Version 0.19.1¶
October 23, 2017
This is a bug-fix release with some minor documentation improvements and enhancements to features released in 0.19.0.
Note there may be minor differences in TSNE output in this release (due to #9623), in the case where multiple samples have equal distance to some sample.
Changelog¶
API changes¶
- Reverted the addition of
metrics.ndcg_score
andmetrics.dcg_score
which had been merged into version 0.19.0 by error. The implementations were broken and undocumented. return_train_score
which was added tomodel_selection.GridSearchCV
,model_selection.RandomizedSearchCV
andmodel_selection.cross_validate
in version 0.19.0 will be changing its default value from True to False in version 0.21. We found that calculating training score could have a great effect on cross validation runtime in some cases. Users should explicitly setreturn_train_score
to False if prediction or scoring functions are slow, resulting in a deleterious effect on CV runtime, or to True if they wish to use the calculated scores. #9677 by Kumar Ashutosh and Joel Nothman.correlation_models
andregression_models
from the legacy gaussian processes implementation have been belatedly deprecated. #9717 by Kumar Ashutosh.
Bug fixes¶
- Avoid integer overflows in
metrics.matthews_corrcoef
. #9693 by Sam Steingold. - Fixed a bug in the objective function for
manifold.TSNE
(both exact and with the Barnes-Hut approximation) whenn_components >= 3
. #9711 by @goncalo-rodrigues. - Fix regression in
model_selection.cross_val_predict
where it raised an error withmethod='predict_proba'
for some probabilistic classifiers. #9641 by James Bourbeau. - Fixed a bug where
datasets.make_classification
modified its inputweights
. #9865 by Sachin Kelkar. model_selection.StratifiedShuffleSplit
now works with multioutput multiclass or multilabel data with more than 1000 columns. #9922 by Charlie Brummitt.- Fixed a bug with nested and conditional parameter setting, e.g. setting a pipeline step and its parameter at the same time. #9945 by Andreas Müller and Joel Nothman.
Regressions in 0.19.0 fixed in 0.19.1:
- Fixed a bug where parallelised prediction in random forests was not thread-safe and could (rarely) result in arbitrary errors. #9830 by Joel Nothman.
- Fix regression in
model_selection.cross_val_predict
where it no longer acceptedX
as a list. #9600 by Rasul Kerimov. - Fixed handling of
cross_val_predict
for binary classification withmethod='decision_function'
. #9593 by Reiichiro Nakano and core devs. - Fix regression in
pipeline.Pipeline
where it no longer acceptedsteps
as a tuple. #9604 by Joris Van den Bossche. - Fix bug where
n_iter
was not properly deprecated, leavingn_iter
unavailable for interim use inlinear_model.SGDClassifier
,linear_model.SGDRegressor
,linear_model.PassiveAggressiveClassifier
,linear_model.PassiveAggressiveRegressor
andlinear_model.Perceptron
. #9558 by Andreas Müller. - Dataset fetchers make sure temporary files are closed before removing them, which caused errors on Windows. #9847 by Joan Massich.
- Fixed a regression in
manifold.TSNE
where it no longer supported metrics other than ‘euclidean’ and ‘precomputed’. #9623 by Oli Blum.
Enhancements¶
- Our test suite and
utils.estimator_checks.check_estimators
can now be run without Nose installed. #9697 by Joan Massich. - To improve usability of version 0.19’s
pipeline.Pipeline
caching,memory
now allowsjoblib.Memory
instances. This make use of the newutils.validation.check_memory
helper. issue:9584 by Kumar Ashutosh - Some fixes to examples: #9750, #9788, #9815
- Made a FutureWarning in SGD-based estimators less verbose. #9802 by Vrishank Bhardwaj.
Code and Documentation Contributors¶
With thanks to:
Joel Nothman, Loic Esteve, Andreas Mueller, Kumar Ashutosh, Vrishank Bhardwaj, Hanmin Qin, Rasul Kerimov, James Bourbeau, Nagarjuna Kumar, Nathaniel Saul, Olivier Grisel, Roman Yurchak, Reiichiro Nakano, Sachin Kelkar, Sam Steingold, Yaroslav Halchenko, diegodlh, felix, goncalo-rodrigues, jkleint, oliblum90, pasbi, Anthony Gitter, Ben Lawson, Charlie Brummitt, Didi Bar-Zev, Gael Varoquaux, Joan Massich, Joris Van den Bossche, nielsenmarkus11
Version 0.19¶
August 12, 2017
Highlights¶
We are excited to release a number of great new features including
neighbors.LocalOutlierFactor
for anomaly detection,
preprocessing.QuantileTransformer
for robust feature transformation,
and the multioutput.ClassifierChain
meta-estimator to simply account
for dependencies between classes in multilabel problems. We have some new
algorithms in existing estimators, such as multiplicative update in
decomposition.NMF
and multinomial
linear_model.LogisticRegression
with L1 loss (use solver='saga'
).
Cross validation is now able to return the results from multiple metric
evaluations. The new model_selection.cross_validate
can return many
scores on the test data as well as training set performance and timings, and we
have extended the scoring
and refit
parameters for grid/randomized
search to handle multiple metrics.
