SK-Learn API Family Portrait
I have been using SK-Learn more recently and will use it frequently in the future. I have sorted out all the contents of Sk-Learn and organized my thoughts. , and available for future reference.
(HD pictures can be opened in a separate window with the right mouse button, or saved locally)
Basic public
base
sklearn.cluster
sklearn.datasets
Loaders
Samples generator
sklearn.exceptions
sklearn.pipeline
sklearn.utils
Methods
sklearn.cluster
classes
Functions
sklearn.cluster.bicluster
sklearn.model_selection
Splitter Classes
Splitter Functions
Hyper-parameter optimizers
Model validation
sklearn.dummy
sklearn.ensemble(Ensemble Methods)
sklearn.feature_extraction
sklearn.feature_selection
sklearn.gaussian_process
sklearn.metrics
Model Selection Interface
Classification metrics
Regression metrics
Multilabel ranking metrics
Clustering metrics
Biclustering metrics
Pairwise metrics
sklearn.multioutput(Multioutput regression and classification)
sklearn.calibration (Probability Calibration)
sklearn.cross_decomposition (Cross decomposition)
sklearn.preprocessing (Preprocessing and Normalization)
Mathematical algorithm
sklearn.covariance
sklearn.decomposition
sklearn.isotonic
sklearn.kernel_approximation
sklearn.kernel_ridge
sklearn.discriminant_analysis
sklearn.linear_model (Generalized Linear Models)
sklearn.manifold
sklearn.mixture( Gaussian Mixture Models )
sklearn.multiclass
sklearn.naive_bayes
sklearn.neighbors
sklearn.semi_supervised
sklearn.svm
sklearn.tree
NN algorithm
sklearn.neural_network
The above is the detailed content of SK-Learn API Family Portrait Introduction. For more information, please follow other related articles on the PHP Chinese website!
Statement:The content of this article is voluntarily contributed by netizens, and the copyright belongs to the original author. This site does not assume corresponding legal responsibility. If you find any content suspected of plagiarism or infringement, please contact admin@php.cn