| Interface | Description |
|---|---|
| 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.
|
| RegressionTree.NodeOutput |
An interface to calculate node output.
|
| Class | Description |
|---|---|
| GaussianProcessRegression<T> |
Gaussian Process for Regression.
|
| GaussianProcessRegression.Trainer<T> |
Trainer for Gaussian Process for Regression.
|
| GradientTreeBoost |
Gradient boosting for regression.
|
| GradientTreeBoost.Trainer |
Trainer for GradientTreeBoost regression.
|
| LASSO |
Least absolute shrinkage and selection operator.
|
| LASSO.Trainer |
Trainer for LASSO regression.
|
| OLS |
Ordinary least squares.
|
| OLS.Trainer |
Trainer for linear regression by ordinary least squares.
|
| RandomForest |
Random forest for regression.
|
| RandomForest.Trainer |
Trainer for random forest.
|
| RBFNetwork<T> |
Radial basis function network.
|
| RBFNetwork.Trainer<T> |
Trainer for RBF networks.
|
| RegressionTrainer<T> |
Abstract regression model trainer.
|
| RegressionTree |
Decision tree for regression.
|
| RegressionTree.Trainer |
Trainer for regression tree.
|
| RidgeRegression |
Ridge Regression.
|
| RidgeRegression.Trainer |
Trainer for ridge regression.
|
| SVR<T> |
Support vector regression.
|
| SVR.Trainer<T> |
Trainer for support vector regression.
|
| Enum | Description |
|---|---|
| GradientTreeBoost.Loss |
Regression loss function.
|
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