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glmm (version 1.4.5)

mcse: Monte Carlo Standard Error

Description

A function that calculates the Monte Carlo standard error for the Monte Carlo maximum likelihood estimates returned from glmm.

Usage

mcse(object)

Value

mcse

The Monte Carlo standard errors for the Monte Carlo maximum likelihood estimates returned from glmm

Arguments

object

An object of class glmm usually created using glmm.

Author

Christina Knudson

Details

With maximum likelihood performed by Monte Carlo likelihood approximation, there are two sources of variability: there is variability from sample to sample and from Monte Carlo sample (of generated random effects) to Monte Carlo sample. The first source of variability (from sample to sample) is measured using standard error, which appears with the point estimates in the summary tables. The second source of variability is due to the Monte Carlo randomness, and this is measured by the Monte Carlo standard error.

A large Monte Carlo standard error indicates the Monte Carlo sample size m is too small.

References

Geyer, C. J. (1994) On the convergence of Monte Carlo maximum likelihood calculations. Journal of the Royal Statistical Society, Series B, 61, 261--274.

Knudson, C. (2016) Monte Carlo likelihood approximation for generalized linear mixed models. PhD thesis, University of Minnesota. http://hdl.handle.net/11299/178948

See Also

glmm for model fitting.

Examples

Run this code
library(glmm)
data(BoothHobert)
set.seed(1234)
mod <- glmm(y~0+x1, list(y~0+z1), varcomps.names=c("z1"), 
data=BoothHobert, family.glmm=bernoulli.glmm, m=100, doPQL=TRUE)
mcse(mod)

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