (aka learning rate).
|
||
|
|
||
|
The regularizer is a penalty added to the loss function that shrinks model
|
||
|
parameters towards the zero vector using either the squared euclidean norm
|
||
|
L2 or the absolute norm L1 or a combination of both (Elastic Net). If the
|
||
|
parameter update crosses the 0.0 value because of the regularizer, the
|
||
|
update is truncated to 0.0 to allow for learning sparse models and achieve
|
||
|
online feature selection.
|
||
|
|
||
|
This implementation works with data represented as dense numpy arrays of
|
||
|
floating point values for the features.
|
||
|
|
||
|
Read more in the :ref:`User Guide <sgd>`.
|
||
|
|
||
|
Parameters
|
||
|
----------
|
||
|
loss : str, default='squared_loss'
|
||
|
The loss function to be used. The possible values are 'squared_loss',
|
||
|
'huber', 'epsilon_insensitive', or 'squared_epsilon_insensitive'
|
||
|
|
||
|
The 'squared_loss' refers to the ordinary least squares fit.
|
||
|
'huber' modifies 'squared_loss' to focus less on getting outliers
|
||
|
correct by switching from squared to linear loss past a distance of
|
||
|
epsilon. 'epsilon_insensitive' ignores errors less than epsilon and is
|
||
|
linear past that; this is the loss function used in SVR.
|
||
|
'squared_epsilon_insensitive' is the same but becomes squared loss past
|
||
|
a tolerance of epsilon.
|
||
|
|
||
|
More details about the losses formulas can be found in the
|
||
|
:ref:`User Guide <sgd_mathematical_formulation>`.
|
||
|
|
||
|
penalty : {'l2', 'l1', 'elasticnet'}, default='l2'
|
||
|
The penalty (aka regularization term) to be used. Defaults to 'l2'
|
||
|
which is the standard regularizer for linear SVM models. 'l1' and
|
||
|
'elasticnet' might bring sparsity to the model (feature selection)
|
||
|
not achievable with 'l2'.
|
||
|
|
||
|
alpha : float, default=0.0001
|
||
|
Constant that multiplies the regularization term. The higher the
|
||
|
value, the stronger the regularization.
|
||
|
Also used to compute the learning rate when set to `learning_rate` is
|
||
|
set to 'optimal'.
|
||
|
|
||
|
l1_ratio : float, default=0.15
|
||
|
The Elastic Net mixing parameter, with 0 <= l1_ratio <= 1.
|
||
|
l1_ratio=0 corresponds to L2 penalty, l1_ratio=1 to L1.
|
||
|
Only used if `penalty` is 'elasticnet'.
|
||
|
|
||
|
fit_intercept : bool, default=True
|
||
|
Whether the intercept should be estimated or not. If False, the
|
||
|
data is assumed to be already centered.
|
||
|
|
||
|
max_iter : int, default=1000
|
||
|
The maximum number of passes over the training data (aka epochs).
|
||
|
It only impacts the behavior in the ``fit`` method, and not the
|
||
|
:meth:`partial_fit` method.
|
||
|
|
||
|
.. versionadded:: 0.19
|
||
|
|
||
|
tol : float, default=1e-3
|
||
|
The stopping criterion. If it is not None, training will stop
|
||
|
when (loss > best_loss - tol) for ``n_iter_no_change`` consecutive
|
||
|
epochs.
|
||
|
|
||
|
.. versionadded:: 0.19
|
||
|
|
||
|
shuffle : bool, default=True
|
||
|
Whether or not the training data should be shuffled after each epoch.
|
||
|
|
||
|
verbose : int, default=0
|
||
|
The verbosity level.
|
||
|
|
||
|
epsilon : float, default=0.1
|
||
|
Epsilon in the epsilon-insensitive loss functions; only if `loss` is
|
||
|
'huber', 'epsilon_insensitive', or 'squared_epsilon_insensitive'.
|
||
|
For 'huber', determines the threshold at which it becomes less
|
||
|
important to get the prediction exactly right.
|
||
|
For epsilon-insensitive, any differences between the current prediction
|
||
|
and the correct label are ignored if they are less than this threshold.
|
||
|
|
||
|
random_state : int, RandomState instance, default=None
|
||
|
Used for shuffling the data, when ``shuffle`` is set to ``True``.
|
||
|
Pass an int for reproducible output across multiple function calls.
|
||
|
See :term:`Glossary <random_state>`.
|
||
|
|
||
|
learning_rate : string, default='invscaling'
|
||
|
The learning rate schedule:
|
||
|
|
||
|
- 'constant': `eta = eta0`
|
||
|
- 'optimal': `eta = 1.0 / (alpha * (t + t0))`
|
||
|
where t0 is chosen by a heuristic proposed by Leon Bottou.
|
||
|
- 'invscaling': `eta = eta0 / pow(t, power_t)`
|
||
|
- 'adaptive': eta = eta0, as long as the training keeps decreasing.
|
||
|
Each time n_iter_no_change consecutive epochs fail to decrease the
|
||
|
training loss by tol or fail to increase validation score by tol if
|
||
|
early_stopping is True, the current learning rate is divided by 5.
|
||
|
|
||
|
.. versionadded:: 0.20
|
||
|
Added 'adaptive' option
|
||
|
|
||
|
eta0 : double, default=0.01
|
||
|
The initial learning rate for the 'constant', 'invscaling' or
|
||
|
'adaptive' schedules. The default value is 0.01.
|
||
|
|
||
|
power_t : double, default=0.25
|
||
|
The exponent for inverse scaling learning rate.
