Apologies if this is a daft question... but I'm struggling.

I am using lme4 to test whether manipulating a colour ornament (two levels: manipulated vs control) affects whether a fight is won or lost between pairs of contesting animals.... I am also interested in an interaction with size (i.e. do larger animals benefit from being manipulated more than smaller animals?).

My model for analysing this with paired data is as follows:

```
fight<-lmer(Win~Treatment*Mass+(1|Pair.number), family=binomial, data=fight)
```

The `Pair.number`

random effect is the numbered pair of the animals (each pair was only used once).

Simple eh?

However, once I find that the interaction is significantly important using LRTs (anova), now I'd like to work out which LEVELS of the interaction are significant, as this has large implications for my study (i.e. are manipulated animals that win fights larger than manipulated animals that lose fights, and the other combinations?).

I'm finding a suitable post-hoc test surprisingly difficult to run due to "Mass" being a covariate: assumedly I need to determine some way of running a comparison between the "Treatment" of winners vs "Treatment" of losers whilst holding "Mass" constant/at its respective mean for each of these categories?

Any help would be hugely appreciated... I'm almost tempted to turn it on its head and run a test with "Mass" as the response variable and "Treatment" and "Win" as factors, using glht to test the different categories, but there must be a nicer (if this is even correct?) way of doing it?

Thanks very much in advance.

Cheers, Rob

`Mass`

rather than`Wins`

as your response variable ... ? – Ben Bolker Oct 2 '12 at 23:41