ltsReg(x, ...)
## S3 method for class 'formula':
ltsReg(formula, data, \dots,
model = TRUE, x.ret = FALSE, y.ret = FALSE)
## S3 method for class 'default':
ltsReg(x, y, intercept = TRUE, alpha = NULL, nsamp = 500,
adjust = FALSE, mcd = TRUE, qr.out = FALSE, yname = NULL,
seed = 0, use.correction=TRUE, control, \dots)
formula
of the form y ~ x1 + x2 + ...
.formula
are to be taken.logical
s indicating if the
model frame, the model matrix and the response are to be returned,
respectively.x
.intercept = TRUE
alpha
must
be a value between 0.5 and 1."best"
or "exact"
. Default is nsamp = 500
. For
nsamp="best"
exhaustive enumeration is done, as long as the
number of trials does not exceeadjust = FALSE
.qr
); defaults to false.yname = NULL
seed = 0
use.correction=TRUE
ltsReg
returns an object of class "lts"
.
The function summary
is used to obtain and print
a summary table of the results.
The generic accessor functions coefficients
,
fitted.values
and residuals
extract various useful features of the value returned by
ltsReg
.
An object of class lts
is a list
containing at
least the following components:intercept=TRUE
), obtained after reweighting.best
is equal to quan
.y
containing the fitted values
of the response after reweighting.y
containing the residuals from
the weighted least squares regression.alpha
.intercept
.intercept=TRUE
).y
containing the raw residuals
from the regression.raw.cnp2
and cnp2
of
length 2 respectively. The finite sample corrections can be suppressed
by setting use.correction=FALSE
. The computations are performed
using the Fast LTS algorithm proposed by Rousseeuw and Van Driessen (1999).
As always, the formula interface has an implied intercept term which can be
removed either by y ~ x - 1
or y ~ 0 + x
. See
formula
for more details.covMcd
;
summary.lts
for summaries.
The generic functions coef
, residuals
,
fitted
.data(heart)
## Default method works with 'x'-matrix and y-var:
heart.x <- data.matrix(heart[, 1:2]) # the X-variables
heart.y <- heart[,"clength"]
ltsReg(heart.x, heart.y)
data(stackloss)
ltsReg(stack.loss ~ ., data = stackloss)
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