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scikit-learn / grid_search.py
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"""
The :mod:`sklearn.grid_search` includes utilities to fine-tune the parameters
of an estimator.
"""
from __future__ import print_function

# Author: Alexandre Gramfort <alexandre.gramfort@inria.fr>,
#         Gael Varoquaux <gael.varoquaux@normalesup.org>
#         Andreas Mueller <amueller@ais.uni-bonn.de>
#         Olivier Grisel <olivier.grisel@ensta.org>
# License: BSD 3 clause

from abc import ABCMeta, abstractmethod
from collections import Mapping, namedtuple, Sized
from functools import partial, reduce
from itertools import product
import operator

import numpy as np

from .base import BaseEstimator, is_classifier, clone
from .base import MetaEstimatorMixin
from .cross_validation import _check_cv as check_cv
from .cross_validation import _fit_and_score
from .externals.joblib import Parallel, delayed
from .externals import six
from .utils import check_random_state
from .utils.validation import _num_samples, check_arrays
from .metrics.scorer import check_scoring


__all__ = ['GridSearchCV', 'ParameterGrid', 'fit_grid_point',
           'ParameterSampler', 'RandomizedSearchCV']


class ParameterGrid(object):
    """Grid of parameters with a discrete number of values for each.

    Can be used to iterate over parameter value combinations with the
    Python built-in function iter.

    Parameters
    ----------
    param_grid : dict of string to sequence, or sequence of such
        The parameter grid to explore, as a dictionary mapping estimator
        parameters to sequences of allowed values.

        An empty dict signifies default parameters.

        A sequence of dicts signifies a sequence of grids to search, and is
        useful to avoid exploring parameter combinations that make no sense
        or have no effect. See the examples below.

    Examples
    --------
    >>> from sklearn.grid_search import ParameterGrid
    >>> param_grid = {'a': [1, 2], 'b': [True, False]}
    >>> list(ParameterGrid(param_grid)) == (
    ...    [{'a': 1, 'b': True}, {'a': 1, 'b': False},
    ...     {'a': 2, 'b': True}, {'a': 2, 'b': False}])
    True

    >>> grid = [{'kernel': ['linear']}, {'kernel': ['rbf'], 'gamma': [1, 10]}]
    >>> list(ParameterGrid(grid)) == [{'kernel': 'linear'},
    ...                               {'kernel': 'rbf', 'gamma': 1},
    ...                               {'kernel': 'rbf', 'gamma': 10}]
    True

    See also
    --------
    :class:`GridSearchCV`:
        uses ``ParameterGrid`` to perform a full parallelized parameter search.
    """

    def __init__(self, param_grid):
        if isinstance(param_grid, Mapping):
            # wrap dictionary in a singleton list to support either dict
            # or list of dicts
            param_grid = [param_grid]
        self.param_grid = param_grid

    def __iter__(self):
        """Iterate over the points in the grid.

        Returns
        -------
        params : iterator over dict of string to any
            Yields dictionaries mapping each estimator parameter to one of its
            allowed values.
        """
        for p in self.param_grid:
            # Always sort the keys of a dictionary, for reproducibility
            items = sorted(p.items())
            if not items:
                yield {}
            else:
                keys, values = zip(*items)
                for v in product(*values):
                    params = dict(zip(keys, v))
                    yield params

    def __len__(self):
        """Number of points on the grid."""
        # Product function that can handle iterables (np.product can't).
        product = partial(reduce, operator.mul)
        return sum(product(len(v) for v in p.values()) if p else 1
                   for p in self.param_grid)


class ParameterSampler(object):
    """Generator on parameters sampled from given distributions.

    Non-deterministic iterable over random candidate combinations for hyper-
    parameter search.

    Note that as of SciPy 0.12, the ``scipy.stats.distributions`` do not accept
    a custom RNG instance and always use the singleton RNG from
    ``numpy.random``. Hence setting ``random_state`` will not guarantee a
    deterministic iteration whenever ``scipy.stats`` distributions are used to
    define the parameter search space.

