Dear all
I am hoping you may share your advice with me on multi-level interactions.
I am interested in the differences across 2 main groups, G1 and G2.
G2 consists of 100 sub-categories.
The questions I seek to address are
1) whether there are differences across G1 and G2 in predicting a (dichotomous) outcome DV
2) whether a (continuous) predictor at the G2-subcategory level alters the differences between G2 and G1 in predicting the DV.
Because G1 is only one group I cannot estimate a standard interaction model (group*predictor) as far as I can tell. To still shed some light on the issue, I manually create the product of G2 * predictor = G2_predictor and, I then run the model:
What concerns me is that this assigns G1 to the same hierarchical level as G2 detail.
Would it make sense to introduce an artificial level such that
Probably not because the G2 dummy is already a fixed part of the model and there are just two groups anyways. But pooling G1 and G2 in Group12identifer doesn't seem correct either.
I am hoping you may share your advice with me on multi-level interactions.
I am interested in the differences across 2 main groups, G1 and G2.
G2 consists of 100 sub-categories.
The questions I seek to address are
1) whether there are differences across G1 and G2 in predicting a (dichotomous) outcome DV
2) whether a (continuous) predictor at the G2-subcategory level alters the differences between G2 and G1 in predicting the DV.
Because G1 is only one group I cannot estimate a standard interaction model (group*predictor) as far as I can tell. To still shed some light on the issue, I manually create the product of G2 * predictor = G2_predictor and, I then run the model:
Code:
logit DV $controls G2 G2_predictor
- Does this make sense?
Code:
melogit DV $controls G2 G2_predictor || Group12identifer
Would it make sense to introduce an artificial level such that
Code:
melogit DV $controls G2 G2_predictor || G2: || Group12identifer
- What would you recommend?