spEM | R Documentation |
Returns semiparametric EM algorithm output (Benaglia et al, 2009) for mixtures of multivariate (repeated measures) data where the coordinates of a row (case) in the data matrix are assumed to be independent, conditional on the mixture component (subpopulation) from which they are drawn. For now, this algorithm only implements model (4.7) in Benaglia et al, in which each component and block has exactly the same (nonparametric) shape and they differ only by location and scale.
spEM(x, mu0, blockid = 1:ncol(x), bw = bw.nrd0(as.vector(as.matrix(x))), constbw = TRUE, h = bw, eps = 1e-8, maxiter = 500, stochastic = FALSE, verb = TRUE)
x |
An n x r matrix of data. Each of the n rows is a case, and each case has r repeated measurements. These measurements are assumed to be conditionally independent, conditional on the mixture component (subpopulation) from which the case is drawn. |
mu0 |
Either an m x r matrix specifying the initial centers for the kmeans function, or an integer m specifying the number of initial centers, which are then choosen randomly in kmeans |
blockid |
A vector of length r identifying coordinates
(columns of |
bw |
Bandwidth for density estimation, equal to the standard deviation
of the kernel density. By default, a simplistic application of the
default |
constbw |
Logical: If |
h |
Alternative way to specify the bandwidth, to provide backward compatibility. |
eps |
Tolerance limit for declaring algorithm convergence. Convergence
is declared whenever the maximum change in any coordinate of the
|
maxiter |
The maximum number of iterations allowed, for both
stochastic and non-stochastic versions;
for non-stochastic algorithms ( |
stochastic |
Flag, if FALSE (the default), runs the non-stochastic version
of the npEM algorithm, as in Benaglia et al (2009). Set to TRUE to
run a stochastic version which simulates the posteriors at each
iteration, and runs for |
verb |
If TRUE, print updates for every iteration of the algorithm as it runs |
spEM
returns a list of class spEM
with the following items:
data |
The raw data (an n x r matrix). |
posteriors |
An n x m matrix of posterior probabilities for
observation. If |
bandwidth |
If |
blockid |
Same as the |
lambda |
The sequence of mixing proportions over iterations. |
lambdahat |
The final mixing proportions if |
mu |
The sequence of location parameters over iterations. |
muhat |
The final location parameters if |
sigma |
The sequence of scale parameters over iterations. |
sigmahat |
The final scale parameters if |
loglik |
The sequence of log-likelihoods over iterations. |
Benaglia, T., Chauveau, D., and Hunter, D. R., An EM-like algorithm for semi- and non-parametric estimation in multivariate mixtures, Journal of Computational and Graphical Statistics, 18, 505-526, 2009.
Benaglia, T., Chauveau, D. and Hunter, D.R. Bandwidth Selection in an EM-like algorithm for nonparametric multivariate mixtures. Nonparametric Statistics and Mixture Models: A Festschrift in Honor of Thomas P. Hettmansperger. World Scientific Publishing Co., pages 15-27, 2011.
Bordes, L., Chauveau, D., and Vandekerkhove, P., An EM algorithm for a semiparametric mixture model, Computational Statistics and Data Analysis, 51: 5429-5443, 2007.
plot.spEM
, normmixrm.sim
, spEMsymloc
,
npEM
, plotseq.npEM
## Not run: ## simulate a 2-component gaussian mixture with 3 iid repeated measures set.seed(100) mu <- matrix(c(0, 15), 2, 3) sigma <- matrix(c(1, 5), 2, 3) x <- rmvnormmix(300, lambda = c(.4,.6), mu = mu, sigma = sigma) ## apply spEM with or without an iterative bandwidth selection d <- spEM(x, mu0 = 2, blockid = rep(1,3), constbw = FALSE) d2 <- spEM(x, mu0 = 2, blockid = rep(1,3), constbw = TRUE) plot(d, xlim=c(-10, 40), ylim = c(0, .16), xlab = "", breaks = 30, cex.lab=1.5, cex.axis=1.5, addlegend=FALSE) plot(d2, newplot=FALSE, addlegend=FALSE, lty=2) ## End(Not run)
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