Exploring Friedman's Boosting Algorithm for Regularized Linear Regression


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Documentation for package ‘l2boost’ version 1.0.3

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l2boost-package Efficient implementation of Friedman's boosting algorithm for linear regression using an l2-loss function and coordinate direction (design matrix columns) basis functions.
coef.l2boost Extract model coefficients from an l2boost model object at any point along the solution path indexed by step m. 'coef' is a generic function which extracts model coefficients from objects returned by modeling functions.
cv.l2boost K-fold cross-validation using 'l2boost'.
diabetes Blood and other measurements in diabetics [Hastie and Efron (2012)]
elasticNetSim A blocked correlated data simulation.
error.bars nice standard errors for plots
fitted.l2boost Extract the fitted model estimates along the solution path for an l2boost model.
l2boost Generic gradient descent boosting method for linear regression.
l2boost.default Generic gradient descent boosting method for linear regression.
l2boost.formula Generic gradient descent boosting method for linear regression.
mvnorm.l2boost multivariate normal data simulations.
plot.l2boost Plotting for 'l2boost' objects.
plot.lines plots.lines is used by 'plot.l2boost' to the path lines (each j, against each r-step)
predict.l2boost predict method for l2boost models.
print.l2boost print method for 'l2boost' and 'cv.l2boost' objects.
print.summary.l2boost Unimplemented generic function These are placeholders right now.
residuals.l2boost Model residuals for the training set of an l2boost model object
summary.l2boost Unimplemented generic function These are placeholders right now.
VAR This is a hidden function of the l2boost package. VAR is a helper function that specifically returns NA if all values of the argument x are NA, otherwise, it returns a var object.