If Rubens is correct and you want to use `apply`

instead of `aggregate`

, and you are interested in the same `aggregate`

expression as in your earlier post of today then you can use `tapply`

.

What is the meaning of ~ in aggregate?

```
x=iris[,1:4]
names(x)<-c("x1","x2","x3","x4")
aggregate(x1+x2+x3+x4~x1,FUN=sum,data=x)
tapply((x$x1 + x$x2 + x$x3 + x$x4), x$x1, sum)
```

Edited to add `sapply`

and `lapply`

modified from DWin's answer to give the same answer as `tapply`

and
`aggregate`

immediately above, as well as `rapply`

, `vapply`

and a reformatted `tapply`

and a `by`

function:

```
with(x, sapply(split((x1 + x2 + x3 + x4), x1), sum))
with(x, lapply(split((x1 + x2 + x3 + x4), x1), sum))
with(x, rapply(split((x1 + x2 + x3 + x4), x1), sum))
with(x, tapply( (x1 + x2 + x3 + x4), x1 , sum))
with(x, vapply(split((x1 + x2 + x3 + x4), x1), sum, FUN.VALUE=1))
with(x, by((x1 + x2 + x3 + x4), x1, sum))
```

I have not figured out how to get the same answer with `mapply`

. Well, here is one way, but it is pretty silly:

```
tapply(mapply(sum, x$x1 , x$x2 , x$x3 , x$x4), x$x1, sum)
```

Lastly, here is a way to use `apply`

(inside `tapply`

) to get the same answers as given by the other lines above:

```
tapply(apply((x[,1:4]),1,sum),x$x1,sum)
```

One last thing, if you really do want `aggregate`

to return the same answers as the `apply`

statement in your post, it is possible. However, all you are doing is summing each individual row with your `apply`

statement. Therefore, you will have to 'trick' `aggregate`

into thinking there is a separate group for each row in the Iris data set like so:

```
x=iris[,1:4]
names(x)<-c("x1","x2","x3","x4")
apply.sums <- transform(x,"sum"=apply(x,MARGIN=1,FUN=sum))
my.factor <- seq(1, nrow(x))
ag.sums <- aggregate(x1+x2+x3+x4~my.factor,FUN=sum,data=x)
round(ag.sums[,2],2) == round(apply.sums[,5],2)
```

`apply`

, an alternative is`sum=rowSums(x)`

. – Matthew Plourde Dec 29 '12 at 4:44