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`

.

`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