You can also learn faster. For instance, the new option to cache
transformations in pipeline.Pipeline
makes grid
search over pipelines including slow transformations much more efficient. And
you can predict faster: if you’re sure you know what you’re doing, you can turn
off validating that the input is finite using config_context
.
We’ve made some important fixes too. We’ve fixed a longstanding implementation
error in metrics.average_precision_score
, so please be cautious with
prior results reported from that function. A number of errors in the
manifold.TSNE
implementation have been fixed, particularly in the
default Barnes-Hut approximation. semi_supervised.LabelSpreading
and
semi_supervised.LabelPropagation
have had substantial fixes.
LabelPropagation was previously broken. LabelSpreading should now correctly
respect its alpha parameter.
Changed models¶
The following estimators and functions, when fit with the same data and parameters, may produce different models from the previous version. This often occurs due to changes in the modelling logic (bug fixes or enhancements), or in random sampling procedures.
cluster.KMeans
with sparse X and initial centroids given (bug fix)cross_decomposition.PLSRegression
withscale=True
(bug fix)ensemble.GradientBoostingClassifier
andensemble.GradientBoostingRegressor
wheremin_impurity_split
is used (bug fix)- gradient boosting
loss='quantile'
(bug fix) ensemble.IsolationForest
(bug fix)feature_selection.SelectFdr
(bug fix)linear_model.RANSACRegressor
(bug fix)linear_model.LassoLars
(bug fix)linear_model.LassoLarsIC
(bug fix)manifold.TSNE
(bug fix)neighbors.NearestCentroid
(bug fix)semi_supervised.LabelSpreading
(bug fix)semi_supervised.LabelPropagation
(bug fix)- tree based models where
min_weight_fraction_leaf
is used (enhancement) model_selection.StratifiedKFold
withshuffle=True
(this change, due to #7823 was not mentioned in the release notes at the time)
Details are listed in the changelog below.
(While we are trying to better inform users by providing this information, we cannot assure that this list is complete.)
Changelog¶
New features¶
Classifiers and regressors
- Added
multioutput.ClassifierChain
for multi-label classification. By Adam Kleczewski. - Added solver
'saga'
that implements the improved version of Stochastic Average Gradient, inlinear_model.LogisticRegression
andlinear_model.Ridge
. It allows the use of L1 penalty with multinomial logistic loss, and behaves marginally better than ‘sag’ during the first epochs of ridge and logistic regression. #8446 by Arthur Mensch.
Other estimators
- Added the
neighbors.LocalOutlierFactor
class for anomaly detection based on nearest neighbors. #5279 by Nicolas Goix and Alexandre Gramfort. - Added
preprocessing.QuantileTransformer
class andpreprocessing.quantile_transform
function for features normalization based on quantiles. #8363 by Denis Engemann, Guillaume Lemaitre, Olivier Grisel, Raghav RV, Thierry Guillemot, and Gael Varoquaux. - The new solver
'mu'
implements a Multiplicate Update indecomposition.NMF
, allowing the optimization of all beta-divergences, including the Frobenius norm, the generalized Kullback-Leibler divergence and the Itakura-Saito divergence. #5295 by Tom Dupre la Tour.
Model selection and evaluation
model_selection.GridSearchCV
andmodel_selection.RandomizedSearchCV
now support simultaneous evaluation of multiple metrics. Refer to the Specifying multiple metrics for evaluation section of the user guide for more information. #7388 by Raghav RV- Added the
model_selection.cross_validate
which allows evaluation of multiple metrics. This function returns a dict with more useful information from cross-validation such as the train scores, fit times and score times. Refer to The cross_validate function and multiple metric evaluation section of the userguide for more information. #7388 by Raghav RV - Added
metrics.mean_squared_log_error
, which computes the mean square error of the logarithmic transformation of targets, particularly useful for targets with an exponential trend. #7655 by Karan Desai. - Added
metrics.dcg_score
andmetrics.ndcg_score
, which compute Discounted cumulative gain (DCG) and Normalized discounted cumulative gain (NDCG). #7739 by David Gasquez. - Added the
model_selection.RepeatedKFold
andmodel_selection.RepeatedStratifiedKFold
. #8120 by Neeraj Gangwar.
Miscellaneous
- Validation that input data contains no NaN or inf can now be suppressed
using
config_context
, at your own risk. This will save on runtime, and may be particularly useful for prediction time. #7548 by Joel Nothman. - Added a test to ensure parameter listing in docstrings match the function/class signature. #9206 by Alexandre Gramfort and Raghav RV.
Enhancements¶
Trees and ensembles
- The
min_weight_fraction_leaf
constraint in tree construction is now more efficient, taking a fast path to declare a node a leaf if its weight is less than 2 * the minimum. Note that the constructed tree will be different from previous versions wheremin_weight_fraction_leaf
is used. #7441 by Nelson Liu. ensemble.GradientBoostingClassifier
andensemble.GradientBoostingRegressor
now support sparse input for prediction. #6101 by Ibraim Ganiev.ensemble.VotingClassifier
now allows changing estimators by usingensemble.VotingClassifier.set_params
. An estimator can also be removed by setting it toNone
. #7674 by Yichuan Liu.tree.export_graphviz
now shows configurable number of decimal places. #8698 by Guillaume Lemaitre.- Added
flatten_transform
parameter toensemble.VotingClassifier
to change output shape of transform method to 2 dimensional. #7794 by Ibraim Ganiev and Herilalaina Rakotoarison.
