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14 KiB
ReStructuredText
397 lines
14 KiB
ReStructuredText
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.. include:: _contributors.rst
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.. currentmodule:: sklearn
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============
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Version 0.13
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============
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.. _changes_0_13_1:
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Version 0.13.1
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==============
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**February 23, 2013**
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The 0.13.1 release only fixes some bugs and does not add any new functionality.
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Changelog
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---------
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- Fixed a testing error caused by the function `cross_validation.train_test_split` being
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interpreted as a test by `Yaroslav Halchenko`_.
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- Fixed a bug in the reassignment of small clusters in the :class:`cluster.MiniBatchKMeans`
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by `Gael Varoquaux`_.
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- Fixed default value of ``gamma`` in :class:`decomposition.KernelPCA` by `Lars Buitinck`_.
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- Updated joblib to ``0.7.0d`` by `Gael Varoquaux`_.
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- Fixed scaling of the deviance in :class:`ensemble.GradientBoostingClassifier` by `Peter Prettenhofer`_.
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- Better tie-breaking in :class:`multiclass.OneVsOneClassifier` by `Andreas Müller`_.
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- Other small improvements to tests and documentation.
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People
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------
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List of contributors for release 0.13.1 by number of commits.
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* 16 `Lars Buitinck`_
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* 12 `Andreas Müller`_
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* 8 `Gael Varoquaux`_
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* 5 Robert Marchman
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* 3 `Peter Prettenhofer`_
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* 2 Hrishikesh Huilgolkar
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* 1 Bastiaan van den Berg
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* 1 Diego Molla
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* 1 `Gilles Louppe`_
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* 1 `Mathieu Blondel`_
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* 1 `Nelle Varoquaux`_
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* 1 Rafael Cunha de Almeida
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* 1 Rolando Espinoza La fuente
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* 1 `Vlad Niculae`_
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* 1 `Yaroslav Halchenko`_
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.. _changes_0_13:
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Version 0.13
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============
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**January 21, 2013**
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New Estimator Classes
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---------------------
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- :class:`dummy.DummyClassifier` and :class:`dummy.DummyRegressor`, two
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data-independent predictors by `Mathieu Blondel`_. Useful to sanity-check
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your estimators. See :ref:`dummy_estimators` in the user guide.
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Multioutput support added by `Arnaud Joly`_.
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- :class:`decomposition.FactorAnalysis`, a transformer implementing the
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classical factor analysis, by `Christian Osendorfer`_ and `Alexandre
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Gramfort`_. See :ref:`FA` in the user guide.
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- :class:`feature_extraction.FeatureHasher`, a transformer implementing the
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"hashing trick" for fast, low-memory feature extraction from string fields
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by `Lars Buitinck`_ and :class:`feature_extraction.text.HashingVectorizer`
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for text documents by `Olivier Grisel`_ See :ref:`feature_hashing` and
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:ref:`hashing_vectorizer` for the documentation and sample usage.
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- :class:`pipeline.FeatureUnion`, a transformer that concatenates
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results of several other transformers by `Andreas Müller`_. See
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:ref:`feature_union` in the user guide.
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- :class:`random_projection.GaussianRandomProjection`,
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:class:`random_projection.SparseRandomProjection` and the function
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:func:`random_projection.johnson_lindenstrauss_min_dim`. The first two are
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transformers implementing Gaussian and sparse random projection matrix
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by `Olivier Grisel`_ and `Arnaud Joly`_.
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See :ref:`random_projection` in the user guide.
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- :class:`kernel_approximation.Nystroem`, a transformer for approximating
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arbitrary kernels by `Andreas Müller`_. See
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:ref:`nystroem_kernel_approx` in the user guide.
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- :class:`preprocessing.OneHotEncoder`, a transformer that computes binary
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encodings of categorical features by `Andreas Müller`_. See
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:ref:`preprocessing_categorical_features` in the user guide.
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- :class:`linear_model.PassiveAggressiveClassifier` and
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:class:`linear_model.PassiveAggressiveRegressor`, predictors implementing
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an efficient stochastic optimization for linear models by `Rob Zinkov`_ and
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`Mathieu Blondel`_. See :ref:`passive_aggressive` in the user
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guide.
