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This is my first post and I'm new to programming and R.

I'm trying to create a new column to mark or flag sequentially duplicated values in a separate column.

df <- c(2,2,2,2,3,4,3,4,3,4,2,3,7,7,7))

Using the duplicated function returns the following:

data.frame(value = df, flag = duplicated(df))

   value  flag  
1      2  FALSE  
2      2  TRUE  
3      2  TRUE  
4      2  TRUE  
5      3  FALSE  
6      4  FALSE  
7      3  TRUE  
8      4  TRUE  
9      3  TRUE  
10     4  TRUE  
11     2  TRUE  
12     3  TRUE  
13     7  FALSE  
14     7  TRUE  
15     7  TRUE   

What I'd like is:

   value  flag  
1      2  TRUE  
2      2  TRUE  
3      2  TRUE  
4      2  TRUE  
5      3  FALSE  
6      4  FALSE  
7      3  FALSE  
8      4  FALSE  
9      3  FALSE  
10     4  FALSE  
11     2  FALSE  
12     3  FALSE  
13     7  TRUE    
14     7  TRUE    
15     7  TRUE     

My data set has over 2 million observations, so ideally the solution would be efficient.

Thank you , John

share|improve this question
    
Since you are relatively new here you might want to read the about and the faq about how SO works. StackOverflow is made much more valuable to everyone if when you receive an answer that solves your problem, you accept it by clicking the little check mark or upvote a useful answer. You are under absolutely no obligation to do either, but it is a great way to "give back" to the site if an answer did in fact solve your problem and helps keep the site free of unanswered questions that have been answered. Thanks! – Simon O'Hanlon Jun 27 '13 at 23:06
up vote 6 down vote accepted

rle will get you what you are after in combination with rep

rl <- rle( df )
rep( rl$lengths != 1 , times = rl$lengths )
#  [1]  TRUE  TRUE  TRUE  TRUE FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE  TRUE  TRUE
# [15]  TRUE

And I believe rle is fairly efficient.

Timing (MBP late 2008) on a 2e6 length vector:

system.time({ rl <- rle( df )
res <- rep( rl$lengths != 1 , times = rl$lengths )
 })
#   user  system elapsed 
#  0.449   0.106   0.559
share|improve this answer
    
Hah! I had started thinking about this problem with rle and then I saw your answer and switched. And now you've switched to rle. :) – asb Jun 27 '13 at 21:02
    
I guess you realized before me that the older approach was not going anywhere. Upvote. – asb Jun 27 '13 at 21:12
    
@asb lol, that often happens to me!! Thanks for the upvote :-) – Simon O'Hanlon Jun 27 '13 at 21:13

Since you have more than 2 millions I recommand you really to switch to data.table. Here My solution using rle similar to @Simon one, I just write its data.table version. I believe that is not always obvious especially for beginners(like me under data.table).

library(data.table)
set.seed(1234)
dd <- sample(1:20, 2e+06, rep = TRUE)
DT <- data.table(dd)
system.time(DT[, `:=`(grp2, {
                            dd.rle = rle(dd)  ## store rle to not call it twice
                            rep(dd.rle$lengths > 1, times = dd.rle$lengths)
             })])
##    user  system elapsed 
##    1.17    0.06    1.28
##    user  system elapsed  <- rle twice
##    1.69    0.11    1.86

##        dd  grp2
## 1e+00:  3 FALSE
## 2e+00: 13  TRUE
## 3e+00: 13  TRUE
## 4e+00: 13  TRUE
## 5e+00: 18 FALSE
##    ---         
## 2e+06:  6 FALSE
## 2e+06:  5 FALSE
## 2e+06:  4 FALSE
## 2e+06: 10 FALSE
## 2e+06: 13 FALSE
share|improve this answer
    
+1 I was going to do this, honest! I just decided it would take me too long to figure out - I still SUCK at data.table Nice work. – Simon O'Hanlon Jun 27 '13 at 21:13
    
@SimonO101 thanks. – agstudy Jun 27 '13 at 21:14
2  
You could perhaps be even quicker by not using rle twice? – Simon O'Hanlon Jun 27 '13 at 21:24
    
@SimonO101 good catch. it is slightly quicker now. – agstudy Jun 27 '13 at 21:33

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