Linear, kernelized and related models
linear_model.SGDClassifier
,linear_model.SGDRegressor
,linear_model.PassiveAggressiveClassifier
,linear_model.PassiveAggressiveRegressor
andlinear_model.Perceptron
now exposemax_iter
andtol
parameters, to handle convergence more precisely.n_iter
parameter is deprecated, and the fitted estimator exposes an_iter_
attribute, with actual number of iterations before convergence. #5036 by Tom Dupre la Tour.- Added
average
parameter to perform weight averaging inlinear_model.PassiveAggressiveClassifier
. #4939 by Andrea Esuli. linear_model.RANSACRegressor
no longer throws an error when callingfit
if no inliers are found in its first iteration. Furthermore, causes of skipped iterations are tracked in newly added attributes,n_skips_*
. #7914 by Michael Horrell.- In
gaussian_process.GaussianProcessRegressor
, methodpredict
is a lot faster withreturn_std=True
. #8591 by Hadrien Bertrand. - Added
return_std
topredict
method oflinear_model.ARDRegression
andlinear_model.BayesianRidge
. #7838 by Sergey Feldman. - Memory usage enhancements: Prevent cast from float32 to float64 in:
linear_model.MultiTaskElasticNet
;linear_model.LogisticRegression
when using newton-cg solver; andlinear_model.Ridge
when using svd, sparse_cg, cholesky or lsqr solvers. #8835, #8061 by Joan Massich and Nicolas Cordier and Thierry Guillemot.
Other predictors
- Custom metrics for the
neighbors
binary trees now have fewer constraints: they must take two 1d-arrays and return a float. #6288 by Jake Vanderplas. algorithm='auto
inneighbors
estimators now chooses the most appropriate algorithm for all input types and metrics. #9145 by Herilalaina Rakotoarison and Reddy Chinthala.
Decomposition, manifold learning and clustering
cluster.MiniBatchKMeans
andcluster.KMeans
now use significantly less memory when assigning data points to their nearest cluster center. #7721 by Jon Crall.decomposition.PCA
,decomposition.IncrementalPCA
anddecomposition.TruncatedSVD
now expose the singular values from the underlying SVD. They are stored in the attributesingular_values_
, like indecomposition.IncrementalPCA
. #7685 by Tommy Löfstedtdecomposition.NMF
now faster whenbeta_loss=0
. #9277 by @hongkahjun.- Memory improvements for method
barnes_hut
inmanifold.TSNE
#7089 by Thomas Moreau and Olivier Grisel. - Optimization schedule improvements for Barnes-Hut
manifold.TSNE
so the results are closer to the one from the reference implementation lvdmaaten/bhtsne by Thomas Moreau and Olivier Grisel. - Memory usage enhancements: Prevent cast from float32 to float64 in
decomposition.PCA
anddecomposition.randomized_svd_low_rank
. #9067 by Raghav RV.
Preprocessing and feature selection
- Added
norm_order
parameter tofeature_selection.SelectFromModel
to enable selection of the norm order whencoef_
is more than 1D. #6181 by Antoine Wendlinger. - Added ability to use sparse matrices in
feature_selection.f_regression
withcenter=True
. #8065 by Daniel LeJeune. - Small performance improvement to n-gram creation in
feature_extraction.text
by binding methods for loops and special-casing unigrams. #7567 by Jaye Doepke - Relax assumption on the data for the
kernel_approximation.SkewedChi2Sampler
. Since the Skewed-Chi2 kernel is defined on the open interval \((-skewedness; +\infty)^d\), the transform function should not check whetherX < 0
but whetherX < -self.skewedness
. #7573 by Romain Brault. - Made default kernel parameters kernel-dependent in
kernel_approximation.Nystroem
. #5229 by Saurabh Bansod and Andreas Müller.
Model evaluation and meta-estimators
pipeline.Pipeline
is now able to cache transformers within a pipeline by using thememory
constructor parameter. #7990 by Guillaume Lemaitre.pipeline.Pipeline
steps can now be accessed as attributes of itsnamed_steps
attribute. #8586 by Herilalaina Rakotoarison.- Added
sample_weight
parameter topipeline.Pipeline.score
. #7723 by Mikhail Korobov. - Added ability to set
n_jobs
parameter topipeline.make_union
. ATypeError
will be raised for any other kwargs. #8028 by Alexander Booth. model_selection.GridSearchCV
,model_selection.RandomizedSearchCV
andmodel_selection.cross_val_score
now allow estimators with callable kernels which were previously prohibited. #8005 by Andreas Müller .model_selection.cross_val_predict
now returns output of the correct shape for all values of the argumentmethod
. #7863 by Aman Dalmia.- Added
shuffle
andrandom_state
parameters to shuffle training data before taking prefixes of it based on training sizes inmodel_selection.learning_curve
. #7506 by Narine Kokhlikyan. model_selection.StratifiedShuffleSplit
now works with multioutput multiclass (or multilabel) data. #9044 by Vlad Niculae.- Speed improvements to
model_selection.StratifiedShuffleSplit
. #5991 by Arthur Mensch and Joel Nothman. - Add
shuffle
parameter tomodel_selection.train_test_split
. #8845 by themrmax multioutput.MultiOutputRegressor
andmultioutput.MultiOutputClassifier
now support online learning usingpartial_fit
. :issue: 8053 by Peng Yu.- Add
max_train_size
parameter tomodel_selection.TimeSeriesSplit
#8282 by Aman Dalmia. - More clustering metrics are now available through
metrics.get_scorer
andscoring
parameters. #8117 by Raghav RV. - A scorer based on
metrics.explained_variance_score
is also available. #9259 by Hanmin Qin.
