repnormmixEM {mixtools}R Documentation

EM Algorithm for Mixtures of Normals with Repeated Measurements

Description

Returns EM algorithm output for mixtures of normals with repeated measurements and arbitrarily many components.

Usage

repnormmixEM(x, lambda = NULL, mu = NULL, sigma = NULL, k = 2, 
             arbmean = TRUE, arbvar = TRUE, epsilon = 1e-08, 
             maxit = 10000, verb = FALSE)

Arguments

x An mxn matrix of data. The columns correspond to the subjects and the rows correspond to the repeated measurements.
lambda Initial value of mixing proportions. Entries should sum to 1. This determines number of components. If NULL, then lambda is random from uniform Dirichlet and number of components is determined by mu.
mu A k-vector of component means. If NULL, then 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.
sigma A vector of standard deviations. If NULL, then 1/sigma^2 has random standard exponential entries according to a binning method done on the data. If lambda, mu, and sigma are NULL, then number of components is determined by k.
k Number of components. Ignored unless all of lambda, mu, and sigma are NULL.
arbmean If TRUE, then the component densities are allowed to have different mus. If FALSE, then a scale mixture will be fit.
arbvar If TRUE, then the component densities are allowed to have different sigmas. If FALSE, then a location mixture will be fit.
epsilon The convergence criterion.
maxit The maximum number of iterations.
verb If TRUE, then various updates are printed during each iteration of the algorithm.

Value

repnormmixEM returns a list of class mixEM with items:

x The raw data.
lambda The final mixing proportions.
mu The final mean parameters.
sigma The final standard deviations. If arbmean = FALSE, then only the smallest standard deviation is returned. See scale below.
scale If arbmean = FALSE, then the scale factor for the component standard deviations is returned. Otherwise, this is omitted from the output.
loglik The final log-likelihood.
posterior An nxk matrix of posterior probabilities for observations.
all.loglik A vector of each iteration's log-likelihood.
restarts The number of times the algorithm restarted due to unacceptable choice of initial values.
ft A character vector giving the name of the function.

References

Hettmansperger, T. P. and Thomas, H. (2000) Almost Nonparametric Inference for Repeated Measures in Mixture Models, Journal of the Royals Statistical Society, Series B 62(4) 811–825.

See Also

normalmixEM

Examples

## EM output for the water-level task data set.

data(Waterdata)
water<-t(as.matrix(Waterdata))
em.out<-repnormmixEM(water, k = 2, verb = TRUE, epsilon = 1e-03)
em.out

[Package mixtools version 0.3.3 Index]