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.