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I have a data.table and I have a separate character vector. The character vector has names of columns in it. I'd like to multiply all the columns in the data.table that are in the vector by -1.

Right now I'm doing it this way...

for (col in 1:length(flipsign)) {

where flipsign is my character vector and subresults is the name of my data.table. Is there a way to do this directly without the for loop?

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Maybe you could provide a small sample of subresults and flipsign? – Frank May 30 '13 at 21:55
up vote 42 down vote accepted

This seems to work:

dt <- data.table(a=1:3,b=1:3,d=1:3)
flipcols <- c("a","b")


The result is

    a  b d
1: -1 -1 1
2: -2 -2 2
3: -3 -3 3

There are a few tricks here:

  • Because there are parentheses in (flipcols) :=, the vector flipcols is assigned to (instead of some new variable named "flipcols").
  • .SDcols tells the call that we're only looking at those columns, and allows us to use .SD, the Subset of the Data associated with those columns.
  • lapply(.SD,...) operates on .SD, which is a list of columns (like all data.frames and data.tables). lapply returns a list, so in the end j looks like cols := list(...).

EDIT: Here's another way that is probably faster, as @Arun mentioned:

for (j in flipcols) set(dt,j=j,value=-dt[[j]])
share|improve this answer
sorry for not providing example but you hit the nail on the head. – Dean MacGregor May 30 '13 at 22:05
another way is to use set with a for-loop. I suspect it'll be faster. – Arun May 30 '13 at 22:33
@Arun I've made an edit. Is that what you meant? I haven't used set before. – Frank May 30 '13 at 23:17
+1 Great answer. Yes I prefer a for loop with set for cases like this, too. – Matt Dowle May 31 '13 at 14:28
Yes, using set() seems faster, ~4 times faster for my dataset! Amazing. – pidosaurus Feb 24 at 12:16

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