    Parameters
    ----------
    param_distributions : dict
        Dictionary where the keys are parameters and values
        are distributions from which a parameter is to be sampled.
        Distributions either have to provide a ``rvs`` function
        to sample from them, or can be given as a list of values,
        where a uniform distribution is assumed.

    n_iter : integer
        Number of parameter settings that are produced.

    random_state : int or RandomState
        Pseudo random number generator state used for random uniform sampling
        from lists of possible values instead of scipy.stats distributions.

    Returns
    -------
    params : dict of string to any
        **Yields** dictionaries mapping each estimator parameter to
        as sampled value.

    Examples
    --------
    >>> from sklearn.grid_search import ParameterSampler
    >>> from scipy.stats.distributions import expon
    >>> import numpy as np
    >>> np.random.seed(0)
    >>> param_grid = {'a':[1, 2], 'b': expon()}
    >>> param_list = list(ParameterSampler(param_grid, n_iter=4))
    >>> rounded_list = [dict((k, round(v, 6)) for (k, v) in d.items())
    ...                 for d in param_list]
    >>> rounded_list == [{'b': 0.89856, 'a': 1},
    ...                  {'b': 0.923223, 'a': 1},
    ...                  {'b': 1.878964, 'a': 2},
    ...                  {'b': 1.038159, 'a': 2}]
    True
    """
    def __init__(self, param_distributions, n_iter, random_state=None):
        self.param_distributions = param_distributions
        self.n_iter = n_iter
        self.random_state = random_state

    def __iter__(self):
        rnd = check_random_state(self.random_state)
        # Always sort the keys of a dictionary, for reproducibility
        items = sorted(self.param_distributions.items())
        for _ in range(self.n_iter):
            params = dict()
            for k, v in items:
                if hasattr(v, "rvs"):
                    params[k] = v.rvs()
                else:
                    params[k] = v[rnd.randint(len(v))]
            yield params

    def __len__(self):
        """Number of points that will be sampled."""
        return self.n_iter


def fit_grid_point(X, y, estimator, parameters, train, test, scorer,
                   verbose, **fit_params):
    """Run fit on one set of parameters.

    Parameters
    ----------
    X : array-like, sparse matrix or list
        Input data.

    y : array-like or None
        Targets for input data.

    estimator : estimator object
        This estimator will be cloned and then fitted.

    parameters : dict
        Parameters to be set on estimator for this grid point.

    train : ndarray, dtype int or bool
        Boolean mask or indices for training set.

    test : ndarray, dtype int or bool
        Boolean mask or indices for test set.

    scorer : callable or None.
        If provided must be a scorer callable object / function with signature
        ``scorer(estimator, X, y)``.

    verbose : int
        Verbosity level.

    **fit_params : kwargs
        Additional parameter passed to the fit function of the estimator.


    Returns
    -------
    score : float
        Score of this parameter setting on given training / test split.

    parameters : dict
        The parameters that have been evaluated.

    n_samples_test : int
        Number of test samples in this split.
    """
    score, n_samples_test, _ = _fit_and_score(estimator, X, y, scorer, train,
                                              test, verbose, parameters,
                                              fit_params)
    return score, parameters, n_samples_test


def _check_param_grid(param_grid):
    if hasattr(param_grid, 'items'):
        param_grid = [param_grid]

    for p in param_grid:
        for v in p.values():
            if isinstance(v, np.ndarray) and v.ndim > 1:
                raise ValueError("Parameter array should be one-dimensional.")

            check = [isinstance(v, k) for k in (list, tuple, np.ndarray)]
            if not True in check:
                raise ValueError("Parameter values should be a list.")

            if len(v) == 0:
                raise ValueError("Parameter values should be a non-empty "
                                 "list.")


