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Let's say I'd like to calculate the magnitude of the range over a few columns, on a row-by-row basis.

dat <- data.frame(x=sample(1:1000,1000),

Using data.frame(), I would do something like this:

dat$diff_range <- apply(dat,1,function(x) diff(range(x)))

To put it more simply, I'm looking for this operation, over each row:

diff(range(dat[1,]) # for i 1:nrow(dat)

If I were doing this for the entire table, it would be something like:

dt[,diff_range := apply(dt,1,function(x) diff(range(x)))]

But how would I do it for only named (or numbered) rows?

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The question sounds like all you want to do is subset the data frame or data table, but based on your profile you know how to do that already. What are you actually trying to achieve here? –  JeremyS Jan 22 '14 at 9:26
I think I was under the impression that I could use notation in the apply() expression akin to how columns are refrerenced with data.table. This, does what I expect: dt[,diff_range := apply(dt[,1:2,with=FALSE]... but I thought there was some magic that I could do something like: apply(1:2, ...). I suppose I answered my own question here. –  Brandon Bertelsen Jan 22 '14 at 16:03
Oh yes, you can, but not with data table that way since it changes dt instead of making a copy. I added an answer with the way I use most often %in% –  JeremyS Jan 24 '14 at 0:49

2 Answers 2

How about this:

#    I  V1
#1:  1 971
#2:  2 877
#3:  3 988
#4:  4 241
#5: 15 622
#6: 16 684
#7: 17 971
#8: 18 835

#actually this will be faster

use .I to give you an index to call with the by= parameter, then you can run the function on each row. The second call pre-filters by any list of row numbers, or you can add a key and filter on that if your real table looks different.

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You can do it by subsetting before/during the function. If you only want every second row for example

dat_Diffs <- apply(dat[seq(2,1000,by=2),],1,function(x) diff(range(x)))

Or for rownames 1:10 (since their names weren't specified they are just numbers counting up)

dat_Diffs <- apply(dat[rownames(dat) %in% 1:10,],1,function(x) diff(range(x)))

But why not just calculate per row then subset later?

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