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I have a data.table containing a number of variables across multiple years, i.e:

> dt <- data.table(id=1:3, A_2011=rnorm(3), A_2012=rnorm(3), 
                           B_2011=rnorm(3), B_2012=rnorm(3), 
                           C_2011=rnorm(3), C_2012=rnorm(3))
> dt
   id     A_2011       A_2012    B_2011     B_2012     C_2011     C_2012
1:  1 -0.8262134  0.832013744 -2.320136  0.1275409 -0.1344309  0.7360329
2:  2  0.9350433  0.279966534 -0.725613  0.2514631  1.0246772 -0.2009985
3:  3  1.1520396 -0.005775964  1.376447 -1.2826486 -0.8941282  0.7513872

I would like to melt this table into variable groups by year, i.e:

> dtLong <- data.table(id=rep(dt[,id], 2), year=c(rep(2011, 3), rep(2012, 3)), 
                       A=c(dt[,A_2011], dt[,A_2012]), 
                       B=c(dt[,B_2011], dt[,B_2012]), 
                       C=c(dt[,C_2011], dt[,C_2012]))
> dtLong
   id year            A          B          C
1:  1 2011 -0.826213405 -2.3201355 -0.1344309
2:  2 2011  0.935043336 -0.7256130  1.0246772
3:  3 2011  1.152039595  1.3764468 -0.8941282
4:  1 2012  0.832013744  0.1275409  0.7360329
5:  2 2012  0.279966534  0.2514631 -0.2009985
6:  3 2012 -0.005775964 -1.2826486  0.7513872

I can easily do this for one set of variables easily using melt.data.frame from the reshape2 package:

> melt(dt[,list(id, A_2011, A_2012)], measure.vars=c("A_2011", "A_2012"))

But haven't been able to achieve this for multiple measure.vars with a common "factor".

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3  
You can also look into merged.stack from my "splitstackshape" package. The usage would be: library(splitstackshape); merged.stack(dt, id.vars="id", var.stubs=c("A", "B", "C"), sep="_") and it has the advantage over reshape of being able to handle unbalanced data. It's already faster than reshape on big datasets, and I'll be updating the function with melt.data.table soon too which should make it even faster. –  Ananda Mahto Feb 11 at 2:30
    
Excellent, I'll give it a try, hopefully it solves my current issue (reshape seems to be messing on the real dataset, but i can't get the issue to replicate on a small scale) –  Scott Ritchie Feb 11 at 2:36
    
It might be best to install the version from Github: github.com/mrdwab/splitstackshape –  Ananda Mahto Feb 11 at 2:37

1 Answer 1

up vote 6 down vote accepted

You can do this easily with reshape from base R

reshape(dt, varying = 2:7, sep = "_", direction = 'long')

This will give you the following output

      id time          A            B            C
1.2011  1 2011 -0.1602428  0.428154271  0.384892382
2.2011  2 2011  1.4493949  0.178833067  2.404267878
3.2011  3 2011 -0.1952697  1.072979813 -0.653812311
1.2012  1 2012  1.7151334  0.007261567  1.521799983
2.2012  2 2012  1.0866426  0.060728118 -1.158503305
3.2012  3 2012  1.0584738 -0.508854175 -0.008505982
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