class _CVScoreTuple (namedtuple('_CVScoreTuple',
                                ('parameters',
                                 'mean_validation_score',
                                 'cv_validation_scores'))):
    # A raw namedtuple is very memory efficient as it packs the attributes
    # in a struct to get rid of the __dict__ of attributes in particular it
    # does not copy the string for the keys on each instance.
    # By deriving a namedtuple class just to introduce the __repr__ method we
    # would also reintroduce the __dict__ on the instance. By telling the
    # Python interpreter that this subclass uses static __slots__ instead of
    # dynamic attributes. Furthermore we don't need any additional slot in the
    # subclass so we set __slots__ to the empty tuple.
    __slots__ = ()

    def __repr__(self):
        """Simple custom repr to summarize the main info"""
        return "mean: {0:.5f}, std: {1:.5f}, params: {2}".format(
            self.mean_validation_score,
            np.std(self.cv_validation_scores),
            self.parameters)


class BaseSearchCV(six.with_metaclass(ABCMeta, BaseEstimator,
                                      MetaEstimatorMixin)):
    """Base class for hyper parameter search with cross-validation."""

    @abstractmethod
    def __init__(self, estimator, scoring=None, loss_func=None,
                 score_func=None, fit_params=None, n_jobs=1, iid=True,
                 refit=True, cv=None, verbose=0, pre_dispatch='2*n_jobs'):

        self.scoring = scoring
        self.estimator = estimator
        self.loss_func = loss_func
        self.score_func = score_func
        self.n_jobs = n_jobs
        self.fit_params = fit_params if fit_params is not None else {}
        self.iid = iid
        self.refit = refit
        self.cv = cv
        self.verbose = verbose
        self.pre_dispatch = pre_dispatch

    def score(self, X, y=None):
        """Returns the score on the given test data and labels, if the search
        estimator has been refit. The ``score`` function of the best estimator
        is used, or the ``scoring`` parameter where unavailable.

        Parameters
        ----------
        X : array-like, shape = [n_samples, n_features]
            Input data, where n_samples is the number of samples and
            n_features is the number of features.

        y : array-like, shape = [n_samples] or [n_samples, n_output], optional
            Target relative to X for classification or regression;
            None for unsupervised learning.

        Returns
        -------
        score : float

        """
        if hasattr(self.best_estimator_, 'score'):
            return self.best_estimator_.score(X, y)
        if self.scorer_ is None:
            raise ValueError("No score function explicitly defined, "
                             "and the estimator doesn't provide one %s"
                             % self.best_estimator_)
        return self.scorer_(self.best_estimator_, X, y)

    @property
    def predict(self):
        return self.best_estimator_.predict

    @property
    def predict_proba(self):
        return self.best_estimator_.predict_proba

    @property
    def decision_function(self):
        return self.best_estimator_.decision_function

    @property
    def transform(self):
        return self.best_estimator_.transform

    def _fit(self, X, y, parameter_iterable):
        """Actual fitting,  performing the search over parameters."""

        estimator = self.estimator
        cv = self.cv
        self.scorer_ = check_scoring(self.estimator, scoring=self.scoring,
                                     loss_func=self.loss_func,
                                     score_func=self.score_func)

        n_samples = _num_samples(X)
        X, y = check_arrays(X, y, allow_lists=True, sparse_format='csr',
                            allow_nans=True)

        if y is not None:
            if len(y) != n_samples:
                raise ValueError('Target variable (y) has a different number '
                                 'of samples (%i) than data (X: %i samples)'
                                 % (len(y), n_samples))
        cv = check_cv(cv, X, y, classifier=is_classifier(estimator))

        if self.verbose > 0:
            if isinstance(parameter_iterable, Sized):
                n_candidates = len(parameter_iterable)
                print("Fitting {0} folds for each of {1} candidates, totalling"
                      " {2} fits".format(len(cv), n_candidates,
                                         n_candidates * len(cv)))

        base_estimator = clone(self.estimator)

        pre_dispatch = self.pre_dispatch

        out = Parallel(
            n_jobs=self.n_jobs, verbose=self.verbose,
            pre_dispatch=pre_dispatch
        )(
            delayed(_fit_and_score)(clone(base_estimator), X, y, self.scorer_,
                                    train, test, self.verbose, parameters,
                                    self.fit_params, return_parameters=True)
            for parameters in parameter_iterable
            for train, test in cv)

