I am trying to get the following data into long format in R:

testdata <- data.frame(rnorm(10),rnorm(10),rnorm(10))
rownames(testdata) <- paste0("ID",1:10) # Ids
colnames(testdata) <- c(2001,2002,2003) # Years

So the columns = time, the rows = IDs. Should not be too hard, but in all the examples I found it was the other way around. How can this be done in datatable or reshape or in any other of the popular dataframe packages? Thanks for any hints. I know one way by transposing my data, but this seems to be a rather inefficient way for this purpose.

  • Try with melt melt(as.matrix(testdata)) or with tidyverse rownames_to_column(testdata, 'rn') %>% gather(key, val, -rn) – akrun Aug 10 '18 at 22:45
  • @akrun thanks e.g. melt(as.matrix(testdata)) works. But why do I need to convert into a matrix? Seems also kind of inefficient to me, because then obviously I have to reconvert right away into datatable. But if that's the way to go, I will do it. – Talik3233 Aug 10 '18 at 22:52
  • 1
    Because it will drop the row name as a column. If efficiency is the case, create a column of rownames before doing the melt. i.e. setDT(testdata, keep.rownames = TRUE) and then use melt – akrun Aug 10 '18 at 22:53
  • in base R you could do the same with: data.frame(as.table(as.matrix(testdata))) or even cbind(ID=rownames(testdata),stack(testdata)) – Onyambu Aug 11 '18 at 1:09

Just to turn akrun's comment into a complete answer:

melt(setDT(testdata, keep.rownames = TRUE), "rn")
      rn variable       value
 1:  ID1     2001 -0.25265860
 2:  ID2     2001  0.50538399
 3:  ID3     2001  0.68216394
 4:  ID4     2001  0.62203871
 5:  ID5     2001  0.59297019
 6:  ID6     2001  0.69383842
 7:  ID7     2001  1.77900432
 8:  ID8     2001 -1.69010623
 9:  ID9     2001 -2.17762905
10: ID10     2001  0.61463127
11:  ID1     2002  0.42120060
12:  ID2     2002 -0.16148732
  • thanks, this was fastest in the comments above. I believe what is missing is setting the key of the resulting DT to rn,variable, as that is the usually desired format – Talik3233 Aug 11 '18 at 10:53

@Akron's useful answer:


The "But Why?" part:

You have important information in your rownames, which is not usually a good place to store important information. We need that information when we reshape. The question becomes then, why does melt use that information if we feed in a matrix but not a dataframe?

The reason is that melt is a generic function that dispatches a method (aka a more-specific function) based on the type of data you feed into it. So if m is a matrix and you call melt(m), then R is actually executing melt.matrix(m). Conversely, if df is a dataframe and you call melt(df), then R is actually executing melt.data.frame(df). These two functions -- melt.matrix() and melt.data.frame() -- handle rownames differently; The method melt.matrix uses those rownames the way you want, whereas the method melt.data.frame does not. So, in order to get your desired output, you need to feed a matrix (not a dataframe) into melt.

Just to demonstrate, if we had the ID information stored in a column of our data.frame (as in testdata2 below) instead of as rownames (as in testdata above), then we're good-to-go in terms of feeding in a dataframe to melt:

testdata2 <- data.frame(
    ID       =  1:10,
    year2001 = rnorm(10),
    year2002 = rnorm(10),
    year2003 = rnorm(10) )

reshape2::melt(testdata2, "ID")
reshape2::melt(testdata2, id.vars="ID", measure.vars=2:4) #equivalently, but verbosely
  • Thanks I upvoted your answer. What I dont understand is why rownames are not eligible to store important information. Because if they dont, why do they even exist? – Talik3233 Aug 11 '18 at 10:44
  • R has been continually developed since the 1970's, so the "why does such-and-such exist" is usually a long and detailed story that almost always ends with "we would change it today, but for backward-compatibility reasons, we won't." – Dan Y Aug 11 '18 at 18:08
  • Specifically with regard to rownames, I side with Hadley Wickham who believes that "generally, it is best to avoid row names, because they are basically a character column with different semantics to every other column." However, see this post for an opposing viewpoint. – Dan Y Aug 11 '18 at 18:10
  • thank you, very interesting! – Talik3233 Aug 11 '18 at 21:12

The obvious hack to me seems to be to augment the dataframe's rownames back to a regular column; then you can use whichever of reshape/reshape2/tidyr::gather

> data.frame(ID=rownames(testdata), testdata, row.names=NULL)
     ID      X2001      X2002       X2003
1   ID1  0.6714540  1.1516917  0.51332801
2   ID2 -1.7309721 -1.8018835  1.54385452
3   ID3 -0.4831349 -1.3965915 -0.72819988
4   ID4  1.2591651  1.2436120  1.01472455
5   ID5  1.2346326 -1.4587475 -1.75097483
6   ID6  0.4279562  0.2595588  1.36560258
7   ID7  0.9990642 -1.0306002 -1.10165672
8   ID8  1.2118510 -0.3577358 -0.11696953
9   ID9  0.3074985  0.5177188 -0.09954961
10 ID10 -1.0418608 -1.8419336 -0.65401215

(Note it "fixed" your illegal colnames to 'X2001','X2002'... if you really want to keep them, use ...check.names=FALSE))


you can use tidyr library

cbind(paste0("ID",1:10), gather(testdata, "years", "value"))
  • This throws away the ID variable from rownames, which was the OP's question – smci Aug 11 '18 at 1:03
  • edited, thank you – Nar Aug 11 '18 at 7:26

Your Answer

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

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