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.,
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.
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
one more parameter,
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
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.