        # Out is a list of triplet: score, estimator, n_test_samples
        n_fits = len(out)
        n_folds = len(cv)

        scores = list()
        grid_scores = list()
        for grid_start in range(0, n_fits, n_folds):
            n_test_samples = 0
            score = 0
            all_scores = []
            for this_score, this_n_test_samples, _, parameters in \
                    out[grid_start:grid_start + n_folds]:
                all_scores.append(this_score)
                if self.iid:
                    this_score *= this_n_test_samples
                    n_test_samples += this_n_test_samples
                score += this_score
            if self.iid:
                score /= float(n_test_samples)
            else:
                score /= float(n_folds)
            scores.append((score, parameters))
            # TODO: shall we also store the test_fold_sizes?
            grid_scores.append(_CVScoreTuple(
                parameters,
                score,
                np.array(all_scores)))
        # Store the computed scores
        self.grid_scores_ = grid_scores

        # Find the best parameters by comparing on the mean validation score:
        # note that `sorted` is deterministic in the way it breaks ties
        best = sorted(grid_scores, key=lambda x: x.mean_validation_score,
                      reverse=True)[0]
        self.best_params_ = best.parameters
        self.best_score_ = best.mean_validation_score

        if self.refit:
            # fit the best estimator using the entire dataset
            # clone first to work around broken estimators
            best_estimator = clone(base_estimator).set_params(
                **best.parameters)
            if y is not None:
                best_estimator.fit(X, y, **self.fit_params)
            else:
                best_estimator.fit(X, **self.fit_params)
            self.best_estimator_ = best_estimator
        return self


class GridSearchCV(BaseSearchCV):
    """Exhaustive search over specified parameter values for an estimator.

    Important members are fit, predict.

    GridSearchCV implements a "fit" method and a "predict" method like
    any classifier except that the parameters of the classifier
    used to predict is optimized by cross-validation.

    Parameters
    ----------
    estimator : object type that implements the "fit" and "predict" methods
        A object of that type is instantiated for each grid point.

    param_grid : dict or list of dictionaries
        Dictionary with parameters names (string) as keys and lists of
        parameter settings to try as values, or a list of such
        dictionaries, in which case the grids spanned by each dictionary
        in the list are explored. This enables searching over any sequence
        of parameter settings.

    scoring : string, callable or None, optional, default: None
        A string (see model evaluation documentation) or
        a scorer callable object / function with signature
        ``scorer(estimator, X, y)``.

    fit_params : dict, optional
        Parameters to pass to the fit method.

    n_jobs : int, optional
        Number of jobs to run in parallel (default 1).

    pre_dispatch : int, or string, optional
        Controls the number of jobs that get dispatched during parallel
        execution. Reducing this number can be useful to avoid an
        explosion of memory consumption when more jobs get dispatched
        than CPUs can process. This parameter can be:

            - None, in which case all the jobs are immediately
              created and spawned. Use this for lightweight and
              fast-running jobs, to avoid delays due to on-demand
              spawning of the jobs

            - An int, giving the exact number of total jobs that are
              spawned

            - A string, giving an expression as a function of n_jobs,
              as in '2*n_jobs'

    iid : boolean, optional
        If True, the data is assumed to be identically distributed across
        the folds, and the loss minimized is the total loss per sample,
        and not the mean loss across the folds.

    cv : integer or cross-validation generator, optional
        If an integer is passed, it is the number of folds (default 3).
        Specific cross-validation objects can be passed, see
        sklearn.cross_validation module for the list of possible objects

    refit : boolean
        Refit the best estimator with the entire dataset.
        If "False", it is impossible to make predictions using
        this GridSearchCV instance after fitting.

    verbose : integer
        Controls the verbosity: the higher, the more messages.

    Examples
    --------
    >>> from sklearn import svm, grid_search, datasets
    >>> iris = datasets.load_iris()
    >>> parameters = {'kernel':('linear', 'rbf'), 'C':[1, 10]}
    >>> svr = svm.SVC()
    >>> clf = grid_search.GridSearchCV(svr, parameters)
    >>> clf.fit(iris.data, iris.target)
    ...                             # doctest: +NORMALIZE_WHITESPACE +ELLIPSIS
    GridSearchCV(cv=None,
           estimator=SVC(C=1.0, cache_size=..., class_weight=..., coef0=...,
                         degree=..., gamma=..., kernel='rbf', max_iter=-1,
                         probability=False, random_state=None, shrinking=True,
                         tol=..., verbose=False),
           fit_params={}, iid=..., loss_func=..., n_jobs=1,
           param_grid=..., pre_dispatch=..., refit=..., score_func=...,
           scoring=..., verbose=...)


