wstCV(ndata, ll = 3, type = "soft", filter.number = 10, family =
"DaubLeAsymm", tol = 0.01, verbose = 0, plot.it = FALSE, norm =
l2norm, InverseType = "average", uvdev = madmad)
threshold.wst
function.TRUE
then informative messages are printed during the progression of the function, otherwise they are not.TRUE
then a plot of the progress of optimising the error estimate for different values of the threshold is generated as the algorithm proceeds. The algorithm tries to minimize the error estimate so you should see a ``bowl'' developing. Aft
xvwrWSTt
component.wstCVl
function should be used to compute a level-dependent threshold.packet ordered non-decimated wavelet transform
rather than the standard Mallat wd
discrete wavelet transform. As such it is an examples of the translation-invariant denoising of Coifman and Donoho, 1995 but uses cross-validation to choose the threshold rather than SUREshrink. Note that the procedure outlined above can use AvBasis
basis averaging or basis selection and inversion using the Coifman and Wickerhauser, 1992 best-basis algorithm
GetRSSWST
, linfnorm
, linfnorm
, threshold.wst
, wst
, wst.object
, wstCVl
.