Cross-validated estimation of the empirical multi-class loss for boosting parameter selection.
cv.mbst(x, y, balance=FALSE, K = 10, cost = NULL,
family = c("hinge","hinge2","thingeDC", "closs", "clossMM"),
learner = c("tree", "ls", "sm"), ctrl = bst_control(),
type = c("loss","error"), plot.it = TRUE, se = TRUE, n.cores=2, ...)object with
empirical risks in each cross-validation at boosting iterations
abscissa values at which CV curve should be computed.
The CV curve at each value of fraction
The standard error of the CV curve
...
a data frame containing the variables in the model.
vector of responses. y must be integers from 1 to C for C class problem.
logical value. If TRUE, The K parts were roughly balanced, ensuring that the classes were distributed proportionally among each of the K parts.
K-fold cross-validation
price to pay for false positive, 0 < cost < 1; price of false negative is 1-cost.
family = "hinge" for hinge loss. "hinge2" is a different hinge loss
a character specifying the component-wise base learner to be used:
ls linear models,
sm smoothing splines,
tree regression trees.
an object of class bst_control.
for family="hinge", type="loss" is hinge risk. For family="thingeDC", type="loss"
a logical value, to plot the estimated risks if TRUE.
a logical value, to plot with standard errors.
The number of CPU cores to use. The cross-validation loop will attempt to send different CV folds off to different cores.
additional arguments.
mbst