# Find first/last row “recursively” by group

I try to find a efficient way of finding the first and last line by group.

``````R) ex=data.table(state=c("az","fl","fl","fl","fl","fl","oh"),city=c("TU","MI","MI","MI","MI","MI","MI"),code=c(85730,33133,33133,33133,33146,33146,45056))
R) ex
state city  code
1:    az   TU 85730
2:    fl   MI 33133
3:    fl   MI 33133
4:    fl   MI 33133
5:    fl   MI 33146
6:    fl   MI 33146
7:    oh   MI 45056
``````

I would like to find the first and last for each variable of a group

``````R) ex
state city  code first.state last.state first.city last.city first.code last.code
1:    az   TU 85730           1          1          1         1          1         1
2:    fl   MI 33133           1          0          1         0          1         0
3:    fl   MI 33133           0          0          0         0          0         0
4:    fl   MI 33133           0          0          0         0          0         1
5:    fl   MI 33146           0          0          0         0          1         0
6:    fl   MI 33146           0          1          0         1          0         1
7:    oh   MI 45056           1          1          1         1          1         1
``````

As far as I know `data.table` cannot easily help for things like this because `by="state,city,code"` would look at `4` triplets.

The only way I know would be to look for first/last.code in a by="state,city,code" then first/last.city in a by="state,city".

This is what I meant:

``````applyAll <- function(DT, by){
f<- function(n, vec){ return(vec[1:n]) }
by <- lapply(1:length(by), FUN=f, by)
out <- Reduce(f=firstLast, init=DT, x=by)
return(out)
}
firstLast <- function(DT, by){
return(DT);
}
``````

Result by: `applyAll(ex,c("state","city","code"))` but this would make NUMEROUS copies of `DT`, my question is then, is there someting scheduled or already existing such that we cant get first/last by groups. (This is fairly vanilla for `SAS` or `kdb` or `SQL`)

In `SAS`:

``````data DT;
set ex;
by state city code;
if first.code then firstcode=1;
if last.code then lastcode=1;
if first.city then firstcity=1;
if last.city then lastcity=1;
if first.state then firststate=1;
if last.state then laststate=1;
run;
``````
-
Reagarding your last sentence, what is wrong with that? –  Roland Jan 9 '13 at 14:56
That you need to repeat the instruction of finding first then last N times if you have N grouping variables –  statquant Jan 9 '13 at 15:26
I am curious why you want this. There might be a better way to achieve your ultimate goal. –  Roland Jan 9 '13 at 16:01

If this is the question :

For a set of columns (x,y,z) I'd like to add an integer column marking the position of the first item of each group `by="x"`, `by="x,y"` and `by="x,y,z"` (three new columns). The 1st row of each new column will always be 1 because that's always the first item of the first group. I'd also like to add a further 3 columns marking the last item by each of the same 3 groupings. I might have many more than just 3 groupings, though, so is something programatic possible please?

``````ex=data.table(state=c("az","fl","fl","fl","fl","fl","oh"),
city=c("TU","MI","MI","MI","MI","MI","MI"),
code=c(85730,33133,33133,33133,33146,33146,45056))
ex
state city  code
1:    az   TU 85730
2:    fl   MI 33133
3:    fl   MI 33133
4:    fl   MI 33133
5:    fl   MI 33146
6:    fl   MI 33146
7:    oh   MI 45056

cols = c("state","city","code")
for (i in seq_along(cols)) {
}
ex
state city  code f.state l.state f.city l.city f.code l.code
1:    az   TU 85730       1       1      1      1      1      1
2:    fl   MI 33133       1       0      1      0      1      0
3:    fl   MI 33133       0       0      0      0      0      0
4:    fl   MI 33133       0       0      0      0      0      1
5:    fl   MI 33146       0       0      0      0      1      0
6:    fl   MI 33146       0       1      0      1      0      1
7:    oh   MI 45056       1       1      1      1      1      1
``````

But as @Roland commented, there's probably a better way to achieve your ultimate goal.

And, as requested, here's what should be a faster solution using `.I` and `.N` :

``````cols = c("state","city","code")
for (i in seq_along(cols)) {
ex[,paste0(c("f.","l."),cols[i]):=0L]  # add the two 0 columns
ex[w\$f,paste0("f.",cols[i]):=1L]       # mark the firsts
ex[w\$l,paste0("l.",cols[i]):=1L]       # mark the lasts
}
``````

It should be faster because the grouping is done just once per column, and lots of small vectors are not created (no call to `c()` or `rep()` for each group) unlike the first solution.

-
This looks good. I was wondering if `data.table` hold something like `.I`,`.GRP`... (or a combinaison of it) that could have helped achieving this faster, I guess I know now. Cheers guys. –  statquant Jan 9 '13 at 21:27
@statquant Are you saying this solution is slow and you're wondering if it could be faster? Your English isn't very clear. It sounds as if you're not 100% delighted. And I'm still waiting for the "fairly vanilla" solutions in the other languages you mentioned which do this task so easily; e.g. SQL and SAS (the SAS solution you posted was written out column by column). –  Matt Dowle Jan 9 '13 at 22:14
slow is relative, this is the best I've seen so far, and I can't do faster myself. I was wondering if it could use .variables because using this is usually the fastest way, but you know better... About the vanilla I think the SAS code is fairly good with regard to simplicity not in number of lines of code but as far as syntax is concerned. Concerning my english I plead guilty, I guess it is common to a lot of us non-native speakers... –  statquant Jan 9 '13 at 22:31
@statquant Ok thanks for clarification, I'll add solution using .variables. But in terms of the SAS syntax I had your complaint in mind: "That you need to repeat the instruction of finding first then last N times if you have N grouping variables". Which looks to be what you're doing in SAS. –  Matt Dowle Jan 9 '13 at 22:36
Nice ! Thanks ! –  statquant Jan 10 '13 at 8:14

It's not entirely clear what you want, but you can certainly have more than one column in the index:

``````ex[, list(first=head(code, 1), last=tail(code, 1)), by=c("state", "city")]
state city first  last
1:    az   TU 85730 85730
2:    fl   MI 33133 33146
3:    oh   MI 45056 45056
``````

You can automate this over your groups like this:

``````by <- c("state", "city", "code")
byList <- lapply(seq_along(by), function(i)by[sequence(i)])
lapply(byList,
function(i) ex[, list(first=head(code, 1), last=tail(code, 1)), by=i] )

[[1]]
state first  last
1:    az 85730 85730
2:    fl 33133 33146
3:    oh 45056 45056

[[2]]
state city first  last
1:    az   TU 85730 85730
2:    fl   MI 33133 33146
3:    oh   MI 45056 45056

[[3]]
state city  code first  last
1:    az   TU 85730 85730 85730
2:    fl   MI 33133 33133 33133
3:    fl   MI 33146 33146 33146
4:    oh   MI 45056 45056 45056
``````
-
This is precisely what I am trying to do in an automated fashion, If I have a group of 10 I'd rather avoid writing 10 lines –  statquant Jan 9 '13 at 15:39
@statquant Answer edited. –  Andrie Jan 9 '13 at 15:49
@Andrie: `byList <- Reduce(c,by,accumulate = TRUE)`, but still not exactly what the OP wants according to the intended output in the question. –  Roland Jan 9 '13 at 16:00