# Difference between “:” and “|” in R linear modeling

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

`:` 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)
ranef(model)
``````

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