When I look at the source of R Packages, i see the function `sweep`

used quite often.
Sometimes it's used when a simpler function would have sufficed (e.g., `apply`

),
other times, it's impossible to know exactly what it's is doing without
spending a fair amount of time to step through the code block it's in.

The fact that I can reproduce `sweep`

's effect using a simpler function suggests that
i don't understand `sweep`

's core use cases, and the fact that this function is used so often suggests that it's quite useful.

The context:

`sweep`

is a function in R's standard library; its arguments are:

```
sweep(x, MARGIN, STATS, FUN="-", check.margin=T, ...)
# x is the data
# STATS refers to the summary statistics which you wish to 'sweep out'
# FUN is the function used to carry out the sweep, "-" is the default
```

As you can see, the arguments are similar to `apply`

though `sweep`

requires
one more parameter, `STATS`

.

Another key difference is that `sweep`

returns an array of the *same shape* as the input array, whereas the result returned by `apply`

depends on the function passed in.

`sweep`

in action:

```
# e.g., use 'sweep' to express a given matrix in terms of distance from
# the respective column mean
# create some data:
M = matrix( 1:12, ncol=3)
# calculate column-wise mean for M
dx = colMeans(M)
# now 'sweep' that summary statistic from M
sweep(M, 2, dx, FUN="-")
[,1] [,2] [,3]
[1,] -1.5 -1.5 -1.5
[2,] -0.5 -0.5 -0.5
[3,] 0.5 0.5 0.5
[4,] 1.5 1.5 1.5
```

So in sum, what i'm looking for is an exemplary use case or two for `sweep`

.

Please, do not recite or link to the R Documentation, mailing lists, or any of the 'primary' R sources--assume I've read them. What I'm interested in is how experienced R programmers/analysts use `sweep`

in their own code.

`apply`

that I can figure out for this result is something like`t(apply(t(M), 2, "-", dx))`

, but that's pretty nasty. – Ken Williams May 4 '11 at 14:32