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coefficientalpha (version 0.2.6)
rsem.emmusig: Robust mean and covariance matrix using Huber-type weight
Description
Robust mean and covariance matrix using Huber-type weight.
Usage
rsem.emmusig(xpattern, varphi=.1, max.it=1000, st='i')
Arguments
xpattern
Missing data pattern output from
rsem.pattern
.
varphi
Proportion of data to be down-weighted. Default is 0.1.
max.it
Maximum number of iterations for EM. Default is 1000
st
Starting values for EM algorithm. The default is 0 for mean and I for covariance. Alternative, the starting values can be estimated according to MCD.
Value
err
Error code. 0: good. 1: maximum iterations are exceeded.
mu
Mean vector
sigma
Covariance matrix
weight
weight used in robust mean and covariance estimation.
Details
Estimate mean and covariance matrix using the expectation robust (ER) algorithm.
References
Yuan, K.-H., & Zhang, Z. (2012). Robust Structural Equation Modeling with Missing Data and Auxiliary Variables. Psychometrika, 77(4), 803-826.
See Also
rsem.emmusig