Release Highlights for scikit-learn 0.23#
We are pleased to announce the release of scikit-learn 0.23! Many bug fixes and improvements were added, as well as some new key features. We detail below a few of the major features of this release. For an exhaustive list of all the changes, please refer to the release notes.
To install the latest version (with pip):
pip install --upgrade scikit-learn
or with conda:
conda install -c conda-forge scikit-learn
Generalized Linear Models, and Poisson loss for gradient boosting#
Long-awaited Generalized Linear Models with non-normal loss functions are now
available. In particular, three new regressors were implemented:
PoissonRegressor
,
GammaRegressor
, and
TweedieRegressor
. The Poisson regressor can be
used to model positive integer counts, or relative frequencies. Read more in
the User Guide. Additionally,
HistGradientBoostingRegressor
supports a new
‘poisson’ loss as well.
import numpy as np
from sklearn.model_selection import train_test_split
from sklearn.linear_model import PoissonRegressor
from sklearn.ensemble import HistGradientBoostingRegressor
n_samples, n_features = 1000, 20
rng = np.random.RandomState(0)
X = rng.randn(n_samples, n_features)
# positive integer target correlated with X[:, 5] with many zeros:
y = rng.poisson(lam=np.exp(X[:, 5]) / 2)
X_train, X_test, y_train, y_test = train_test_split(X, y, random_state=rng)
glm = PoissonRegressor()
gbdt = HistGradientBoostingRegressor(loss="poisson", learning_rate=0.01)
glm.fit(X_train, y_train)
gbdt.fit(X_train, y_train)
print(glm.score(X_test, y_test))
print(gbdt.score(X_test, y_test))
0.3577618906572577
0.42425183539869404
Rich visual representation of estimators#
Estimators can now be visualized in notebooks by enabling the
display='diagram'
option. This is particularly useful to summarise the
structure of pipelines and other composite estimators, with interactivity to
provide detail. Click on the example image below to expand Pipeline
elements. See Visualizing Composite Estimators for how you can use
this feature.
from sklearn import set_config
from sklearn.pipeline import make_pipeline
from sklearn.preprocessing import OneHotEncoder, StandardScaler
from sklearn.impute import SimpleImputer
from sklearn.compose import make_column_transformer
from sklearn.linear_model import LogisticRegression
set_config(display="diagram")
num_proc = make_pipeline(SimpleImputer(strategy="median"), StandardScaler())
cat_proc = make_pipeline(
SimpleImputer(strategy="constant", fill_value="missing"),
OneHotEncoder(handle_unknown="ignore"),
)
preprocessor = make_column_transformer(
(num_proc, ("feat1", "feat3")), (cat_proc, ("feat0", "feat2"))
)
clf = make_pipeline(preprocessor, LogisticRegression())
clf
Scalability and stability improvements to KMeans#
The KMeans
estimator was entirely re-worked, and it
is now significantly faster and more stable. In addition, the Elkan algorithm
is now compatible with sparse matrices. The estimator uses OpenMP based
parallelism instead of relying on joblib, so the n_jobs
parameter has no
effect anymore. For more details on how to control the number of threads,
please refer to our Parallelism notes.
import scipy
import numpy as np
from sklearn.model_selection import train_test_split
from sklearn.cluster import KMeans
from sklearn.datasets import make_blobs
from sklearn.metrics import completeness_score
rng = np.random.RandomState(0)
X, y = make_blobs(random_state=rng)
X = scipy.sparse.csr_matrix(X)
X_train, X_test, _, y_test = train_test_split(X, y, random_state=rng)
kmeans = KMeans(n_init="auto").fit(X_train)
print(completeness_score(kmeans.predict(X_test), y_test))
0.7462070982205808
Improvements to the histogram-based Gradient Boosting estimators#
Various improvements were made to
HistGradientBoostingClassifier
and
HistGradientBoostingRegressor
. On top of the
Poisson loss mentioned above, these estimators now support sample
weights. Also, an automatic early-stopping criterion was added:
early-stopping is enabled by default when the number of samples exceeds 10k.
Finally, users can now define monotonic constraints to constrain the predictions based on the variations of
specific features. In the following example, we construct a target that is
generally positively correlated with the first feature, with some noise.
Applying monotoinc constraints allows the prediction to capture the global
effect of the first feature, instead of fitting the noise. For a usecase
example, see Features in Histogram Gradient Boosting Trees.
import numpy as np
from matplotlib import pyplot as plt
from sklearn.model_selection import train_test_split
# from sklearn.inspection import plot_partial_dependence
from sklearn.inspection import PartialDependenceDisplay
from sklearn.ensemble import HistGradientBoostingRegressor
n_samples = 500
rng = np.random.RandomState(0)
X = rng.randn(n_samples, 2)
noise = rng.normal(loc=0.0, scale=0.01, size=n_samples)
y = 5 * X[:, 0] + np.sin(10 * np.pi * X[:, 0]) - noise
gbdt_no_cst = HistGradientBoostingRegressor().fit(X, y)
gbdt_cst = HistGradientBoostingRegressor(monotonic_cst=[1, 0]).fit(X, y)
# plot_partial_dependence has been removed in version 1.2. From 1.2, use
# PartialDependenceDisplay instead.
# disp = plot_partial_dependence(
disp = PartialDependenceDisplay.from_estimator(
gbdt_no_cst,
X,
features=[0],
feature_names=["feature 0"],
line_kw={"linewidth": 4, "label": "unconstrained", "color": "tab:blue"},
)
# plot_partial_dependence(
PartialDependenceDisplay.from_estimator(
gbdt_cst,
X,
features=[0],
line_kw={"linewidth": 4, "label": "constrained", "color": "tab:orange"},
ax=disp.axes_,
)
disp.axes_[0, 0].plot(
X[:, 0], y, "o", alpha=0.5, zorder=-1, label="samples", color="tab:green"
)
disp.axes_[0, 0].set_ylim(-3, 3)
disp.axes_[0, 0].set_xlim(-1, 1)
plt.legend()
plt.show()
Sample-weight support for Lasso and ElasticNet#
The two linear regressors Lasso
and
ElasticNet
now support sample weights.
from sklearn.model_selection import train_test_split
from sklearn.datasets import make_regression
from sklearn.linear_model import Lasso
import numpy as np
n_samples, n_features = 1000, 20
rng = np.random.RandomState(0)
X, y = make_regression(n_samples, n_features, random_state=rng)
sample_weight = rng.rand(n_samples)
X_train, X_test, y_train, y_test, sw_train, sw_test = train_test_split(
X, y, sample_weight, random_state=rng
)
reg = Lasso()
reg.fit(X_train, y_train, sample_weight=sw_train)
print(reg.score(X_test, y_test, sw_test))
0.999791942438998
Total running time of the script: (0 minutes 0.556 seconds)
Related examples
Release Highlights for scikit-learn 1.4
Release Highlights for scikit-learn 0.24
Release Highlights for scikit-learn 1.1