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How to unique (rle unique) tuples in a df like this

structure(c("M01", "M01", "M01", "M01", "M01", "M02", "M02", 
"M02", "M02", "M03", "M03", "F04", "F04", "F02", "F02", "F04", 
"F10", "F10", NA, "F10", "F01", "F01"), .Dim = c(11L, 2L), .Dimnames = list(
    NULL, c("a", "b")))

> sample
      a     b    
 [1,] "M01" "F04"
 [2,] "M01" "F04"
 [3,] "M01" "F02"
 [4,] "M01" "F02"
 [5,] "M01" "F04"
 [6,] "M02" "F10"
 [7,] "M02" "F10"
 [8,] "M02" NA   
 [9,] "M02" "F10"
[10,] "M03" "F01"
[11,] "M03" "F01"

to get this :

structure(c("M01", "M01", "M01", "M02", "M02", "M03", "F04", 
"F02", "F04", "F10", "F10", "F01"), .Dim = c(6L, 2L), .Dimnames = list(
    NULL, c("d", "c")))
> output
     d     c    
[1,] "M01" "F04"
[2,] "M01" "F02"
[3,] "M01" "F04"
[4,] "M02" "F10"
[5,] "M02" "F10"
[6,] "M03" "F01"

So the idea is to get a df with tuples, but unique based on row and based only on previous element, so : unique(sample) Doesn't give what I need. Could rle be run on this df in a way to consider tuples, and to keep df as output ? Is there a better approach ?


gives wanted results but obviously I loose valuable info of column 1.

share|improve this question
The logic behind how you get your desired output makes absolutely no sense to me. You're probably going to have to explain that better. – joran Mar 19 '13 at 15:24
I think he just wants rows that are not duplicates of the row directly above it. – Señor O Mar 19 '13 at 15:29
Ok, sorry I wasn't clear. I edited the question. The unique part should be run on rows and as Senor O pointed, only on row directly above it. – Chargaff Mar 19 '13 at 15:30
Ok. Frankly, I'd just allocate a indicator vector of the right length, fill it in a for loop, subset your matrix and move on, rather than try to think of something more clever. – joran Mar 19 '13 at 15:34
@Chargaff, have you had a look at my answer yet? – Arun Mar 19 '13 at 15:44

2 Answers 2

up vote 6 down vote accepted

How about this?

# dd is the matrix structure you posted in the question
dd <-                     ## convert to data.frame
dd[] <- lapply(dd, as.character)            ## change columns to character
na.omit(dd[cumsum(rle(dd$b)$lengths), ])    ## get indices by cumsum'ing rle-lengths 
                                            ## wrap with na.omit to remove NA rows
#      a   b
# 2  M01 F04
# 4  M01 F02
# 5  M01 F04
# 7  M02 F10
# 9  M02 F10
# 11 M03 F01
share|improve this answer
Thank you for explaining your answer. Cumsum'ing is nice ! – Chargaff Mar 19 '13 at 15:54

I think the cleanest way to do this is use a for loop.

Indices <- vector(mode="numeric", length=nrow(sample))

for(i in 1:(nrow(sample))
    if (i==1) 
        Indices[i] <- TRUE
        Indices[i] <- sample[i,2] == sample[i-1,2]
output <- sample[Indices,]
share|improve this answer
your code has quite a few errors. – Arun Mar 19 '13 at 15:44
That's not very helpful – Señor O Mar 19 '13 at 15:52
how do you mean? you want me to spell out your errors? – Arun Mar 19 '13 at 15:53
So a helpful thing to do when you see an error is to either (1) point out the error or (2) fix the error. – Señor O Mar 19 '13 at 15:57
Yes, if it's with the logic, I'd be happy to do that. But your code is an un-tried out version, which either means that you were too lazy to try it out before posting (or) you are away from your laptop/computer and are typing from your mobile/smartphone. In either case, it's not my problem. It was riddled with unmatched paranthesis, vector(NA, length(.)). Sorry, but it's not my job. Next time I'll down-vote instead of pointing that there's an error like many do. – Arun Mar 19 '13 at 16:35

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