[R-sig-ME] Multiple independent random effects
Mark Payne
markpayneatwork at gmail.com
Mon Sep 15 21:00:44 CEST 2014
Thanks for the replies. The quick fix of course is to just convert the
random effects to fixed effects and do the rest with gls() which works in
this situation quite acceptably. But I'm surprised about this - is there a
technical constraint that means that the two can't be combined? Or is it
just a matter of history?
Mark
On 12 September 2014 22:00, Ben Bolker <bbolker at gmail.com> wrote:
> Michael Cone <coanil at ...> writes:
>
> >
> > Mark, I don't think that's possible with lme4/lmer right now.
> >
> > Michael
>
> It's possible, but not easy.
> http://rpubs.com/bbolker/varfac shows how to set up
> formulae/model structures that allow for different RE variances,
> or different residual variances, across different levels of a
> fixed treatment factor.
>
> Basically, you have to set up an observation-level random
> effect and dummy variables for each level of C other than
> the first, then add
>
> (0+cLevel2|obs) + (0+cLevel3|obs) + (0+cLevel4|obs) ...
>
> or equivalently you can use
>
> (0+dummy(C,"level2")|obs) + (0+dummy(C,"level3")|obs) + ...
>
> This is more elegantly doable with the flexLambda development
> branch ...
>
> >
> > Am 12.09.2014 12:12 schrieb Mark Payne:
> > > Hi,
> > >
> > > I have a mixed-effects model in lme4 like so
> > >
> > > mdl <- lmer(T ~1 + (1|A) + (1|B),...)
> > >
> > > where the factors A and B are being modelled as independent random
> > > effects.
> > > However, there is also heteroscedasticity in the problem, where the
> > > variance of T depends on a third grouping factor, lets called it C.
> > >
> > > I can fit such a model in the nlme package, using the
> > > weights=varIdent(form=~1| C) argument, but this package doesn't seem
> > > to
> > > easily support independent random effects of the form shown above...
> > >
> > > How can I get the best of both worlds here?
> > >
> > > Mark
>
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