    Attributes
    ----------
    `grid_scores_` : list of named tuples
        Contains scores for all parameter combinations in param_grid.
        Each entry corresponds to one parameter setting.
        Each named tuple has the attributes:

            * ``parameters``, a dict of parameter settings
            * ``mean_validation_score``, the mean score over the
              cross-validation folds
            * ``cv_validation_scores``, the list of scores for each fold

    `best_estimator_` : estimator
        Estimator that was chosen by the search, i.e. estimator
        which gave highest score (or smallest loss if specified)
        on the left out data.

    `best_score_` : float
        Score of best_estimator on the left out data.

    `best_params_` : dict
        Parameter setting that gave the best results on the hold out data.

    `scorer_` : function
        Scorer function used on the held out data to choose the best
        parameters for the model.

    Notes
    ------
    The parameters selected are those that maximize the score of the left out
    data, unless an explicit score is passed in which case it is used instead.

    If `n_jobs` was set to a value higher than one, the data is copied for each
    point in the grid (and not `n_jobs` times). This is done for efficiency
    reasons if individual jobs take very little time, but may raise errors if
    the dataset is large and not enough memory is available.  A workaround in
    this case is to set `pre_dispatch`. Then, the memory is copied only
    `pre_dispatch` many times. A reasonable value for `pre_dispatch` is `2 *
    n_jobs`.

    See Also
    ---------
    :class:`ParameterGrid`:
        generates all the combinations of a an hyperparameter grid.

    :func:`sklearn.cross_validation.train_test_split`:
        utility function to split the data into a development set usable
        for fitting a GridSearchCV instance and an evaluation set for
        its final evaluation.

    :func:`sklearn.metrics.make_scorer`:
        Make a scorer from a performance metric or loss function.

    """

    def __init__(self, estimator, param_grid, scoring=None, loss_func=None,
                 score_func=None, fit_params=None, n_jobs=1, iid=True,
                 refit=True, cv=None, verbose=0, pre_dispatch='2*n_jobs'):
        super(GridSearchCV, self).__init__(
            estimator, scoring, loss_func, score_func, fit_params, n_jobs, iid,
            refit, cv, verbose, pre_dispatch)
        self.param_grid = param_grid
        _check_param_grid(param_grid)

    def fit(self, X, y=None):
        """Run fit with all sets of parameters.

        Parameters
        ----------

        X : array-like, shape = [n_samples, n_features]
            Training vector, where n_samples is the number of samples and
            n_features is the number of features.

        y : array-like, shape = [n_samples] or [n_samples, n_output], optional
            Target relative to X for classification or regression;
            None for unsupervised learning.

        """
        return self._fit(X, y, ParameterGrid(self.param_grid))


class RandomizedSearchCV(BaseSearchCV):
    """Randomized search on hyper parameters.

    RandomizedSearchCV implements a "fit" method and a "predict" method like
    any classifier except that the parameters of the classifier
    used to predict is optimized by cross-validation.

    In contrast to GridSearchCV, not all parameter values are tried out, but
    rather a fixed number of parameter settings is sampled from the specified
    distributions. The number of parameter settings that are tried is
    given by n_iter.

