Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I assume that the random effects variances in my mixed effect model will be different for different levels of the fixed factor BTyp.

Here is my model

fm2 <- lme(CA ~ 1 + pF+Tiefe+BTyp+Tiefe:pF+BTyp:pF, data=data2, 
           random = list(~ 1 + pF|Probe))
fm2_Btyphet<-update(fm2, weights=varIdent(form=~1|BTyp))

I managed to incorporate Btyp-specific variances for random effects using lmer function, but this function does not allow to consider variance heterogeneity of the within group error (which is better to consider in my case). My question is how to incorporate "Btyp"-specific variances for random effects using lme function?

Below you can see how it works with lmer function.

CA ~ 1 + pF + Tiefe + BTyp + Tiefe:pF + BTyp:pF + 
     (0 + Pind + pF | Probe) + (0 + Bind + pF | Probe) + (0 + Tind + pF | Probe) 


 Data: data2 

 AIC   BIC logLik deviance REMLdev

   21987 22092 -10975    21979   21951

Random effects:
 Groups   Name Variance Std.Dev. Corr 

 Probe    Pind 158.6058 12.5939         
          pF     2.4289  1.5585  -1.000 

 Probe    Bind 134.6383 11.6034         
          pF     2.7619  1.6619  -1.000 

 Probe    Tind 490.6714 22.1511         
          pF    46.3533  6.8083  -1.000 

 Residual      316.9860 17.8041    

Number of obs: 2530, groups: Probe, 45

Pind,Bind, Tind are indicator variables for different levels of BTyp.

share|improve this question
    
Maybe a nested random effect would be appropriate? random = ~ 1 + pF|BTyp/Probe or random = ~ 1 + pF|Probe/BTyp (there is not much information about the experimental design in your question) –  Roland Jan 28 at 15:23
    
Thank you Roland, this BTyp was not a fixed factor, therefore I guess i cannot use nested random effect –  Olga Fishkis Jan 29 at 14:15

1 Answer 1

This Rpub discusses how to do factor-specific-variances in both lme and lmer:

http://rpubs.com/bbolker/6298

share|improve this answer
1  
From SO's answer help: Provide context for links. Links to external resources are encouraged, but please add context around the link so your fellow users will have some idea what it is and why it’s there. Always quote the most relevant part of an important link, in case the target site is unreachable or goes permanently offline. –  Ben Bolker Jan 28 at 16:19
    
Thank you very much, Erik. It looks great I will try it –  Olga Fishkis Jan 29 at 14:17
    
Erik, I looked through the link you reccomended me. In this example there is just a factor dependent random effects. In my case it must be a random effect for the intercept and for the treatment pF, both of which are supposed to be factor specific (BTyp-specific). I still did not manage to achieve it with lme. –  Olga Fishkis Feb 6 at 11:28

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.