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When constructing a linear model in R, what is the difference between the following two statements:

lm(y ~ x | z)
lm(y ~ x : z)

The lm function documentation documents the : operator as follows:

A specification of the form first:second indicates the set of terms obtained by taking the interactions of all terms in first with all terms in second.

There's no mention of | syntax on that page. What is the difference?

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| is only used in conditional models and anova and hence makes no sense in a lm call. Actually there should be an error thrown. –  Joris Meys Feb 15 '12 at 16:35
Nope, works perfectly fine for numerical data. Doesn't work for factor data, though. I'm using "R version 2.14.1 (2011-12-22)", according to R.Version(). –  eykanal Feb 15 '12 at 16:42
If | doesn't error in lm, I bet it's because it's actually evaluating a logical "or" on the data that is getting coerced back to a numeric. –  John Colby Feb 15 '12 at 17:09
@John - good thinking, and that is likely why it doesn't work for factors, as they're all dummy variables, which can't be coerced the same way. –  eykanal Feb 15 '12 at 18:21
You can find all operators here ?formula. –  Wojciech Sobala Feb 15 '12 at 20:46

1 Answer 1

up vote 7 down vote accepted

: is used for interactions. In your example lm(y ~ x : z), the formula means "y is dependent upon an interaction effect between x and z.

Usually, you wouldn't include an interaction in a linear regression like this unless you also included the individual terms x and z as well. x * z is short for x + x:z + z.

AFAIK, | isn't used by lm at all. It certainly doesn't show up in any of the examples in demo("lm.glm", "stats"). It is used in the mixed effects models in the nlme package.

An example from ?intervals.lme:

model <- lme(distance ~ age, Orthodont, random = ~ age | Subject)

Here the | means "group by". That is, a different random effect for age is fitted for every subject. (Looking at ranef(model), you can see that each row corresponds to the random effects for a person (subject).)

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Nice answer, but can you detail the "a different random effect for age is fitted for every subject", please? It is not very clear to me... Thanks –  sop May 21 at 13:22
Thanks, it is more clear now :) –  sop May 21 at 15:43
Is there a difference between lm(y ~ x + x:z + z + k) and lm(y ~ x*z + k)? –  sop 2 days ago

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