stableEM(x, K, numEMstart = 5, method = "separate", Sdist = "weibull", cutpoint = NULL,
EMoption = "classification", EMstop = 0.0001, maxiter = 1000, print.likvec = TRUE)
NA
's allowed).separate
no restrictions are imposed, main.g
relates to a group main effect,
main.p
to the variables main effects. main.gp
reflects the proportionality assumption over groups
and variables. int.gp
allows for interactions between groups and variables.weibull
, exponential
, and rayleigh
.classification
is based on deterministic cluster assignment,
maximization
on deterministic assignment, and randomization
provides a posterior-based randomized cluster assignement.TRUE
the likelihood values for different starting solutions are printed.mws
with the following values:
NA structure
phmclust
the best model is chosen, i.e., the model with the largest likelihood value.
The output values refer to this final model.
phmclust
,msBIC
## Exponental mixture model with 2 components for 4 different starting solutions
data(webshop)
res <- stableEM(webshop, K = 2, numEMstart = 4, Sdist = "exponential")
res
summary(res)
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