cmahal: Generation of tuning constant for Mahalanobis fixed point clusters.
Description
Generates tuning constants ca
for fixmahal dependent on
the number of points and variables of the current fixed point cluster
(FPC).
This is experimental and only thought for use in fixmahal.
Usage
cmahal(n, p, nmin, cmin, nc1, c1 = cmin, q = 1)
Arguments
n
positive integer. Number of points.
p
positive integer. Number of variables.
nmin
integer larger than 1. Smallest number of points for which
ca is computed. For smaller FPC sizes, ca is set to
the value for nmin.
cmin
positive number. Minimum value for ca.
nc1
positive integer. Number of points at which ca=c1.
c1
positive numeric. Tuning constant for cmahal.
Value for ca for FPC size equal to nc1.
q
numeric between 0 and 1. 1 for steepest possible descent of
ca as function of the FPC size. Should presumably always be 1.
Value
A numeric vector of length n, giving the values for ca
for all FPC sizes smaller or equal to n.
Details
Some experiments suggest that the tuning constant ca should
decrease with increasing FPC size and increase with increasing
p in fixmahal. This is to prevent too small
meaningless FPCs while maintaining the significant larger
ones. cmahal with q=1 computes ca in such a way
that as long as ca>cmin, the decrease in n is as steep
as possible in order to maintain the validity of the convergence
theorem in Hennig and Christlieb (2002).
References
Hennig, C. and Christlieb, N. (2002) Validating visual clusters in
large datasets: Fixed point clusters of spectral features,
Computational Statistics and Data Analysis 40, 723-739.