# How to include all possible two-way interaction terms in a linear model in R?

Is there an easy way to include all possible two-way interactions in a model in R?

Given this model:

``````lm(a~b+c+d)
``````

What syntax would be used so that the model would include b, c, d, bc, bd, and cd as explanatory variables, were bc is the interaction term of main effects b and c.

• stackoverflow.com/questions/11633403/… Commented Nov 6, 2017 at 19:48
• Note that the duplicate question does not address how to write two-way interactions when there are columns you don't want the response variable to regress on. My answer addresses that case. Commented Nov 6, 2017 at 19:55

You can write the following:

``````lm(a ~ (b + c + d)^2)
``````

This creates all combinations of two-way interactions between `b`, `c`, and `d`

For example:

``````lm(mpg ~ (cyl+disp+hp)^2, data = mtcars)
``````

gives:

``````Call:
lm(formula = mpg ~ (cyl + disp + hp)^2, data = mtcars)

Coefficients:
(Intercept)          cyl         disp           hp     cyl:disp       cyl:hp      disp:hp
5.601e+01   -4.427e+00   -1.184e-01   -1.142e-01    1.439e-02    1.556e-02   -8.567e-05
``````
• Simpler: `lm(a ~ .^2)` Commented Nov 6, 2017 at 19:49
• @tobiasegli_te Not if there are columns you don't want `a` to regress on. Commented Nov 6, 2017 at 19:50
• @tobiasegli_te comment should be an answer by itself. This is because once someone figures out avid_useR answer, next question is how to do it for all the variable. Its easy to remove the variable that we don't need to regress on. That's not a big issue at all Commented Mar 1, 2020 at 14:48
• `lm(a ~ .^2)` works but is slightly dangerous in that it adds all variables other than y to the RHS. I discourage this sort of magic in my students' work. It's easy to end up with stray predictors this way. Check your model!
– bjw
Commented May 21, 2021 at 7:21