Displaying 7 results from an estimated 7 matches for "mixedmodel".
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mixedmodels
2009 Mar 11
3
Mixed models fixed effects
Dear All,
This may sound like a dumb question but I am trying to use a mixed model to
determine the predictors of bat activity along hedges within 8 sites. So my
response is continuous (bat passes) my predictors fixed effects are
continuous (height metres), width (metres) etc and the random effect is
site - can you tell me if the fixed effects can be continuous as all the
examples I have
2006 May 04
0
Online course- Mixed Effects Models
...tistical Software" (forthcoming, CRC Press).
Participants will interact with Dr. Galecki via a private
discussion board; the course will require about 5-15 hours
per week and there are no set hours when you must be
online.
Registration and details at
http://www.statistics.com/content/courses/mixedmodels/index.html
Peter Bruce
courses at statistics.com
2016 Apr 18
1
ZINB multi-level model using MCMCglmm
Hi,
I am Olga Viedma. I am running a Zero-inflated negative binomial (ZINB) multi-level model using MCMCglmm package. I have a doubt. Can I use the "Liab" outputs as fitted data, instead of the predicted values from "predict"? The liab outputs fit very well with the observed data, whereas the predicted values are so bad.
Thanks in advance,
Olga Viedma
D . Olga
2011 Jun 01
1
different results from lme() and lmer()
Hello R-help,
I'm studying an example in the R book.?
The data file is available from the link below.http://www.bio.ic.ac.uk/research/mjcraw/therbook/data/fertilizer.txt
Could you explain Why the results from lme() and lmer() are different in the following case? In other examples, I can get the same results using the two functions, but not here...?
Thank you.Miya
library(lme4)library(nlme)#
2011 Jul 25
1
lme convergence error
Hello, I am working from a linux 64 machine on a server with R-2.12 (I can't
update to 2.13). I am iterating through many linear mixed models for
longitudinal data and I occasionally receive the following convergence
error:
> BI.lme <- lme(cd4 ~ time + genBI + genBI:time + C1 + C2 + C11 + C12,
random =~ 1 + time | IID, data = d)
Error in lme.formula(cd4 ~ time + genBI + genBI:time +
2017 Dec 01
0
How to extract coefficients from sequential (type 1), ANOVAs using lmer and lme
...1. Nested model comparison (likelihood-ratio test) with either the
anova() function or drop1(model,test='Chisq')
2. use the p-values from the ANOVA results
(see Pinheiro and Bates 2000, pp. 90-91, for some notes on which test is
preferred as well as the GLMM FAQ:
https://bbolker.github.io/mixedmodels-misc/glmmFAQ.html)
But please please note that it would be misleading to say that these are
the p-values for the coefficients in your model. These issues are the
same for both mixed and 'normal' regression models.
Phillip
On 30/11/17 16:56, Akihiro Koyama wrote:
> Hi Phillip,
>
&...
2009 Jul 01
2
'singularity' between fixed effect and random factor in mixed model
Hi,
I just came across the following issue regarding mixed effects models:
In a longitudinal study individuals (variable ind) are observed for some
response variable. One explanatory variable, f, entering the model as
fixed effect, is a (2-level) factor. The expression of that factor is
constant for each individual across time (say, the sex of the
individual). ind enters the model as grouping