[R] Lmer binomial distribution x HLM Bernoulli distribution
Douglas Bates
bates at stat.wisc.edu
Tue Feb 1 19:50:59 CET 2011
On Tue, Feb 1, 2011 at 10:51 AM, Luana Marotta <lucsmarotta at gmail.com> wrote:
> Dear R-users,
> I'm running a lmer model using the lme4 package. My dependent variable is
> dichotomous and I'm using the "binomial" family. The results
> are slightly different from the HLM results based on a Bernoulli
> distribution. I read that a Bernoulli distribution is an extension of a
> binomial distribution. Is that right? If so, how can I adapt my R model to a
> Bernoulli distribution so that my R results are the same as my HLM results?
Actually it's the other way around. A binomial(n, p) random variable
is the sum of n independent Bernoulli(p) random variables.
Alternatively, you could describe the Bernoulli(p) distribution as a
special case of the binomial, the binomial(1, p) distribution.
It is generally more productive to ask questions regarding lme4 and
lmer on the R-SIG-Mixed-Models at R-project.org mailing list. It would
help if you could make the data and the output of your model fits
available so we can check on different systems.
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