Aggregate takes all elements on the left side of the `~`

and uses the given function on those values, while they are grouped by the values of the right side.
Thus, your command

```
aggregate(alfa ~ beta, data=x, mean)
```

will return the mean values of `alfa`

grouped by `beta`

. (As you mentioned SQL - this is the same as will happen with the SQL-clause `SELECT beta, avg(alfa) FROM x GROUP BY beta`

)

If you want to output the first value encountered, this basically is another aggregation that you want to do, thus your aggregation function has to return two values:

```
aggregate(alfa ~ beta, data=x, function(x) c(alfa=x[1], gamma=mean(x)))
```

(Again in SQL: `SELECT beta, min(alfa), avg(alfa) FROM x GROUP BY beta`

)

You asked about the `cbind`

. As long as you have only one argument on the left hand side, this does not matter at all. But suppose you have the following situation:

```
x <- data.frame(alfa = 1:9, beta = rep(1:3, 3), gamma = rnorm(9))
```

and would like to compute, say, the mean of both columns `alfa`

and `gamma`

, you could do it like this:

```
aggregate(cbind(alfa, gamma) ~ beta, data=x, function(x) mean(x))
```

That way you just tell the aggregate function to use throw `alfa`

and `gamma`

both at the given function.

For more and exhaustive examples, see `?aggregate`

.

## Edit

You have to be careful not to mix different meanings of `cbind`

. Used a separate function, it concats two vectors (or data.frames) of the same length to a matrix (or data.frame) with both inputs as different columns:

```
> cbind(1:3, 7:9)
[,1] [,2]
[1,] 1 7
[2,] 2 8
[3,] 3 9
```

Used in the formula notation of aggregate `cbind`

does something related but yet different. `cbind(column1, column2)`

just tells aggregate to use the given function on both rows *seperately*. Thus, something like

```
aggregate(cbind(alfa, gamma) ~ beta, data=x, function(x) mean(x[,1]*x[,2]))
```

will *not* work. Rather, the function will be called two times - once with the values of `alfa`

, then with the values of `beta`

.

Hope that clarifies your understanding.