I have a data.frame in R; it's called p. Each element in the data.frame is either True or False. My variable p has, say, m rows and n columns. For every row there is strictly only one TRUE element.

It also has column names, which are strings. What I would like to do is the following:

  1. For every row in p I see a TRUE I would like to replace with the name of the corresponding column
  2. I would then like to collapse the data.frame, which now contains FALSEs and column names, to a single vector, which will have m elements.
  3. I would like to do this in an R-thonic manner, so as to continue my enlightenment in R and contribute to a world without for-loops.

I can do step 1 using the following for loop:

for (i in seq(length(colnames(p)))) {

but theres's no beauty here and I have totally subscribed to this for-loops-in-R-are-probably-wrong mentality. Maybe wrong is too strong but they're certainly not great.

I don't really know how to do step 2. I kind of hoped that the sum of a string and FALSE would return the string but it doesn't. I kind of hoped I could use an OR operator of some kind but can't quite figure that out (Python responds to False or 'bob' with 'bob'). Hence, yet again, I appeal to you beautiful Rstats people for help!


Here's some sample data:

df <- data.frame(a=c(FALSE, TRUE, FALSE), b=c(TRUE, FALSE, FALSE), c=c(FALSE, FALSE, TRUE))

You can use apply to do something like this:

names(df)[apply(df, 1, which)]

Or without apply by using which directly:

idx <- which(as.matrix(df), arr.ind=T)
  • I'm getting old. You beat me by five minutes ;-) – Dirk Eddelbuettel Apr 21 '10 at 16:40
  • see comment under Dirk's solution! The second approach doesn't give the same response as the first.. – Mike Dewar Apr 21 '10 at 17:19
  • I corrected that. – Shane Apr 21 '10 at 17:25

Use apply to sweep your index through, and use that index to access the column names:

> df <- data.frame(a=c(TRUE,FALSE,FALSE),b=c(FALSE,FALSE,TRUE),
+                  c=c(FALSE,TRUE,FALSE))
> df
      a     b     c
> colnames(df)[apply(df, 1, which)]
[1] "a" "c" "b"
  • Wow. Yet again we came up with roughly the exact same solution at the same time independently. Even the data! – Shane Apr 21 '10 at 16:40
  • You win by five minutes, but I get a higher technical score for using TRUE/FALSE instead of the very naughty and discouraged T/F :) – Dirk Eddelbuettel Apr 21 '10 at 16:51
  • then who should get the green tick? (thanks both, btw) – Mike Dewar Apr 21 '10 at 17:01
  • Clearly, I should get the green tick since I gave two solutions. :) – Shane Apr 21 '10 at 17:05
  • hmm. I think there's something wrong with your second solution though! It doesn't deal with multiple TRUEs in one column, whereas the shared solution deals with this fine. Compare the outputs using df <- data.frame(a=c(FALSE, TRUE, FALSE, TRUE), b=c(TRUE, FALSE, FALSE, FALSE), c=c(FALSE, FALSE, TRUE, FALSE)) - which would you expect to be the appropriate behaviour? – Mike Dewar Apr 21 '10 at 17:12

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.