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- :class:`ensemble.RandomTreesEmbedding`, a transformer for creating high-dimensional
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sparse representations using ensembles of totally random trees by `Andreas Müller`_.
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See :ref:`random_trees_embedding` in the user guide.
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- :class:`manifold.SpectralEmbedding` and function
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:func:`manifold.spectral_embedding`, implementing the "laplacian
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eigenmaps" transformation for non-linear dimensionality reduction by Wei
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Li. See :ref:`spectral_embedding` in the user guide.
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- :class:`isotonic.IsotonicRegression` by `Fabian Pedregosa`_, `Alexandre Gramfort`_
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and `Nelle Varoquaux`_,
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Changelog
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---------
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- :func:`metrics.zero_one_loss` (formerly ``metrics.zero_one``) now has
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option for normalized output that reports the fraction of
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misclassifications, rather than the raw number of misclassifications. By
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Kyle Beauchamp.
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- :class:`tree.DecisionTreeClassifier` and all derived ensemble models now
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support sample weighting, by `Noel Dawe`_ and `Gilles Louppe`_.
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- Speedup improvement when using bootstrap samples in forests of randomized
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trees, by `Peter Prettenhofer`_ and `Gilles Louppe`_.
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- Partial dependence plots for :ref:`gradient_boosting` in
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`ensemble.partial_dependence.partial_dependence` by `Peter
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Prettenhofer`_. See :ref:`sphx_glr_auto_examples_inspection_plot_partial_dependence.py` for an
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example.
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- The table of contents on the website has now been made expandable by
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`Jaques Grobler`_.
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- :class:`feature_selection.SelectPercentile` now breaks ties
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deterministically instead of returning all equally ranked features.
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- :class:`feature_selection.SelectKBest` and
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:class:`feature_selection.SelectPercentile` are more numerically stable
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since they use scores, rather than p-values, to rank results. This means
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that they might sometimes select different features than they did
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previously.
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- Ridge regression and ridge classification fitting with ``sparse_cg`` solver
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no longer has quadratic memory complexity, by `Lars Buitinck`_ and
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`Fabian Pedregosa`_.
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- Ridge regression and ridge classification now support a new fast solver
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called ``lsqr``, by `Mathieu Blondel`_.
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- Speed up of :func:`metrics.precision_recall_curve` by Conrad Lee.
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- Added support for reading/writing svmlight files with pairwise
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preference attribute (qid in svmlight file format) in
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:func:`datasets.dump_svmlight_file` and
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:func:`datasets.load_svmlight_file` by `Fabian Pedregosa`_.
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- Faster and more robust :func:`metrics.confusion_matrix` and
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:ref:`clustering_evaluation` by Wei Li.
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- `cross_validation.cross_val_score` now works with precomputed kernels
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and affinity matrices, by `Andreas Müller`_.
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- LARS algorithm made more numerically stable with heuristics to drop
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regressors too correlated as well as to stop the path when
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numerical noise becomes predominant, by `Gael Varoquaux`_.
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- Faster implementation of :func:`metrics.precision_recall_curve` by
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Conrad Lee.
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- New kernel `metrics.chi2_kernel` by `Andreas Müller`_, often used
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in computer vision applications.
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- Fix of longstanding bug in :class:`naive_bayes.BernoulliNB` fixed by
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Shaun Jackman.
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- Implemented ``predict_proba`` in :class:`multiclass.OneVsRestClassifier`,
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by Andrew Winterman.
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- Improve consistency in gradient boosting: estimators
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:class:`ensemble.GradientBoostingRegressor` and
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:class:`ensemble.GradientBoostingClassifier` use the estimator
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:class:`tree.DecisionTreeRegressor` instead of the
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`tree._tree.Tree` data structure by `Arnaud Joly`_.
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- Fixed a floating point exception in the :ref:`decision trees <tree>`
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module, by Seberg.
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- Fix :func:`metrics.roc_curve` fails when y_true has only one class
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by Wei Li.
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- Add the :func:`metrics.mean_absolute_error` function which computes the
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mean absolute error. The :func:`metrics.mean_squared_error`,
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:func:`metrics.mean_absolute_error` and
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:func:`metrics.r2_score` metrics support multioutput by `Arnaud Joly`_.
