| Interface | Description |
|---|---|
| DataFrameRegression |
Regression trait on DataFrame.
|
| OnlineRegression<T> |
Regression model with online learning capability.
|
| Regression<T> |
Regression analysis includes any techniques for modeling and analyzing
the relationship between a dependent variable and one or more independent
variables.
|
| Class | Description |
|---|---|
| ElasticNet |
Elastic Net regularization.
|
| GaussianProcessRegression |
Gaussian Process for Regression.
|
| GradientTreeBoost |
Gradient boosting for regression.
|
| KernelMachine<T> |
The learning methods building on kernels.
|
| LASSO |
Lasso (least absolute shrinkage and selection operator) regression.
|
| LinearModel |
Linear model.
|
| MLP |
Fully connected multilayer perceptron neural network for regression.
|
| OLS |
Ordinary least squares.
|
| RandomForest |
Random forest for regression.
|
| RBFNetwork<T> |
Radial basis function network.
|
| RegressionTree |
Decision tree for regression.
|
| RidgeRegression |
Ridge Regression.
|
| SVR |
Epsilon support vector regression.
|