heplots (version 1.3-5)

Mahalanobis: Classical and Robust Mahalanobis Distances

Description

This function is a convenience wrapper to mahalanobis offering also the possibility to calculate robust Mahalanobis squared distances using MCD and MVE estimators of center and covariance (from cov.rob)

Usage

Mahalanobis(x, center, cov, method = c("classical", "mcd", "mve"), nsamp = "best", ...)

Arguments

x

a numeric matrix or data frame with, say, \(p\) columns

center

mean vector of the data; if this and cov are both supplied, the function simply calls mahalanobis to calculate the result, ignoring the method argument.

cov

covariance matrix (\(p x p\)) of the data

method

estimation method used for center and covariance, one of: "classical" (product-moment), "mcd" (minimum covariance determinant), or "mve" (minimum volume ellipsoid).

nsamp

passed to cov.rob, just to make this argument explicit

other arguments passed to cov.rob

Value

A numeric vector of squared Mahalanobis distances corresponding to the rows of x.

Details

Any missing data in a row of x causes NA to be returned for that row.

See Also

mahalanobis, cov.rob

Examples

Run this code
# NOT RUN {
summary(Mahalanobis(iris[, 1:4]))
summary(Mahalanobis(iris[, 1:4], method="mve"))
summary(Mahalanobis(iris[, 1:4], method="mcd"))

# }

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