As signal-dependent tapering functions are quiet irregular, it is hard to
find appropriate smoothing values only by visual inspection of the tapering
function plot. A more formal approach is the numerical optimization of an
objective function.
Optimization can be carried out with 2 or 3 smoothing parameters. As the
smoothing parameters 0 and \(\infty\) are always added, this results
in a mrbsizeR analysis with 4 or 5 smoothing parameters.
Sometimes, not all features of the input object can be extracted using the
smoothing levels proposed by MinLambda. It might then be necessary to
include additional smoothing levels.
plot.minLambda creates a plot of the objective function \(G\)
on a grid. The minimum is indicated with a white point. The minimum values of
the \(\lambda\)'s can be extracted from the output of MinLambda,
see examples.