First, let's recognize that it is not my choice to look at R^2 with non-linear models. But I have to do it.

I have six treatments and four reps in each treatment. I fit a logistic model to each treatment. I need to find the R^2 for each fit to treatment. I can find R^2 for the model over fixed effects (over all treatments), but then I get confused with how lists work in nlme. How can I ask for something specific to the random effect (each treatment)?

Maybe this plot will make things clearer. The code I'll post will give me the R^2 for the blue line, but I want R^2 for the pink lines.

Link to plot of predicted values

Here is the code I have run so far:

```
#Changes in root biomass over four years in 6 different cropping systems
yr<-read.table("totalfallmass2.txt", header=TRUE)
library(nlme)
yrG<-groupedData(mass ~ year | trt, data=yr)
fit.log <- nlsList(mass ~ SSlogis(year, Asym, xmid, scal), data = yrG)
fit.nlme <- nlme(fit.log, random = pdDiag(Asym ~ 1))
plot(augPred(fit.nlme, level = 0:1))
#For an overall R^2
cor(fitted(fit.nlme),getResponse(fit.nlme))^2
```

And here is the data you would need to run it:

`library(fortunes); fortune("nls")`

– Dieter Menne Dec 9 '12 at 18:01