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. |