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I have a data.table DT with a column named RF and many columns with an underline _in it. I want to loop through all those columns with an underline and subtract the RF column from it. However, I'm stuck. It seems that everything on the RHS of the := operator in a data.table does not work with dynamic variables.

Here is my DT and the desired output (hardcoded):

DT <- data.table(RF  = 1:10,
                 S_1 = 11:20,
                 S_2 = 21:30)
#Desired output
DT[ , S_1 := S_1 - RF]
DT[ , S_2 := S_2 - RF]
      RF S_1 S_2
 [1,]  1  10  20
 [2,]  2  10  20
 [3,]  3  10  20

However, I want this to be more flexible, i.e. loop through every column with "_" in its name and subtract RF:

#1. try: Does not work; Interestingly, the i on the LHS of := is interpreted as the column i, but on the RHS of
#:= it is interpreted as 2 and 3, respectively
for (i in grep("_", names(DT))){
  DT[ , i:= i - 1, with=FALSE]
          RF  S_1 S_2
 [1,]  1   1   2
 [2,]  2   1   2
 [3,]  3   1   2

#2. try: Work with parse and eval
for (i in grep("_", names(DT), value=TRUE)){
  DT[ , eval(parse(text=i)):= eval(parse(text=i)) - RF]
#Error in eval(expr, envir, enclos) : object 'S_1' not found

Any hints how to do that would be great.

EDIT: As soon as I posted the question, I thought to myself: Why are you working with the := operator in the first place, and sure enough, I just realized I don't have to. This does work and doesn't need a loop:

DT[, grep("_", names(DT)), with=FALSE] - DT[, RF]

Sorry for that. However, I leave the question open because I'm still interested on why my approach with the := operator doesn't work. So maybe someone can help me there.

share|improve this question
Plus one for finding the basic answer on your own -- AND letting us know about it. :-) – Carl Witthoft Dec 4 '11 at 14:16
Two thoughts: 1) I'd post this as an answer and accept it, and 2) Any benefits / cons to using grep() over grepl()? – Chase Dec 4 '11 at 15:48
@Chase OK, I will do that. However, I can't get the example to work with grepl, neither with with=FALSE nor without it. Thanks to both of you for your help! EDIT: I will accept the answer in two days, apparently I can't do it earlier. – Christoph_J Dec 4 '11 at 17:52
@Chase I use grepl when I just need to slice out a section of the table, and regular grep when I need to use the indices for additional operations. – John Colby Dec 4 '11 at 17:56
+1 for the interesting question and reproducible example, and especially for leaving it up after you found a solution. – Josh O'Brien Dec 5 '11 at 8:27
up vote 9 down vote accepted

You were on the right track with your second attempt. Here is an approach that uses substitute to build the expression that gets passed in as the 'j' argument in DT[ , j ].

for (i in grep("_", names(DT), value=TRUE)){
    e <- substitute(X := X - RF, list(X = as.symbol(i)))
    DT[ , eval(e)]
#     RF S_1 S_2
# [1,]  1  10  20
# [2,]  2  10  20
# [3,]  3  10  20
# [4,]  4  10  20
# [5,]  5  10  20

Or now (1 year later) that with=FALSE applies to the LHS of := ok :

for (i in grep("_", names(DT), value=TRUE))
    DT[, i:=get(i)-RF, with=FALSE]

or with=FALSE can be avoided by making the LHS an expression rather than a symbol :

for (i in grep("_", names(DT), value=TRUE))
    DT[, (i):=get(i)-RF]
share|improve this answer
Thanks @Josh O'Brien, that does exactly what I was looking for (although I think that looping through is a bad idea in the first place, see my edit [obviously, that's a problem of my question, not your answer ;-)]). Anyways, now I will try to wrap my head around substitute, eval, quote, deparse, and so forth...I stumbled across them a couple of times and I think they are quite powerful in making a lot of stuff dynamic (as in your answer), but I still have problems understanding their full beauty...thanks again for showing me the way, though! – Christoph_J Dec 5 '11 at 8:37
You're welcome, @Christoph_J. Also, a couple of thoughts. First I think in this case, looping might be better, because it allows you to take advantage of data.table's modify-by-reference := operator. (I may run some benchmarks later to check this, and will add results to my answer if I do). Second, to explore substitute et al., you might want to put a browser() call in j, like this: for(i in ......) { DT[ , browser()]}. Then you can poke around 'inside of' DT, trying out different things (like quote(i), eval(quote(i), as.symbol(eval(quote(i)), eval(parse(text=i)) etc.) – Josh O'Brien Dec 5 '11 at 8:57
Thanks again, @Josh O'Brien. I was aware of debug(), but never used browser() directly. That's a great hint! – Christoph_J Dec 5 '11 at 9:15
For people how are struggling with parse, eval, etc. as well. Hadley Wickham has a really helpful article on that: Controlling Evaluation. – Christoph_J Dec 5 '11 at 16:32
Also, of course, don't start your investigations in a DT[ ] call, which has it's own well-chosen but still additional layer of scoping rules/behavior! (For info on that, see e.g. items 1.6 and 2.8 vignette("datatable-faq")). – Josh O'Brien Dec 5 '11 at 16:44

A workaround which I unfortunately discovered after I posted the question is as follows:

DT[, grep("_", names(DT)), with=FALSE] - DT[, RF]

This also works in a more complicated setting in which there are additional columns you want to keep, but with some extra effort:

DT <- data.table(RF  = 1:10,
                 S_1 = 11:20,
                 S_2 = 21:30,
                 addCol = rnorm(10)) #Column that should not be subtracted by RF, but still kept in DT

DT <- cbind(DT[, grep("_", names(DT)), with=FALSE] - DT[, RF], addCol = DT[, addCol])
share|improve this answer

Thank you for the question and for answers. I was using a solution with a help of a temporary variable for similar tasks.

varnames <- grep("_", names(DT), value=TRUE)
for (i in varnames) {
  DT[, ".tmp"] <- DT[, i, with = F]
  DT[, i := .tmp - RF, with = F]
  if (i == tail(varnames, 1)) DT[, ".tmp"] <- NULL

The only risk is to overwrite an existing variable .tmp.

Great. set() is powerful.

varnames <- grep("_", names(DT), value=TRUE)
set(DT, j = varnames, value = DT[, varnames, with = F] - DT[, RF])
share|improve this answer
Uhoh. Lines 3 and 5 use [<- and will copy the entire DT. Tasks like this are much easier with the set() function. There doesn't seem to be an answer here using set yet, do you want to have a go? – Matt Dowle Dec 11 '12 at 15:35
Thank you @MatthewDowle for a hint! – djhurio Dec 11 '12 at 17:55
NP. Also DT[[varnames]] is faster and easier, instead of the with=FALSE. – Matt Dowle Dec 11 '12 at 18:29
Oops scratch that, varnames is a vector here isn't it. – Matt Dowle Dec 11 '12 at 18:31
Yes, varnames is a vector. – djhurio Dec 11 '12 at 20:10

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