expectile.laws(formula, data = NULL, smooth = c("schall", "acv", "none"), lambda = 0.1, expectiles = NA, parallel = FALSE)
expectile.restricted(formula, data = NULL, smooth = c("schall", "acv", "none"), lambda = 0.1, expectiles = NA, density = FALSE)
expectile.bundle(formula, data = NULL, smooth = c("schall", "acv", "none"), lambda = 0.1, expectiles = NA, density = FALSE)
expectile.sheets(formula, data = NULL, smooth = c("acv", "none"), lambda = 0.1, lambdap = 5, expectiles = NA, density = FALSE)base.lambda until it converges,
the asymmetric cross-validation 'acv' minimizes a score-function using density.multicore installed the different expectiles
can be calculated simultaneously, if the computer has multiple CPU cores.TRUE, 99 expectiles from 1% to 99% are fitted to allow for a density estimation afterwards.plot method is available.base, expectile.boostdata(dutchboys)
expreg <- expectile.laws(dutchboys[,3] ~ base(dutchboys[,2],"pspline"),smooth="schall",expectiles=c(0.05,0.2,0.8,0.95))
exprest <- expectile.restricted(dutchboys[,3] ~ base(dutchboys[,2],"pspline"),smooth="acv")
expbund <- expectile.bundle(dutchboys[,3] ~ base(dutchboys[,2],"pspline"),smooth="none")Run the code above in your browser using DataLab