Source code for gemseo.mlearning.qual_measure.rmse_measure

# -*- coding: utf-8 -*-
# Copyright 2021 IRT Saint Exupéry, https://www.irt-saintexupery.com
#
# This program is free software; you can redistribute it and/or
# modify it under the terms of the GNU Lesser General Public
# License version 3 as published by the Free Software Foundation.
#
# This program is distributed in the hope that it will be useful,
# but WITHOUT ANY WARRANTY; without even the implied warranty of
# MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE.  See the GNU
# Lesser General Public License for more details.
#
# You should have received a copy of the GNU Lesser General Public License
# along with this program; if not, write to the Free Software Foundation,
# Inc., 51 Franklin Street, Fifth Floor, Boston, MA  02110-1301, USA.

# Contributors:
#    INITIAL AUTHORS - initial API and implementation and/or initial
#                         documentation
#        :author: Matthias De Lozzo
#    OTHER AUTHORS   - MACROSCOPIC CHANGES
"""The root mean squared error to measure the quality of a regression algorithm.

The :mod:`~gemseo.mlearning.qual_measure.mse_measure` module
implements the concept of root mean squared error measures
for machine learning algorithms.

This concept is implemented through the
:class:`.RMSEMeasure` class and
overloads the :meth:`!MSEMeasure.evaluate_*` methods.

The root mean squared error (RMSE) is defined by

.. math::

    \\operatorname{RMSE}(\\hat{y})=\\sqrt{\\frac{1}{n}\\sum_{i=1}^n(\\hat{y}_i-y_i)^2},

where
:math:`\\hat{y}` are the predictions and
:math:`y` are the data points.
"""
from __future__ import division, unicode_literals

from typing import Optional, Sequence, Union

from numpy import ndarray

from gemseo.core.dataset import Dataset
from gemseo.mlearning.qual_measure.mse_measure import MSEMeasure
from gemseo.mlearning.regression.regression import MLRegressionAlgo


[docs]class RMSEMeasure(MSEMeasure): """The root mean Squared Error measure for machine learning.""" def __init__( self, algo, # type: MLRegressionAlgo ): # type: (...) -> None """ Args: algo: A machine learning algorithm for regression. """ super(RMSEMeasure, self).__init__(algo)
[docs] def evaluate_learn( self, samples=None, # type: Optional[Sequence[int]] multioutput=True, # type: bool ): # type: (...) -> Union[float,ndarray] mse = super(RMSEMeasure, self).evaluate_learn( samples=samples, multioutput=multioutput ) return mse ** 0.5
[docs] def evaluate_test( self, test_data, # type:Dataset samples=None, # type: Optional[Sequence[int]] multioutput=True, # type: bool ): # type: (...) -> Union[float,ndarray] mse = super(RMSEMeasure, self).evaluate_test( test_data, samples=samples, multioutput=multioutput ) return mse ** 0.5
[docs] def evaluate_kfolds( self, n_folds=5, # type: int samples=None, # type: Optional[Sequence[int]] multioutput=True, # type: bool randomize=False, # type:bool ): # type: (...) -> Union[float,ndarray] mse = super(RMSEMeasure, self).evaluate_kfolds( n_folds=n_folds, samples=samples, multioutput=multioutput, randomize=randomize, ) return mse ** 0.5
[docs] def evaluate_bootstrap( self, n_replicates=100, # type: int samples=None, # type: Optional[Sequence[int]] multioutput=True, # type: bool ): # type: (...) -> Union[float,ndarray] mse = super(RMSEMeasure, self).evaluate_bootstrap( n_replicates=n_replicates, samples=samples, multioutput=multioutput ) return mse ** 0.5