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
testdata

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 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 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 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 at 1:09
up vote 1 down vote accepted

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

library(data.table)
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 at 10:53

@Akron's useful answer:

reshape2::melt(as.matrix(testdata))

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 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 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 at 18:10
  • thank you, very interesting! – Talik3233 Aug 11 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

library(tidyr)
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 at 1:03
  • edited, thank you – Nar Aug 11 at 7:26

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