    Parameters
    ----------
    estimator : object type that implements the "fit" and "predict" methods
        A object of that type is instantiated for each parameter setting.

    param_distributions : dict
        Dictionary with parameters names (string) as keys and distributions
        or lists of parameters to try. Distributions must provide a ``rvs``
        method for sampling (such as those from scipy.stats.distributions).
        If a list is given, it is sampled uniformly.

    n_iter : int, default=10
        Number of parameter settings that are sampled. n_iter trades
        off runtime vs quality of the solution.

    scoring : string, callable or None, optional, default: None
        A string (see model evaluation documentation) or
        a scorer callable object / function with signature
        ``scorer(estimator, X, y)``.

    fit_params : dict, optional
        Parameters to pass to the fit method.

    n_jobs : int, optional
        Number of jobs to run in parallel (default 1).

    pre_dispatch : int, or string, optional
        Controls the number of jobs that get dispatched during parallel
        execution. Reducing this number can be useful to avoid an
        explosion of memory consumption when more jobs get dispatched
        than CPUs can process. This parameter can be:

            - None, in which case all the jobs are immediately
              created and spawned. Use this for lightweight and
              fast-running jobs, to avoid delays due to on-demand
              spawning of the jobs

            - An int, giving the exact number of total jobs that are
              spawned

            - A string, giving an expression as a function of n_jobs,
              as in '2*n_jobs'

    iid : boolean, optional
        If True, the data is assumed to be identically distributed across
        the folds, and the loss minimized is the total loss per sample,
        and not the mean loss across the folds.

    cv : integer or cross-validation generator, optional
        If an integer is passed, it is the number of folds (default 3).
        Specific cross-validation objects can be passed, see
        sklearn.cross_validation module for the list of possible objects

    refit : boolean
        Refit the best estimator with the entire dataset.
        If "False", it is impossible to make predictions using
        this RandomizedSearchCV instance after fitting.

    verbose : integer
        Controls the verbosity: the higher, the more messages.


    Attributes
    ----------
    `grid_scores_` : list of named tuples
        Contains scores for all parameter combinations in param_grid.
        Each entry corresponds to one parameter setting.
        Each named tuple has the attributes:

            * ``parameters``, a dict of parameter settings
            * ``mean_validation_score``, the mean score over the
              cross-validation folds
            * ``cv_validation_scores``, the list of scores for each fold

    `best_estimator_` : estimator
        Estimator that was chosen by the search, i.e. estimator
        which gave highest score (or smallest loss if specified)
        on the left out data.

    `best_score_` : float
        Score of best_estimator on the left out data.

    `best_params_` : dict
        Parameter setting that gave the best results on the hold out data.

    Notes
    -----
    The parameters selected are those that maximize the score of the held-out
    data, according to the scoring parameter.

    If `n_jobs` was set to a value higher than one, the data is copied for each
    parameter setting(and not `n_jobs` times). This is done for efficiency
    reasons if individual jobs take very little time, but may raise errors if
    the dataset is large and not enough memory is available.  A workaround in
    this case is to set `pre_dispatch`. Then, the memory is copied only
    `pre_dispatch` many times. A reasonable value for `pre_dispatch` is `2 *
    n_jobs`.

    See Also
    --------
    :class:`GridSearchCV`:
        Does exhaustive search over a grid of parameters.

    :class:`ParameterSampler`:
        A generator over parameter settins, constructed from
        param_distributions.

    """

    def __init__(self, estimator, param_distributions, n_iter=10, scoring=None,
                 fit_params=None, n_jobs=1, iid=True, refit=True, cv=None,
                 verbose=0, pre_dispatch='2*n_jobs', random_state=None):

        self.param_distributions = param_distributions
        self.n_iter = n_iter
        self.random_state = random_state
        super(RandomizedSearchCV, self).__init__(
            estimator=estimator, scoring=scoring, fit_params=fit_params,
            n_jobs=n_jobs, iid=iid, refit=refit, cv=cv, verbose=verbose,
            pre_dispatch=pre_dispatch)

    def fit(self, X, y=None):
        """Run fit on the estimator with randomly drawn parameters.

        Parameters
        ----------
        X : array-like, shape = [n_samples, n_features]
            Training vector, where n_samples in the number of samples and
            n_features is the number of features.

        y : array-like, shape = [n_samples] or [n_samples, n_output], optional
            Target relative to X for classification or regression;
            None for unsupervised learning.

        """
        sampled_params = ParameterSampler(self.param_distributions,
                                          self.n_iter,
                                          random_state=self.random_state)
        return self._fit(X, y, sampled_params)