poisregmixEM {mixtools} | R Documentation |
Returns EM algorithm output for mixtures of Poisson regressions with arbitrarily many components.
poisregmixEM(y, x, lambda = NULL, beta = NULL, k = 2, addintercept = TRUE, epsilon = 1e-08, maxit = 10000, verb = FALSE)
y |
An n-vector of response values. |
x |
An nxp matrix of predictors. See addintercept below. |
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 beta . |
beta |
Initial value of beta parameters. Should be a pxk matrix,
where p is the number of columns of x and k is number of components.
If NULL, then beta is generated by binning the data into k bins and using glm on
the values in each of the bins. If both lambda and beta are NULL, then
number of components is determined by k . |
k |
Number of components. Ignored unless lambda and beta are both NULL. |
addintercept |
If TRUE, a column of ones is appended to the x matrix before the value of p is calculated. |
epsilon |
The convergence criterion. |
maxit |
The maximum number of iterations. |
verb |
If TRUE, then various updates are printed during each iteration of the algorithm. |
poisregmixEM
returns a list of class mixEM
with items:
x |
The predictor values. |
y |
The response values. |
lambda |
The final mixing proportions. |
beta |
The final Poisson regression coefficients. |
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. |
McLachlan, G. J. and Peel, D. (2000) Finite Mixture Models, John Wiley & Sons, Inc.
Wang, P., Puterman, M. L., Cockburn, I. and Le, N. (1996) Mixed Poisson Regression Models with Covariate Dependent Rates, Biometrics, 52(2), 381–400.
## EM output for data generated from a 2-component model. beta<-matrix(c(1, .5, .7, -.8), 2, 2) x<-runif(50, 0, 10) xbeta<-cbind(1, x)%*%beta w<-rbinom(50, 1, .5) y<-w*rpois(50, exp(xbeta[, 1]))+(1-w)*rpois(50, exp(xbeta[, 2])) out<-poisregmixEM(y, x, verb = TRUE, epsilon = 1e-03) out