robustbase (version 0.99-2)

Sn: Robust Location-Free Scale Estimate More Efficient than MAD

Description

Compute the robust scale estimator \(S_n\), an efficient alternative to the MAD.

Usage

Sn(x, constant = 1.1926, finite.corr = missing(constant), na.rm = FALSE)

s_Sn(x, mu.too = FALSE, ...)

Value

Sn() returns a number, the \(S_n\) robust scale estimator, scaled to be consistent for \(\sigma^2\) and i.i.d. Gaussian observations, optionally bias corrected for finite samples.

s_Sn(x, mu.too=TRUE) returns a length-2 vector with location (\(\mu\)) and scale; this is typically only useful for

covOGK(*, sigmamu = s_Sn).

Arguments

x

numeric vector of observations.

constant

number by which the result is multiplied; the default achieves consisteny for normally distributed data.

finite.corr

logical indicating if the finite sample bias correction factor should be applied. Default to TRUE unless constant is specified.

na.rm

logical specifying if missing values (NA) should be removed from x before further computation. If false as by default, and if there are NAs, i.e., if(anyNA(x)), the result will be NA.

mu.too

logical indicating if the median(x) should also be returned for s_Sn().

...

potentially further arguments for s_Sn() passed to Sn().

Author

Original Fortran code: Christophe Croux and Peter Rousseeuw rousse@wins.uia.ac.be.
Port to C and R: Martin Maechler, maechler@R-project.org

Details

............ FIXME ........

References

Rousseeuw, P.J. and Croux, C. (1993) Alternatives to the Median Absolute Deviation, Journal of the American Statistical Association 88, 1273--1283.

See Also

mad for the ‘most robust’ but much less efficient scale estimator; Qn for a similar more efficient but slower alternative; scaleTau2.

Examples

Run this code
x <- c(1:10, 100+1:9)# 9 outliers out of 19
Sn(x)
Sn(x, c=1)# 9
Sn(x[1:18], c=1)# 9
set.seed(153)
x <- sort(c(rnorm(80), rt(20, df = 1)))
s_Sn(x, mu.too=TRUE)

(s <- Sn(c(1:4, 10, Inf, NA), na.rm=TRUE))
stopifnot(is.finite(s), all.equal(3.5527554, s, tol=1e-10))

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