# Formula for all first and second order predictors including interactions in R

In the statistics programming language R, the following formula (as used in lm() or glm())

``````z ~ (x+y)^2
``````

is equivalent to

``````z ~ x + y + x:y
``````

Assuming, I only have continuous predictors, is there a concise way to obtain

``````z ~ I(x^2) + I(y^2) + I(x) + I(y) + I(x*y)
``````

A formula that does the right thing for factor predictors is a plus.

One possible solution is

``````z ~ (poly(x,2) + poly(y,2))^2
``````

I am looking for something more elegant.

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Is this a real question? –  Richard J. Ross III Sep 7 '10 at 18:00
Richard, can you explain why you think the question is not real? I have tried to clarify my question after your expression of doubt. –  chris Sep 7 '10 at 18:06
Someone has tagged this as homework. I need this for work, not for homework. I have added one solution to make it clear that I am not looking for a quick solution, but an elegant one. –  chris Sep 7 '10 at 18:15
I'm removing the homework tag. It's not clear to my why readers have beat you up. This seems legit and I asked a related question just last week. –  JD Long Sep 7 '10 at 18:20
In your first writing of this question, it was just a statement, with no question asked at all, but you have fixed it, so i will take away my down vote. –  Richard J. Ross III Sep 7 '10 at 18:22

``````z ~ poly(x, y, degree=2)