Epsilon Support Vector Regression

../../../../_images/svm.svg

Some of the docstrings for this module have been automatically extracted from the scikit-learn library and are covered by their respective licenses.

class node_regression.SupportVectorRegression[source]

Support vector machine based regressor (SVR)

Configuration:
  • C

    Penalty parameter C of the error term.

  • kernel

    Specifies the kernel type to be used in the algorithm. It must be one of ‘linear’, ‘poly’, ‘rbf’, ‘sigmoid’, ‘precomputed’ or a callable. If none is given, ‘rbf’ will be used. If a callable is given it is used to precompute the kernel matrix.

  • gamma

    Kernel coefficient for ‘rbf’, ‘poly’ and ‘sigmoid’. If gamma is ‘auto’ then 1/n_features will be used instead.

  • epsilon

    Epsilon in the epsilon-SVR model. It specifies the epsilon-tube within which no penalty is associated in the training loss function with points predicted within a distance epsilon from the actual value.

  • coef0

    Independent term in kernel function. It is only significant in ‘poly’ and ‘sigmoid’.

  • tol

    Tolerance for stopping criterion.

  • degree

    Degree of the polynomial kernel function (‘poly’). Ignored by all other kernels.

  • shrinking

    Whether to use the shrinking heuristic.

  • max_iter

    Hard limit on iterations within solver, or -1 for no limit.

Attributes:
  • support_

    Indices of support vectors.

  • support_vectors_

    Support vectors.

  • dual_coef_

    Coefficients of the support vector in the decision function.

  • intercept_

    Constants in decision function.

  • coef_

    Coefficients of the support vector in the decision function.

Inputs:
Outputs:
model : model

Model