Metrics
metrics.matthews_corrcoef
now support multiclass classification. #8094 by Jon Crall.- Add
sample_weight
parameter tometrics.cohen_kappa_score
. #8335 by Victor Poughon.
Miscellaneous
utils.check_estimator
now attempts to ensure that methods transform, predict, etc. do not set attributes on the estimator. #7533 by Ekaterina Krivich.- Added type checking to the
accept_sparse
parameter inutils.validation
methods. This parameter now accepts only boolean, string, or list/tuple of strings.accept_sparse=None
is deprecated and should be replaced byaccept_sparse=False
. #7880 by Josh Karnofsky. - Make it possible to load a chunk of an svmlight formatted file by
passing a range of bytes to
datasets.load_svmlight_file
. #935 by Olivier Grisel. dummy.DummyClassifier
anddummy.DummyRegressor
now accept non-finite features. #8931 by @Attractadore.
Bug fixes¶
Trees and ensembles
- Fixed a memory leak in trees when using trees with
criterion='mae'
. #8002 by Raghav RV. - Fixed a bug where
ensemble.IsolationForest
uses an an incorrect formula for the average path length #8549 by Peter Wang. - Fixed a bug where
ensemble.AdaBoostClassifier
throwsZeroDivisionError
while fitting data with single class labels. #7501 by Dominik Krzeminski. - Fixed a bug in
ensemble.GradientBoostingClassifier
andensemble.GradientBoostingRegressor
where a float being compared to0.0
using==
caused a divide by zero error. #7970 by He Chen. - Fix a bug where
ensemble.GradientBoostingClassifier
andensemble.GradientBoostingRegressor
ignored themin_impurity_split
parameter. #8006 by Sebastian Pölsterl. - Fixed
oob_score
inensemble.BaggingClassifier
. #8936 by Michael Lewis - Fixed excessive memory usage in prediction for random forests estimators. #8672 by Mike Benfield.
- Fixed a bug where
sample_weight
as a list broke random forests in Python 2 #8068 by @xor. - Fixed a bug where
ensemble.IsolationForest
fails whenmax_features
is less than 1. #5732 by Ishank Gulati. - Fix a bug where gradient boosting with
loss='quantile'
computed negative errors for negative values ofytrue - ypred
leading to wrong values when calling__call__
. #8087 by Alexis Mignon - Fix a bug where
ensemble.VotingClassifier
raises an error when a numpy array is passed in for weights. #7983 by Vincent Pham. - Fixed a bug where
tree.export_graphviz
raised an error when the length of features_names does not match n_features in the decision tree. #8512 by Li Li.
Linear, kernelized and related models
- Fixed a bug where
linear_model.RANSACRegressor.fit
may run untilmax_iter
if it finds a large inlier group early. #8251 by @aivision2020. - Fixed a bug where
naive_bayes.MultinomialNB
andnaive_bayes.BernoulliNB
failed whenalpha=0
. #5814 by Yichuan Liu and Herilalaina Rakotoarison. - Fixed a bug where
linear_model.LassoLars
does not give the same result as the LassoLars implementation available in R (lars library). #7849 by Jair Montoya Martinez. - Fixed a bug in
linear_model.RandomizedLasso
,linear_model.Lars
,linear_model.LassoLars
,linear_model.LarsCV
andlinear_model.LassoLarsCV
, where the parameterprecompute
was not used consistently across classes, and some values proposed in the docstring could raise errors. #5359 by Tom Dupre la Tour. - Fix inconsistent results between
linear_model.RidgeCV
andlinear_model.Ridge
when usingnormalize=True
. #9302 by Alexandre Gramfort. - Fix a bug where
linear_model.LassoLars.fit
sometimes leftcoef_
as a list, rather than an ndarray. #8160 by CJ Carey. - Fix
linear_model.BayesianRidge.fit
to return ridge parameteralpha_
andlambda_
consistent with calculated coefficientscoef_
andintercept_
. #8224 by Peter Gedeck. - Fixed a bug in
svm.OneClassSVM
where it returned floats instead of integer classes. #8676 by Vathsala Achar. - Fix AIC/BIC criterion computation in
linear_model.LassoLarsIC
. #9022 by Alexandre Gramfort and Mehmet Basbug. - Fixed a memory leak in our LibLinear implementation. #9024 by Sergei Lebedev
- Fix bug where stratified CV splitters did not work with
linear_model.LassoCV
. #8973 by Paulo Haddad. - Fixed a bug in
gaussian_process.GaussianProcessRegressor
when the standard deviation and covariance predicted without fit would fail with a unmeaningful error by default. #6573 by Quazi Marufur Rahman and Manoj Kumar.
