Hi community,
I have a question on how to handle a modeling situation. I have a set of longitudinal data like the one in the table below:
I have some factors (X, M and N) that are evaluated each time in different steps of a process (step 1, step 2 and step 3). I measure an answer Y and then the idea is to identify which factor (and from which step) is more influential on the outcome Y. To make things clearer (if necessary), the situation can be shematized as follows:
This situation (longitudinal data) seems to me be a case for "mixed models", but i do not really know how to translate this case to JMP (I'm not very experienced with mixed models).
I was thinking that my model could be something like:
Y = Xstep1 + Xstep2 + Xstep3 + Xstep1*Xstep2 + Xstep1*Xstep3 + ....
I'm adding the interactions between defferent steps on the process because recently I saw a presentation that doing this you can consider also the impact of process history. What do you think ? is the correct way to model the situation according to my objective (identify which factor and from which step is more influential on my answer Y) ?
Also, as a second question: According to what I've seen, in mixed models you have fixed and random effects, but I'm not seeing very clearly that part in the model I'm proposing above.
Thank you for any help.
Julian