# Variable order in interaction terms

I'm trying to fit a number of linear models as shown below. It is important that all interaction terms are sorted lexicographically. Note that the second model is missing the main effect for x.

``````x = rnorm(100)
y = rnorm(100)
z = x + y + rnorm(100)
m1 = glm(z ~ x + y + x:y)
m2 = glm(z ~ y + x:y)
``````

The models don't behave as expected with respect to the interaction terms:

``````m1:
x:y          -0.1565     0.1151  -1.360   0.1770

m2:
y:x          -0.2776     0.1416  -1.961   0.0528 .
``````

I understand that there may be a way to use the interaction() function with the lex.order argument but I can't figure out how or, indeed, whether this is the best way to go. Advice?

• If you tell R to fit a model including `x:y`, only the interaction will be included. Use `x*y` if you want to add the main effects as well Mar 26, 2016 at 14:13
• See my comment above: the main effect is missing on purpose. I have two similar models, one without main effect, and I need to be able to have the interaction terms in the same order. This is not a mistake. Mar 26, 2016 at 14:27
• It doesn't make any difference, regressing on `y:x` or `x:y` is the same as the variable `y:x` is just the (element-wise) product of `x` and `y` Mar 26, 2016 at 14:51
• You will need to change the order of your predictors, as model.frame arranges them in the order it meets them. So `m2 = glm(z ~ x:y + y)` Mar 26, 2016 at 15:22
• But the coefficients fitted will always be the same.. Mar 26, 2016 at 15:47