Install
User Guide
API
Examples
Community
Getting Started
Tutorial
What's new
Glossary
Development
FAQ
Support
Related packages
Roadmap
Governance
About us
GitHub
Other Versions and Download
More
Getting Started
Tutorial
What's new
Glossary
Development
FAQ
Support
Related packages
Roadmap
Governance
About us
GitHub
Other Versions and Download
Toggle Menu
Prev
Up
Next
scikit-learn 1.3.2
Other versions
Please
cite us
if you use the software.
A tutorial on statistical-learning for scientific data processing
A tutorial on statistical-learning for scientific data processing
¶
Statistical learning: the setting and the estimator object in scikit-learn
Datasets
Estimators objects
Supervised learning: predicting an output variable from high-dimensional observations
Nearest neighbor and the curse of dimensionality
Linear model: from regression to sparsity
Support vector machines (SVMs)
Model selection: choosing estimators and their parameters
Score, and cross-validated scores
Cross-validation generators
Grid-search and cross-validated estimators
Unsupervised learning: seeking representations of the data
Clustering: grouping observations together
Decompositions: from a signal to components and loadings
Putting it all together
Pipelining
Face recognition with eigenfaces
Open problem: Stock Market Structure