repnormmixEM(x, lambda = NULL, mu = NULL, sigma = NULL, k = 2, arbmean = TRUE, arbvar = TRUE, epsilon = 1e-08, maxit = 10000, verb = FALSE)
lambda
is
random from uniform Dirichlet and number of
components is determined by mu
.mu
is determined by a
normal distribution according to a binning method done on the data. If both
lambda
and mu
are NULL, then number of components is determined by sigma
.lambda
, mu
, and sigma
are NULL, then number of components is determined by k
.lambda
, mu
,
and sigma
are NULL.mu
s. If FALSE, then
a scale mixture will be fit.sigma
s. If FALSE, then
a location mixture will be fit.repnormmixEM
returns a list of class mixEM
with items:
arbmean
= FALSE, then only the smallest standard
deviation is returned. See scale
below.arbmean
= FALSE, then the scale factor for the component standard deviations is returned.
Otherwise, this is omitted from the output.normalmixEM
## EM output for the water-level task data set.
data(Waterdata)
set.seed(100)
water <- t(as.matrix(Waterdata[,3:10]))
em.out <- repnormmixEM(water, k = 2, verb = TRUE, epsilon = 1e-03)
em.out
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