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- Fixed ``class_weight`` support in :class:`svm.LinearSVC` and
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:class:`linear_model.LogisticRegression` by `Andreas Müller`_. The meaning
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of ``class_weight`` was reversed as erroneously higher weight meant less
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positives of a given class in earlier releases.
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- Improve narrative documentation and consistency in
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:mod:`sklearn.metrics` for regression and classification metrics
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by `Arnaud Joly`_.
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- Fixed a bug in :class:`sklearn.svm.SVC` when using csr-matrices with
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unsorted indices by Xinfan Meng and `Andreas Müller`_.
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- :class:`cluster.MiniBatchKMeans`: Add random reassignment of cluster centers
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with little observations attached to them, by `Gael Varoquaux`_.
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API changes summary
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-------------------
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- Renamed all occurrences of ``n_atoms`` to ``n_components`` for consistency.
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This applies to :class:`decomposition.DictionaryLearning`,
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:class:`decomposition.MiniBatchDictionaryLearning`,
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:func:`decomposition.dict_learning`, :func:`decomposition.dict_learning_online`.
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- Renamed all occurrences of ``max_iters`` to ``max_iter`` for consistency.
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This applies to `semi_supervised.LabelPropagation` and
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`semi_supervised.label_propagation.LabelSpreading`.
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- Renamed all occurrences of ``learn_rate`` to ``learning_rate`` for
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consistency in `ensemble.BaseGradientBoosting` and
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:class:`ensemble.GradientBoostingRegressor`.
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- The module ``sklearn.linear_model.sparse`` is gone. Sparse matrix support
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was already integrated into the "regular" linear models.
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- `sklearn.metrics.mean_square_error`, which incorrectly returned the
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accumulated error, was removed. Use :func:`metrics.mean_squared_error` instead.
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- Passing ``class_weight`` parameters to ``fit`` methods is no longer
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supported. Pass them to estimator constructors instead.
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- GMMs no longer have ``decode`` and ``rvs`` methods. Use the ``score``,
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``predict`` or ``sample`` methods instead.
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- The ``solver`` fit option in Ridge regression and classification is now
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deprecated and will be removed in v0.14. Use the constructor option
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instead.
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- `feature_extraction.text.DictVectorizer` now returns sparse
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matrices in the CSR format, instead of COO.
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- Renamed ``k`` in `cross_validation.KFold` and
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`cross_validation.StratifiedKFold` to ``n_folds``, renamed
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``n_bootstraps`` to ``n_iter`` in ``cross_validation.Bootstrap``.
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- Renamed all occurrences of ``n_iterations`` to ``n_iter`` for consistency.
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This applies to `cross_validation.ShuffleSplit`,
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`cross_validation.StratifiedShuffleSplit`,
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:func:`utils.extmath.randomized_range_finder` and
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:func:`utils.extmath.randomized_svd`.
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- Replaced ``rho`` in :class:`linear_model.ElasticNet` and
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:class:`linear_model.SGDClassifier` by ``l1_ratio``. The ``rho`` parameter
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had different meanings; ``l1_ratio`` was introduced to avoid confusion.
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It has the same meaning as previously ``rho`` in
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:class:`linear_model.ElasticNet` and ``(1-rho)`` in
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:class:`linear_model.SGDClassifier`.
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- :class:`linear_model.LassoLars` and :class:`linear_model.Lars` now
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store a list of paths in the case of multiple targets, rather than
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an array of paths.
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- The attribute ``gmm`` of `hmm.GMMHMM` was renamed to ``gmm_``
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to adhere more strictly with the API.
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- `cluster.spectral_embedding` was moved to
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:func:`manifold.spectral_embedding`.
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- Renamed ``eig_tol`` in :func:`manifold.spectral_embedding`,
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:class:`cluster.SpectralClustering` to ``eigen_tol``, renamed ``mode``
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to ``eigen_solver``.
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- Renamed ``mode`` in :func:`manifold.spectral_embedding` and
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:class:`cluster.SpectralClustering` to ``eigen_solver``.