Other predictors
- Fix
semi_supervised.BaseLabelPropagation
to correctly implementLabelPropagation
andLabelSpreading
as done in the referenced papers. #9239 by Andre Ambrosio Boechat, Utkarsh Upadhyay, and Joel Nothman.
Decomposition, manifold learning and clustering
- Fixed the implementation of
manifold.TSNE
: early_exageration
parameter had no effect and is now used for the first 250 optimization iterations.- Fixed the
AssertionError: Tree consistency failed
exception reported in #8992. - Improve the learning schedule to match the one from the reference implementation lvdmaaten/bhtsne. by Thomas Moreau and Olivier Grisel.
- Fix a bug in
decomposition.LatentDirichletAllocation
where theperplexity
method was returning incorrect results because thetransform
method returns normalized document topic distributions as of version 0.18. #7954 by Gary Foreman. - Fix output shape and bugs with n_jobs > 1 in
decomposition.SparseCoder
transform anddecomposition.sparse_encode
for one-dimensional data and one component. This also impacts the output shape ofdecomposition.DictionaryLearning
. #8086 by Andreas Müller. - Fixed the implementation of
explained_variance_
indecomposition.PCA
,decomposition.RandomizedPCA
anddecomposition.IncrementalPCA
. #9105 by Hanmin Qin. - Fixed the implementation of
noise_variance_
indecomposition.PCA
. #9108 by Hanmin Qin. - Fixed a bug where
cluster.DBSCAN
gives incorrect result when input is a precomputed sparse matrix with initial rows all zero. #8306 by Akshay Gupta - Fix a bug regarding fitting
cluster.KMeans
with a sparse array X and initial centroids, where X’s means were unnecessarily being subtracted from the centroids. #7872 by Josh Karnofsky. - Fixes to the input validation in
covariance.EllipticEnvelope
. #8086 by Andreas Müller. - Fixed a bug in
covariance.MinCovDet
where inputting data that produced a singular covariance matrix would cause the helper method_c_step
to throw an exception. #3367 by Jeremy Steward - Fixed a bug in
manifold.TSNE
affecting convergence of the gradient descent. #8768 by David DeTomaso. - Fixed a bug in
manifold.TSNE
where it stored the incorrectkl_divergence_
. #6507 by Sebastian Saeger. - Fixed improper scaling in
cross_decomposition.PLSRegression
withscale=True
. #7819 by jayzed82. cluster.bicluster.SpectralCoclustering
andcluster.bicluster.SpectralBiclustering
fit
method conforms with API by acceptingy
and returning the object. #6126, #7814 by Laurent Direr and Maniteja Nandana.- Fix bug where
mixture
sample
methods did not return as many samples as requested. #7702 by Levi John Wolf. - Fixed the shrinkage implementation in
neighbors.NearestCentroid
. #9219 by Hanmin Qin.
Preprocessing and feature selection
- For sparse matrices,
preprocessing.normalize
withreturn_norm=True
will now raise aNotImplementedError
with ‘l1’ or ‘l2’ norm and with norm ‘max’ the norms returned will be the same as for dense matrices. #7771 by Ang Lu. - Fix a bug where
feature_selection.SelectFdr
did not exactly implement Benjamini-Hochberg procedure. It formerly may have selected fewer features than it should. #7490 by Peng Meng. - Fixed a bug where
linear_model.RandomizedLasso
andlinear_model.RandomizedLogisticRegression
breaks for sparse input. #8259 by Aman Dalmia. - Fix a bug where
feature_extraction.FeatureHasher
mandatorily applied a sparse random projection to the hashed features, preventing the use offeature_extraction.text.HashingVectorizer
in a pipeline withfeature_extraction.text.TfidfTransformer
. #7565 by Roman Yurchak. - Fix a bug where
feature_selection.mutual_info_regression
did not correctly usen_neighbors
. #8181 by Guillaume Lemaitre.
Model evaluation and meta-estimators
- Fixed a bug where
model_selection.BaseSearchCV.inverse_transform
returnsself.best_estimator_.transform()
instead ofself.best_estimator_.inverse_transform()
. #8344 by Akshay Gupta and Rasmus Eriksson. - Added
classes_
attribute tomodel_selection.GridSearchCV
,model_selection.RandomizedSearchCV
,grid_search.GridSearchCV
, andgrid_search.RandomizedSearchCV
that matches theclasses_
attribute ofbest_estimator_
. #7661 and #8295 by Alyssa Batula, Dylan Werner-Meier, and Stephen Hoover. - Fixed a bug where
model_selection.validation_curve
reused the same estimator for each parameter value. #7365 by Aleksandr Sandrovskii. model_selection.permutation_test_score
now works with Pandas types. #5697 by Stijn Tonk.- Several fixes to input validation in
multiclass.OutputCodeClassifier
#8086 by Andreas Müller. multiclass.OneVsOneClassifier
’spartial_fit
now ensures all classes are provided up-front. #6250 by Asish Panda.- Fix
multioutput.MultiOutputClassifier.predict_proba
to return a list of 2d arrays, rather than a 3d array. In the case where different target columns had different numbers of classes, aValueError
would be raised on trying to stack matrices with different dimensions. #8093 by Peter Bull. - Cross validation now works with Pandas datatypes that that have a read-only index. #9507 by Loic Esteve.
