ridgeCV
Syntax
ridgeCV(ds, yColName, xColNames, [alphas], [intercept], [normalize],
[maxIter], [tolerance], [solver], [swColName])
Arguments
The ridgeCV
function inherits all parameters of function ridge, with one added parameter, alphas.
alphas (optional) is a floating-point scalar or vector that represents the coefficient multiplied by the L1 norm penalty term. The default value is [0.01, 0.1, 1.0].
Details
Perform ridge regression using 5-fold cross-validation and return a model corresponding to the optimal parameters.
Return value: A dictionary containing the following keys
-
modelName: the model name, which is "ridgeCV" for this method
-
coefficients: the regression coefficients
-
intercept: the intercept
-
xColNames: the column names of the independent variables in the data source
-
predict: the function used for prediction
-
alpha: the penalty term for cross-validation
Examples
y = [225.720746,-76.195841,63.089878,139.44561,-65.548346,2.037451,22.403987,-0.678415,37.884102,37.308288]
x0 = [2.240893,-0.854096,0.400157,1.454274,-0.977278,-0.205158,0.121675,-0.151357,0.333674,0.410599]
x1 = [0.978738,0.313068,1.764052,0.144044,1.867558,1.494079,0.761038,0.950088,0.443863,-0.103219]
t = table(y, x0, x1);
ridgeCV(t, `y, `x0`x1);
// output
coefficients->[94.3410,14.2523]
predict->coordinateDescentPredict
modelName->ridgeCV
xColNames->[x0,x1]
intercept->0.1063
alpha->0.0100