# using data.table to flag the first (or last) record in a group

Given a sortkey, is there a data.table shortcut to duplicate the `first` and `last` functionalities found in SAS and SPSS ?

The pedestrian approach below flags the first record of a group.

Given the elegance of data.table (with which I'm slowly getting familiar), I'm assuming there's a shortcut using a self join & `mult`, but I'm still trying to figure it out.

Here's the example:

``````require(data.table)

set.seed(123)
n <- 17
DT <- data.table(x=sample(letters[1:3],n,replace=T),
y=sample(LETTERS[1:3],n,replace=T))
sortkey  <- c("x","y")
setkeyv(DT,sortkey)
key <- paste(DT\$x,DT\$y,sep="-")
nw <- c( T , key[2:n]!=key[1:(n-1)] )
DT\$first <- 1*nw
DT
``````
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good answers here including a data.table solution: stats.stackexchange.com/questions/7884/… –  Chase May 6 '12 at 22:20
I think the M.Dimo specifically wants to label the first and last in the group rather than extract them. The link you pointed to, as well as the `mult` approach the OP is referring to, show how to extract, not label. –  Prasad Chalasani May 6 '12 at 23:13

For the record, here's a solution using `data.table`:

``````DT <- cbind(DT, first=0L, last=0L)
DT[DT[unique(DT),,mult="first", which=TRUE], first:=1L]
DT[DT[unique(DT),,mult="last", which=TRUE], last:=1L]

#      x y first last
# [1,] a A     1    1
# [2,] a B     1    1
# [3,] a C     1    0
# [4,] a C     0    1
# [5,] b A     1    1
# [6,] b B     1    1
``````

There's obviously a lot packed into each of those lines. The key construct, though, is the following, which returns the row index of the first record in each group:

``````DT[unique(DT),,mult="first", which=TRUE]
# [1]  1  2  3  5  6  7 11 13 15
``````
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Thank you for your answer. I had a sense this was possible using the join & "first" , but couldn't figure out the right syntax. There it is, clearly explained. Thanks again. –  M.Dimo May 7 '12 at 14:46
+1 nice to know about the `which` argument –  Prasad Chalasani May 7 '12 at 15:16
Thanks, both of you. In practice, I'd actually probably use something like @PrasadChalasani's approach. But I thought this was a nice demo of a bunch of `data.table`'s features and hoped some others might find it useful. I'll also be interested to learn (a) if there's a better data.table solution for this, and (b) if there's a better way than `unique(DT)` of extracting all unique key combinations in the `data.table`. –  Josh O'Brien May 7 '12 at 15:50
@Josh a) can't think of one, you're spot on b) no, `unique.data.table` is very fast by not using `paste` under the hood, so can't think of anything better. Another option is to use `list` columns to store the vector results for each group, rather than an atomic column which repeats all the group names over and over. To create such a table use list of list in `j` e.g. `ans=DT[,list(listcol=list(cumprod(v)),by=x]`. The result is then just one row per group. First item of each group's result is then : `ans[,sapply(listcol,"[",1)]`. –  Matt Dowle May 8 '12 at 11:11
And I like @Prasad's approach too. +1. –  Matt Dowle May 8 '12 at 11:14

One easy way is to use the `duplicated()` function. When applied to a data-frame, it produces a vector where an entry is TRUE if and only if the row value combination has not occurred before, when moving down the data-frame.

``````DT\$first <- !duplicated( DT[, list(x,y) ])
DT\$last <- rev(!duplicated( DT[, list(rev(x),rev(y)) ]))

> DT
x y first  last
[1,] a A  TRUE  TRUE
[2,] a B  TRUE  TRUE
[3,] a C  TRUE FALSE
[4,] a C FALSE  TRUE
[5,] b A  TRUE  TRUE
[6,] b B  TRUE  TRUE
[7,] b C  TRUE FALSE
[8,] b C FALSE FALSE
[9,] b C FALSE FALSE
[10,] b C FALSE  TRUE
[11,] c A  TRUE FALSE
[12,] c A FALSE  TRUE
[13,] c B  TRUE FALSE
[14,] c B FALSE  TRUE
[15,] c C  TRUE FALSE
[16,] c C FALSE FALSE
[17,] c C FALSE  TRUE
``````

Another way without using `duplicated()` is:

``````DT[ unique(DT), list(first = c(1, rep(0,length(y)-1)),
last =  c(rep(0,length(y)-1),1 )) ]

x y  first last
[1,] a A     1    1
[2,] a B     1    1
[3,] a C     1    0
[4,] a C     0    1
[5,] b A     1    1
[6,] b B     1    1
[7,] b C     1    0
[8,] b C     0    0
[9,] b C     0    0
[10,] b C     0    1
[11,] c A     1    0
[12,] c A     0    1
[13,] c B     1    0
[14,] c B     0    1
[15,] c C     1    0
[16,] c C     0    0
[17,] c C     0    1
``````
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Thanks! Still wondering about a data.table solution, but elegance definitely qualifies in this case. –  M.Dimo May 6 '12 at 21:51
You're welcome... I just added another way to do it. The `mult` feature you're referring to is only for picking either the first or last (or all) matches when there are multiple matches to the `i` argument in `DT[i,j,mult=... ]` –  Prasad Chalasani May 6 '12 at 23:08