|
||
|
|
||
|
early_stopping : bool, default=False
|
||
|
Whether to use early stopping to terminate training when validation
|
||
|
score is not improving. If set to True, it will automatically set aside
|
||
|
a fraction of training data as validation and terminate
|
||
|
training when validation score returned by the `score` method is not
|
||
|
improving by at least `tol` for `n_iter_no_change` consecutive
|
||
|
epochs.
|
||
|
|
||
|
.. versionadded:: 0.20
|
||
|
Added 'early_stopping' option
|
||
|
|
||
|
validation_fraction : float, default=0.1
|
||
|
The proportion of training data to set aside as validation set for
|
||
|
early stopping. Must be between 0 and 1.
|
||
|
Only used if `early_stopping` is True.
|
||
|
|
||
|
.. versionadded:: 0.20
|
||
|
Added 'validation_fraction' option
|
||
|
|
||
|
n_iter_no_change : int, default=5
|
||
|
Number of iterations with no improvement to wait before early stopping.
|
||
|
|
||
|
.. versionadded:: 0.20
|
||
|
Added 'n_iter_no_change' option
|
||
|
|
||
|
warm_start : bool, default=False
|
||
|
When set to True, reuse the solution of the previous call to fit as
|
||
|
initialization, otherwise, just erase the previous solution.
|
||
|
See :term:`the Glossary <warm_start>`.
|
||
|
|
||
|
Repeatedly calling fit or partial_fit when warm_start is True can
|
||
|
result in a different solution than when calling fit a single time
|
||
|
because of the way the data is shuffled.
|
||
|
If a dynamic learning rate is used, the learning rate is adapted
|
||
|
depending on the number of samples already seen. Calling ``fit`` resets
|
||
|
this counter, while ``partial_fit`` will result in increasing the
|
||
|
existing counter.
|
||
|
|
||
|
average : bool or int, default=False
|
||
|
When set to True, computes the averaged SGD weights accross all
|
||
|
updates and stores the result in the ``coef_`` attribute. If set to
|
||
|
an int greater than 1, averaging will begin once the total number of
|
||
|
samples seen reaches `average`. So ``average=10`` will begin
|
||
|
averaging after seeing 10 samples.
|
||
|
|
||
|
Attributes
|
||
|
----------
|
||
|
coef_ : ndarray of shape (n_features,)
|
||
|
Weights assigned to the features.
|
||
|
|
||
|
intercept_ : ndarray of shape (1,)
|
||
|
The intercept term.
|
||
|
|
||
|
average_coef_ : ndarray of shape (n_features,)
|
||
|
Averaged weights assigned to the features. Only available
|
||
|
if ``average=True``.
|
||
|
|
||
|
.. deprecated:: 0.23
|
||
|
Attribute ``average_coef_`` was deprecated
|
||
|
in version 0.23 and will be removed in 0.25.
|
||
|
|
||
|
average_intercept_ : ndarray of shape (1,)
|
||
|
The averaged intercept term. Only available if ``average=True``.
|
||
|
|
||
|
.. deprecated:: 0.23
|
||
|
Attribute ``average_intercept_`` was deprecated
|
||
|
in version 0.23 and will be removed in 0.25.
|
||
|
|
||
|
n_iter_ : int
|
||
|
The actual number of iterations before reaching the stopping criterion.
|
||
|
|
||
|
t_ : int
|
||
|
Number of weight updates performed during training.
|
||
|
Same as ``(n_iter_ * n_samples)``.
|
||
|
|
||
|
Examples
|
||
|
--------
|
||
|
>>> import numpy as np
|
||
|
>>> from sklearn.linear_model import SGDRegressor
|
||
|
>>> from sklearn.pipeline import make_pipeline
|
||
|
>>> from sklearn.preprocessing import StandardScaler
|
||
|
>>> n_samples, n_features = 10, 5
|
||
|
>>> rng = np.random.RandomState(0)
|
||
|
>>> y = rng.randn(n_samples)
|
||
|
>>> X = rng.randn(n_samples, n_features)
|
||
|
>>> # Always scale the input. The most convenient way is to use a pipeline.
|
||
|
>>> reg = make_pipeline(StandardScaler(),
|
||
|
... SGDRegressor(max_iter=1000, tol=1e-3))
|
||
|
>>> reg.fit(X, y)
|
||
|
Pipeline(steps=[('standardscaler', StandardScaler()),
|
||
|
('sgdregressor', SGDRegressor())])
|
||
|
|
||
|
See also
|
||
|
--------
|
||
|
Ridge, ElasticNet, Lasso, sklearn.svm.SVR
|
||
|
|
||
|
"""
|
||
|
@_deprecate_positional_args
|
||
|
def __init__(self, loss="squared_loss", *, penalty="l2", alpha=0.0001,
|
||
|
l1_ratio=0.15, fit_intercept=True, max_iter=1000, tol=1e-3,
|
||
|
shuffle=True, verbose=0, epsilon=DEFAULT_EPSILON,
|
||
|
random_state=None, learning_rate="invscaling", eta0=0.01,
|
||
|
power_t=0.25, early_stopping=False, validation_fraction=0.1,
|
||
|
n_iter_no_change=5, warm_start=False, average=False):
|
||
|
super().__init__(
|
||
|
loss=loss, penalty=penalty, alpha=alpha, l1_ratio=l1_ratio,
|
||
|
fit_intercept=fit_intercept, max_iter=max_iter, tol=tol,
|
||
|
shuffle=shuffle, verbose=verbose, epsilon=epsilon,
|
||
|
random_state=random_state, learning_rate=learning_rate, eta0=eta0,
|
||
|
power_t=power_t, early_stopping=early_stopping,
|
||
|
validation_fraction=validation_fraction,
|
||
|
n_iter_no_change=n_iter_no_change, warm_start=warm_start,
|
||
|
average=average)
|