Metrics
metrics.average_precision_score
no longer linearly interpolates between operating points, and instead weighs precisions by the change in recall since the last operating point, as per the Wikipedia entry. (#7356). By Nick Dingwall and Gael Varoquaux.- Fix a bug in
metrics.classification._check_targets
which would return'binary'
ify_true
andy_pred
were both'binary'
but the union ofy_true
andy_pred
was'multiclass'
. #8377 by Loic Esteve. - Fixed an integer overflow bug in
metrics.confusion_matrix
and hencemetrics.cohen_kappa_score
. #8354, #7929 by Joel Nothman and Jon Crall. - Fixed passing of
gamma
parameter to thechi2
kernel inmetrics.pairwise.pairwise_kernels
#5211 by Nick Rhinehart, Saurabh Bansod and Andreas Müller.
Miscellaneous
- Fixed a bug when
datasets.make_classification
fails when generating more than 30 features. #8159 by Herilalaina Rakotoarison. - Fixed a bug where
datasets.make_moons
gives an incorrect result whenn_samples
is odd. #8198 by Josh Levy. - Some
fetch_
functions indatasets
were ignoring thedownload_if_missing
keyword. #7944 by Ralf Gommers. - Fix estimators to accept a
sample_weight
parameter of typepandas.Series
in theirfit
function. #7825 by Kathleen Chen. - Fix a bug in cases where
numpy.cumsum
may be numerically unstable, raising an exception if instability is identified. #7376 and #7331 by Joel Nothman and @yangarbiter. - Fix a bug where
base.BaseEstimator.__getstate__
obstructed pickling customizations of child-classes, when used in a multiple inheritance context. #8316 by Holger Peters. - Update Sphinx-Gallery from 0.1.4 to 0.1.7 for resolving links in documentation build with Sphinx>1.5 #8010, #7986 by Oscar Najera
- Add
data_home
parameter tosklearn.datasets.fetch_kddcup99
. #9289 by Loic Esteve. - Fix dataset loaders using Python 3 version of makedirs to also work in Python 2. #9284 by Sebastin Santy.
- Several minor issues were fixed with thanks to the alerts of [lgtm.com](http://lgtm.com). #9278 by Jean Helie, among others.
API changes summary¶
Trees and ensembles
- Gradient boosting base models are no longer estimators. By Andreas Müller.
- All tree based estimators now accept a
min_impurity_decrease
parameter in lieu of themin_impurity_split
, which is now deprecated. Themin_impurity_decrease
helps stop splitting the nodes in which the weighted impurity decrease from splitting is no longer at leastmin_impurity_decrease
. #8449 by Raghav RV.
Linear, kernelized and related models
n_iter
parameter is deprecated inlinear_model.SGDClassifier
,linear_model.SGDRegressor
,linear_model.PassiveAggressiveClassifier
,linear_model.PassiveAggressiveRegressor
andlinear_model.Perceptron
. By Tom Dupre la Tour.
Other predictors
neighbors.LSHForest
has been deprecated and will be removed in 0.21 due to poor performance. #9078 by Laurent Direr.neighbors.NearestCentroid
no longer purports to supportmetric='precomputed'
which now raises an error. #8515 by Sergul Aydore.- The
alpha
parameter ofsemi_supervised.LabelPropagation
now has no effect and is deprecated to be removed in 0.21. #9239 by Andre Ambrosio Boechat, Utkarsh Upadhyay, and Joel Nothman.
Decomposition, manifold learning and clustering
- Deprecate the
doc_topic_distr
argument of theperplexity
method indecomposition.LatentDirichletAllocation
because the user no longer has access to the unnormalized document topic distribution needed for the perplexity calculation. #7954 by Gary Foreman. - The
n_topics
parameter ofdecomposition.LatentDirichletAllocation
has been renamed ton_components
and will be removed in version 0.21. #8922 by @Attractadore. decomposition.SparsePCA.transform
’sridge_alpha
parameter is deprecated in preference for class parameter. #8137 by Naoya Kanai.cluster.DBSCAN
now has ametric_params
parameter. #8139 by Naoya Kanai.
Preprocessing and feature selection
feature_selection.SelectFromModel
now has apartial_fit
method only if the underlying estimator does. By Andreas Müller.feature_selection.SelectFromModel
now validates thethreshold
parameter and sets thethreshold_
attribute during the call tofit
, and no longer during the call totransform`
. By Andreas Müller.- The
non_negative
parameter infeature_extraction.FeatureHasher
has been deprecated, and replaced with a more principled alternative,alternate_sign
. #7565 by Roman Yurchak. linear_model.RandomizedLogisticRegression
, andlinear_model.RandomizedLasso
have been deprecated and will be removed in version 0.21. #8995 by Ramana.S.
