good
part of the data. cov.mve
and
cov.mcd
are compatibility wrappers.cov.rob(x, cor = FALSE, quantile.used = floor((n + p + 1)/2),
method = c("mve", "mcd", "classical"),
nsamp = "best", seed)cov.mve(...)
cov.mcd(...)
good
points.cov.mve
or cov.mcd
forces mve
or mcd
respectively."best"
or "exact"
or
"sample"
.
If "sample"
the number chosen is min(5*p, 3000)
, taken
from Rousseeuw and Hubert (1997). If "best"
exhaustiveRNGkind
. The
current value of .Random.seed
will be preserved if it is set.cov.rob
other than method
.cor = TRUE
) the estimate of the correlation
matrix.quantile.used
."mve"
, an approximate search is made of a subset of
size quantile.used
with an enclosing ellipsoid of smallest volume; in
method "mcd"
it is the volume of the Gaussian confidence
ellipsoid, equivalently the determinant of the classical covariance
matrix, that is minimized. The mean of the subset provides a first
estimate of the location, and the rescaled covariance matrix a first
estimate of scatter. The Mahalanobis distances of all the points from
the location estimate for this covariance matrix are calculated, and
those points within the 97.5% point under Gaussian assumptions are
declared to be good
. The final estimates are the mean and rescaled
covariance of the good
points.The rescaling is by the appropriate percentile under Gaussian data; in addition the first covariance matrix has an ad hoc finite-sample correction given by Marazzi.
For method "mve"
the search is made over ellipsoids determined
by the covariance matrix of p
of the data points. For method
"mcd"
an additional improvement step suggested by Rousseeuw and
van Driessen (1999) is used, in which once a subset of size
quantile.used
is selected, an ellipsoid based on its covariance
is tested (as this will have no larger a determinant, and may be smaller).
A. Marazzi (1993) Algorithms, Routines and S Functions for Robust Statistics. Wadsworth and Brooks/Cole.
P. J. Rousseeuw and B. C. van Zomeren (1990) Unmasking multivariate outliers and leverage points, Journal of the American Statistical Association, 85, 633--639.
P. J. Rousseeuw and K. van Driessen (1999) A fast algorithm for the minimum covariance determinant estimator. Technometrics 41, 212--223.
P. Rousseeuw and M. Hubert (1997) Recent developments in PROGRESS. In L1-Statistical Procedures and Related Topics ed Y. Dodge, IMS Lecture Notes volume 31, pp. 201--214.
lqs
set.seed(123)
cov.rob(stackloss)
cov.rob(stack.x, method = "mcd", nsamp = "exact")
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