I have a study that is designed such that it seems to straddle a within- and between-subject design. I posted about this previously here, but at that stage I was hoping for a simple ANOVA-like solution. I am beginning to think one does not exist and have turned to the multilevel modelling literature instead. If I find a solution here, I will post an answer to the original question as well.
To recap, my study is interested in attitudes toward the homeless and in particular whether ethnicity interacts with homelessness to increase stigma. To study this, participants read vignettes about someone and make ratings related to stigma. My independent variables are whether the character in the vignette has a home or not (homed, homeless) and ethnicity (white, black). In a perfect world, everyone would receive all four resulting conditions (homed-white, homed-black, homeless-white, homeless-black). However, due to time, each participant can receive only two. As such, each participant receives one of the following:
homeless-black / homed-white homeless-white / homed-black (the order of the two vignettes counterbalanced for each but that isn't important here – likewise, due to design constraints, we could use only a single name for each black / white character and wanted to use only 1 vignette for each homed and homeless condition)
This looks like a 2 x 2 repeated measures design in that each participant receives both levels of homelessness and both levels of ethnicity, but it isn't quite because they don't receive all four conditions, only two.
My question is, were we to fit this as a multilevel model, would it be appropriate to use the following random-effects structure (for convenience I use lme4 like notation):
stigma ~ home + ethnicity + home:ethnicity + (home + ethnicity | subject) This would include a random intercept for each participant, as well as random slopes for the main effects, but exclude the random slope for the interaction as we lack sufficient information to explore within-subject variation in that. Am I correct that this the maximal structure permitted by the data?
Open to any other advice, also, or alternate proposals for analytic approaches!