Learn R Programming

wle (version 0.9-91)

wle.normal.multi: Robust Estimation in the Normal Multivariate Model

Description

wle.normal.multi is used to robust estimate the location and the covariance matrix via Weighted Likelihood, when the sample is iid from a normal multivariate distribution with unknown means and variance matrix.

Usage

wle.normal.multi(x, boot=30, group, num.sol=1, raf="HD", smooth, tol=10^(-6), equal=10^(-3), max.iter=500, verbose=FALSE)

Arguments

x
a matrix contain the observations.
boot
the number of starting points based on boostrap subsamples to use in the search of the roots.
group
the dimension of the bootstap subsamples. The default value is $max(round(size/4),(var*(var+1)/2+var))$ where $size$ is the number of observations and $var$ is the number of variables.
num.sol
maximum number of roots to be searched.
raf
type of Residual adjustment function to be use:

raf="HD": Hellinger Distance RAF,

raf="NED": Negative Exponential Disparity RAF,

raf="SCHI2": Symmetric Chi-Squared Disparity RAF.

smooth
the value of the smoothing parameter.
tol
the absolute accuracy to be used to achieve convergence of the algorithm.
equal
the absolute value for which two roots are considered the same. (This parameter must be greater than tol).
max.iter
maximum number of iterations.
verbose
if TRUE warnings are printed.

Value

wle.normal.multi returns an object of class "wle.normal.multi".Only print method is implemented for this class.The object returned by wle.normal.multi are:
location
the estimator of the location parameters, one vector for each root found.
variance
the estimator of the covariance matrix, one matrix for each root found.
tot.weights
the sum of the weights divide by the number of observations, one value for each root found.
weights
the weights associated to each observation, one column vector for each root found.
f.density
the non-parametric density estimation.
m.density
the smoothed model.
delta
the Pearson residuals.
freq
the number of starting points converging to the roots.
tot.sol
the number of solutions found.
call
the match.call().
not.conv
the number of starting points that does not converge after the max.iter iteration are reached.

References

Markatou, M., Basu, A. and Lindsay, B.G., (1998) Weighted likelihood estimating equations with a bootstrap root search, Journal of the American Statistical Association, 93, 740-750.

Agostinelli, C., (1998) Inferenza statistica robusta basata sulla funzione di verosimiglianza pesata: alcuni sviluppi, Ph.D Thesis, Department of Statistics, University of Padova.

See Also

wle.smooth an algorithm to choose the smoothing parameter for normal distribution and normal kernel.

Examples

Run this code
library(wle)

data(iris)

smooth <- wle.smooth(dimension=4,costant=4,
                    weight=0.5,interval=c(0.3,0.7))

x.data <- as.matrix(iris[iris[,5]=="virginica",1:4])

result <- wle.normal.multi(x.data,boot=20,group=21,
                           num.sol=3,smooth=smooth$root)

result

result <- wle.normal.multi(x.data,boot=20,group=21,
                           num.sol=1,smooth=smooth$root)

barplot(result$weights,col=2,xlab="Observations",
       ylab="Weights",ylim=c(0,1),
       names.arg=seq(1:length(result$weights)))

Run the code above in your browser using DataLab