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- ``classes_`` and ``n_classes_`` attributes of
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:class:`tree.DecisionTreeClassifier` and all derived ensemble models are
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now flat in case of single output problems and nested in case of
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multi-output problems.
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- The ``estimators_`` attribute of
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:class:`ensemble.GradientBoostingRegressor` and
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:class:`ensemble.GradientBoostingClassifier` is now an
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array of :class:`tree.DecisionTreeRegressor`.
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- Renamed ``chunk_size`` to ``batch_size`` in
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:class:`decomposition.MiniBatchDictionaryLearning` and
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:class:`decomposition.MiniBatchSparsePCA` for consistency.
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- :class:`svm.SVC` and :class:`svm.NuSVC` now provide a ``classes_``
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attribute and support arbitrary dtypes for labels ``y``.
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Also, the dtype returned by ``predict`` now reflects the dtype of
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``y`` during ``fit`` (used to be ``np.float``).
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- Changed default test_size in `cross_validation.train_test_split`
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to None, added possibility to infer ``test_size`` from ``train_size`` in
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`cross_validation.ShuffleSplit` and
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`cross_validation.StratifiedShuffleSplit`.
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- Renamed function `sklearn.metrics.zero_one` to
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`sklearn.metrics.zero_one_loss`. Be aware that the default behavior
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in `sklearn.metrics.zero_one_loss` is different from
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`sklearn.metrics.zero_one`: ``normalize=False`` is changed to
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``normalize=True``.
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- Renamed function `metrics.zero_one_score` to
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:func:`metrics.accuracy_score`.
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- :func:`datasets.make_circles` now has the same number of inner and outer points.
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- In the Naive Bayes classifiers, the ``class_prior`` parameter was moved
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from ``fit`` to ``__init__``.
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People
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------
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List of contributors for release 0.13 by number of commits.
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* 364 `Andreas Müller`_
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* 143 `Arnaud Joly`_
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* 137 `Peter Prettenhofer`_
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* 131 `Gael Varoquaux`_
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* 117 `Mathieu Blondel`_
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* 108 `Lars Buitinck`_
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* 106 Wei Li
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* 101 `Olivier Grisel`_
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* 65 `Vlad Niculae`_
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* 54 `Gilles Louppe`_
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* 40 `Jaques Grobler`_
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* 38 `Alexandre Gramfort`_
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* 30 `Rob Zinkov`_
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* 19 Aymeric Masurelle
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* 18 Andrew Winterman
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* 17 `Fabian Pedregosa`_
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* 17 Nelle Varoquaux
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* 16 `Christian Osendorfer`_
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* 14 `Daniel Nouri`_
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* 13 :user:`Virgile Fritsch <VirgileFritsch>`
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* 13 syhw
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* 12 `Satrajit Ghosh`_
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* 10 Corey Lynch
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* 10 Kyle Beauchamp
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* 9 Brian Cheung
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* 9 Immanuel Bayer
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* 9 mr.Shu
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* 8 Conrad Lee
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* 8 `James Bergstra`_
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* 7 Tadej Janež
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* 6 Brian Cajes
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* 6 `Jake Vanderplas`_
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* 6 Michael
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* 6 Noel Dawe
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* 6 Tiago Nunes
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* 6 cow
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* 5 Anze
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* 5 Shiqiao Du
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* 4 Christian Jauvin
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* 4 Jacques Kvam
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* 4 Richard T. Guy
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* 4 `Robert Layton`_
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* 3 Alexandre Abraham
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* 3 Doug Coleman
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* 3 Scott Dickerson
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* 2 ApproximateIdentity
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* 2 John Benediktsson
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* 2 Mark Veronda
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* 2 Matti Lyra
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* 2 Mikhail Korobov
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* 2 Xinfan Meng
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* 1 Alejandro Weinstein
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* 1 `Alexandre Passos`_
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* 1 Christoph Deil
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* 1 Eugene Nizhibitsky
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* 1 Kenneth C. Arnold
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* 1 Luis Pedro Coelho
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* 1 Miroslav Batchkarov
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* 1 Pavel
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* 1 Sebastian Berg
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* 1 Shaun Jackman
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* 1 Subhodeep Moitra
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* 1 bob
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* 1 dengemann
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* 1 emanuele
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* 1 x006
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