cov.trob {MASS} | R Documentation |
Estimates a covariance or correlation matrix assuming the data came from a multivariate t distribution: this provides some degree of robustness to outlier without giving a high breakdown point.
cov.trob(x, wt = rep(1, n), cor = FALSE, center = TRUE, nu = 5, maxit = 25, tol = 0.01)
x |
data matrix. Missing values (NAs) are not allowed. |
wt |
A vector of weights for each case: these are treated as if the case i
actually occurred wt[i] times.
|
cor |
Flag to choose between returning the correlation (cor = TRUE ) or
covariance (cor = FALSE ) matrix.
|
center |
a logical value or a numeric vector providing the location about which
the covariance is to be taken. If center = FALSE , no centering
is done; if center = TRUE the MLE of the location vector is used.
|
nu |
“degrees of freedom” for the multivariate t distribution. Must exceed 2 (so that the covariance matrix is finite). |
maxit |
Maximum number of iterations in fitting. |
tol |
Convergence tolerance for fitting. |
A list with the following components
cov |
the fitted covariance matrix. |
center |
the estimated or specified location vector. |
wt |
the specified weights: only returned if the wt argument was given.
|
n.obs |
the number of cases used in the fitting. |
cor |
the fitted correlation matrix: only returned if cor = TRUE .
|
call |
The matched call. |
iter |
The number of iterations used. |
J. T. Kent, D. E. Tyler and Y. Vardi (1994) A curious likelihood identity for the multivariate t-distribution. Communications in Statistics—Simulation and Computation 23, 441–453.
Venables, W. N. and Ripley, B. D. (1999) Modern Applied Statistics with S-PLUS. Third Edition. Springer.
data(stackloss) cov.trob(stackloss)