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User Guide
Software Features
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Contributor’s Guide
More
Frequent asked questions
Benchmarks
GitHub
PyPI
Conda
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Section Navigation
1. Linear Model and its Variants
1.1. Linear Regression
1.2. Linear regression with square-root loss
1.3. Robust regression
1.4. Quantile regression and expectile regression
1.5. Linear mixed model
1.6. Non-negative least squares
1.7. Isotonic Regression
2. Generalized Linear Models
2.1. Logistic regressions
2.2. Poisson regression
2.3. Gamma regression
2.4. Multiple response linear regression
2.5. Multinomial logistic regression
2.6. Multiple response non-negativity identity link Poisson model
3. Survival Models
3.1. Aalen’s additive hazards model
3.2. Cox’s proportional hazards model
3.3. Multivariate failure time model
3.4. Competing risk model
4. Fusion Models
4.1. 1D trend filtering
4.2. Piecewise-linear trend filtering with periodic components
4.3. Spatial trend filtering
4.4. DFS-Graph-Trend-Filtering
5. Graphical Models
5.1. Sparse Gaussian Precision Matrix
5.2. Sparse Precision Matrix
5.3. Sparse Ising Model
6. Miscellaneous
6.1. Non-linear feature selection via HSIC-SCOPE
6.2. Portfolio selection
6.3. Correlation inference for compositional data
6.4. Classification on imbalanced labels with focal loss
6.5. Exemplar-based clustering
7. Sparsity Level Selection
7.1. Supported Information Criteria and Cross Validation
Examples Gallery
7.
Sparsity Level Selection
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7.1. Supported Information Criteria and Cross Validation
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