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Regression

All regressors implement IRegressionModel.

📈 Linear​

Class: Linear

HyperparameterValues
LearningRateStep size
FitInterceptInclude bias term

🔷 Ridge Regression (L2)​

Class: Ridge

HyperparameterValues
AlphaRegularization strength
FitInterceptInclude bias term

âœ‚ī¸ Lasso Regression (L1)​

Class: Lasso

HyperparameterValues
AlphaRegularization strength
MaxIterationsConvergence limit

🔗 Elastic Net (L1 + L2)​

Class: ElasticNet

HyperparameterValues
LambdaRegularization strength
L1RatioL1 vs L2 balance

âžĄī¸ Support Vector Regression (Linear)​

Class: LinearSVR

HyperparameterValues
CRegularization strength
EpsilonInsensitive zone
LearningRateStep size
EpochsTraining iterations

đŸŽ¯ Support Vector Regression (Kernel)​

Class: KernelSVR

HyperparameterValues
CRegularization strength
LearningRateStep size
EpochsTraining iterations
KernelRBF, Polynomial
GammaKernel coefficient
DegreePolynomial degree

🧠 Multilayer Perceptron (Regressor)​

Class: MLPRegressor

HyperparameterValues
HiddenLayerse.g. 64, 64,32
LearningRateStep size
EpochsTraining iterations
BatchSizeMini-batch size
L2L2 regularization
ActivationReLU, Tanh, Sigmoid