Model evaluation and meta-estimators
- Deprecate the
fit_params
constructor input to themodel_selection.GridSearchCV
andmodel_selection.RandomizedSearchCV
in favor of passing keyword parameters to thefit
methods of those classes. Data-dependent parameters needed for model training should be passed as keyword arguments tofit
, and conforming to this convention will allow the hyperparameter selection classes to be used with tools such asmodel_selection.cross_val_predict
. #2879 by Stephen Hoover. - In version 0.21, the default behavior of splitters that use the
test_size
andtrain_size
parameter will change, such that specifyingtrain_size
alone will causetest_size
to be the remainder. #7459 by Nelson Liu. multiclass.OneVsRestClassifier
now haspartial_fit
,decision_function
andpredict_proba
methods only when the underlying estimator does. #7812 by Andreas Müller and Mikhail Korobov.multiclass.OneVsRestClassifier
now has apartial_fit
method only if the underlying estimator does. By Andreas Müller.- The
decision_function
output shape for binary classification inmulticlass.OneVsRestClassifier
andmulticlass.OneVsOneClassifier
is now(n_samples,)
to conform to scikit-learn conventions. #9100 by Andreas Müller. - The
multioutput.MultiOutputClassifier.predict_proba
function used to return a 3d array (n_samples
,n_classes
,n_outputs
). In the case where different target columns had different numbers of classes, aValueError
would be raised on trying to stack matrices with different dimensions. This function now returns a list of arrays where the length of the list isn_outputs
, and each array is (n_samples
,n_classes
) for that particular output. #8093 by Peter Bull. - Replace attribute
named_steps
dict
toutils.Bunch
inpipeline.Pipeline
to enable tab completion in interactive environment. In the case conflict value onnamed_steps
anddict
attribute,dict
behavior will be prioritized. #8481 by Herilalaina Rakotoarison.
Miscellaneous
Deprecate the
y
parameter intransform
andinverse_transform
. The method should not accepty
parameter, as it’s used at the prediction time. #8174 by Tahar Zanouda, Alexandre Gramfort and Raghav RV.SciPy >= 0.13.3 and NumPy >= 1.8.2 are now the minimum supported versions for scikit-learn. The following backported functions in
utils
have been removed or deprecated accordingly. #8854 and #8874 by Naoya KanaiThe
store_covariances
andcovariances_
parameters ofdiscriminant_analysis.QuadraticDiscriminantAnalysis
has been renamed tostore_covariance
andcovariance_
to be consistent with the corresponding parameter names of thediscriminant_analysis.LinearDiscriminantAnalysis
. They will be removed in version 0.21. #7998 by JiachengRemoved in 0.19:
utils.fixes.argpartition
utils.fixes.array_equal
utils.fixes.astype
utils.fixes.bincount
utils.fixes.expit
utils.fixes.frombuffer_empty
utils.fixes.in1d
utils.fixes.norm
utils.fixes.rankdata
utils.fixes.safe_copy
Deprecated in 0.19, to be removed in 0.21:
utils.arpack.eigs
utils.arpack.eigsh
utils.arpack.svds
utils.extmath.fast_dot
utils.extmath.logsumexp
utils.extmath.norm
utils.extmath.pinvh
utils.graph.graph_laplacian
utils.random.choice
utils.sparsetools.connected_components
utils.stats.rankdata
Estimators with both methods
decision_function
andpredict_proba
are now required to have a monotonic relation between them. The methodcheck_decision_proba_consistency
has been added in utils.estimator_checks to check their consistency. #7578 by Shubham BhardwajAll checks in
utils.estimator_checks
, in particularutils.estimator_checks.check_estimator
now accept estimator instances. Most other checks do not accept estimator classes any more. #9019 by Andreas Müller.Ensure that estimators’ attributes ending with
_
are not set in the constructor but only in thefit
method. Most notably, ensemble estimators (deriving fromensemble.BaseEnsemble
) now only haveself.estimators_
available afterfit
. #7464 by Lars Buitinck and Loic Esteve.
Code and Documentation Contributors¶
Thanks to everyone who has contributed to the maintenance and improvement of the project since version 0.18, including:
Joel Nothman, Loic Esteve, Andreas Mueller, Guillaume Lemaitre, Olivier Grisel, Hanmin Qin, Raghav RV, Alexandre Gramfort, themrmax, Aman Dalmia, Gael Varoquaux, Naoya Kanai, Tom Dupré la Tour, Rishikesh, Nelson Liu, Taehoon Lee, Nelle Varoquaux, Aashil, Mikhail Korobov, Sebastin Santy, Joan Massich, Roman Yurchak, RAKOTOARISON Herilalaina, Thierry Guillemot, Alexandre Abadie, Carol Willing, Balakumaran Manoharan, Josh Karnofsky, Vlad Niculae, Utkarsh Upadhyay, Dmitry Petrov, Minghui Liu, Srivatsan, Vincent Pham, Albert Thomas, Jake VanderPlas, Attractadore, JC Liu, alexandercbooth, chkoar, Óscar Nájera, Aarshay Jain, Kyle Gilliam, Ramana Subramanyam, CJ Carey, Clement Joudet, David Robles, He Chen, Joris Van den Bossche, Karan Desai, Katie Luangkote, Leland McInnes, Maniteja Nandana, Michele Lacchia, Sergei Lebedev, Shubham Bhardwaj, akshay0724, omtcyfz, rickiepark, waterponey, Vathsala Achar, jbDelafosse, Ralf Gommers, Ekaterina Krivich, Vivek Kumar, Ishank Gulati, Dave Elliott, ldirer, Reiichiro Nakano, Levi John Wolf, Mathieu Blondel, Sid Kapur, Dougal J. Sutherland, midinas, mikebenfield, Sourav Singh, Aseem Bansal, Ibraim Ganiev, Stephen Hoover, AishwaryaRK, Steven C. Howell, Gary Foreman, Neeraj Gangwar, Tahar, Jon Crall, dokato, Kathy Chen, ferria, Thomas Moreau, Charlie Brummitt, Nicolas Goix, Adam Kleczewski, Sam Shleifer, Nikita Singh, Basil Beirouti, Giorgio Patrini, Manoj Kumar, Rafael Possas, James Bourbeau, James A. Bednar, Janine Harper, Jaye, Jean Helie, Jeremy Steward, Artsiom, John Wei, Jonathan LIgo, Jonathan Rahn, seanpwilliams, Arthur Mensch, Josh Levy, Julian Kuhlmann, Julien Aubert, Jörn Hees, Kai, shivamgargsya, Kat Hempstalk, Kaushik Lakshmikanth, Kennedy, Kenneth Lyons, Kenneth Myers, Kevin Yap, Kirill Bobyrev, Konstantin Podshumok, Arthur Imbert, Lee Murray, toastedcornflakes, Lera, Li Li, Arthur Douillard, Mainak Jas, tobycheese, Manraj Singh, Manvendra Singh, Marc Meketon, MarcoFalke, Matthew Brett, Matthias Gilch, Mehul Ahuja, Melanie Goetz, Meng, Peng, Michael Dezube, Michal Baumgartner, vibrantabhi19, Artem Golubin, Milen Paskov, Antonin Carette, Morikko, MrMjauh, NALEPA Emmanuel, Namiya, Antoine Wendlinger, Narine Kokhlikyan, NarineK, Nate Guerin, Angus Williams, Ang Lu, Nicole Vavrova, Nitish Pandey, Okhlopkov Daniil Olegovich, Andy Craze, Om Prakash, Parminder Singh, Patrick Carlson, Patrick Pei, Paul Ganssle, Paulo Haddad, Paweł Lorek, Peng Yu, Pete Bachant, Peter Bull, Peter Csizsek, Peter Wang, Pieter Arthur de Jong, Ping-Yao, Chang, Preston Parry, Puneet Mathur, Quentin Hibon, Andrew Smith, Andrew Jackson, 1kastner, Rameshwar Bhaskaran, Rebecca Bilbro, Remi Rampin, Andrea Esuli, Rob Hall, Robert Bradshaw, Romain Brault, Aman Pratik, Ruifeng Zheng, Russell Smith, Sachin Agarwal, Sailesh Choyal, Samson Tan, Samuël Weber, Sarah Brown, Sebastian Pölsterl, Sebastian Raschka, Sebastian Saeger, Alyssa Batula, Abhyuday Pratap Singh, Sergey Feldman, Sergul Aydore, Sharan Yalburgi, willduan, Siddharth Gupta, Sri Krishna, Almer, Stijn Tonk, Allen Riddell, Theofilos Papapanagiotou, Alison, Alexis Mignon, Tommy Boucher, Tommy Löfstedt, Toshihiro Kamishima, Tyler Folkman, Tyler Lanigan, Alexander Junge, Varun Shenoy, Victor Poughon, Vilhelm von Ehrenheim, Aleksandr Sandrovskii, Alan Yee, Vlasios Vasileiou, Warut Vijitbenjaronk, Yang Zhang, Yaroslav Halchenko, Yichuan Liu, Yuichi Fujikawa, affanv14, aivision2020, xor, andreh7, brady salz, campustrampus, Agamemnon Krasoulis, ditenberg, elena-sharova, filipj8, fukatani, gedeck, guiniol, guoci, hakaa1, hongkahjun, i-am-xhy, jakirkham, jaroslaw-weber, jayzed82, jeroko, jmontoyam, jonathan.striebel, josephsalmon, jschendel, leereeves, martin-hahn, mathurinm, mehak-sachdeva, mlewis1729, mlliou112, mthorrell, ndingwall, nuffe, yangarbiter, plagree, pldtc325, Breno Freitas, Brett Olsen, Brian A. Alfano, Brian Burns, polmauri, Brandon Carter, Charlton Austin, Chayant T15h, Chinmaya Pancholi, Christian Danielsen, Chung Yen, Chyi-Kwei Yau, pravarmahajan, DOHMATOB Elvis, Daniel LeJeune, Daniel Hnyk, Darius Morawiec, David DeTomaso, David Gasquez, David Haberthür, David Heryanto, David Kirkby, David Nicholson, rashchedrin, Deborah Gertrude Digges, Denis Engemann, Devansh D, Dickson, Bob Baxley, Don86, E. Lynch-Klarup, Ed Rogers, Elizabeth Ferriss, Ellen-Co2, Fabian Egli, Fang-Chieh Chou, Bing Tian Dai, Greg Stupp, Grzegorz Szpak, Bertrand Thirion, Hadrien Bertrand, Harizo Rajaona, zxcvbnius, Henry Lin, Holger Peters, Icyblade Dai, Igor Andriushchenko, Ilya, Isaac Laughlin, Iván Vallés, Aurélien Bellet, JPFrancoia, Jacob Schreiber, Asish Mahapatra