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I have a data frame containing 10k rows, for a given column X I have duplicated values, How can we do to select randomly ONLY ONE ROW containing this value in this column ?

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2 Answers 2

up vote 5 down vote accepted

Your question is not entirely clear, but I'm assuming you want to subsample the entire data frame, keeping one (randomly chosen) row per "duplicate class". Something like

library(plyr)
subsampled_data <- ddply(mydata,.(X),
    function(x) {
          x[sample(nrow(x),size=1),]
    })

Should work (not tested!)

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1  
This interpretation of the OP's (cryptic) question seems more likely than mine, for which I was going to suggest df[sample(which(df$X == myVal),1),]. –  joran Nov 7 '11 at 19:56
1  
Thanks guys, I am trying Ben's suggestion, Joran, how to do if I want to apply this to all colum value because myVal as suggested in your snippets change along my column X, which means I have hundreds of 5 for example and hundreds of 8s etc etc –  Dar Nov 7 '11 at 19:59
    
@Rad Ben's solution will handle that; mine will not. We interpreted your question differently. –  joran Nov 7 '11 at 20:01
    
Thanks for your comment –  Dar Nov 7 '11 at 20:03
1  
@Rad Generally ddply is known for elegant simplicity, and not necessarily speed. See my answer below for another option to consider. –  John Colby Nov 7 '11 at 22:08

My first instinct would have been something like Ben's elegant ddply solution. However, knowing now that you have such a large data set, there are definitely faster ways. Here is one that will be many times faster if you have many unique values:

RemoveDups <- function(df, column) {
  inds = sample(1:nrow(df))  
  df   = df[inds, ]

  dups = duplicated(df[, column])
  df   = df[!dups, ]
  inds = inds[!dups]

  df[sort(inds, index=T)$ix, ]
}

Simulate some data (here with many unique values):

n.row = 10^6
n.col = 3

set.seed(12345)
data  = data.frame(matrix(sample(1000, n.row*n.col, replace=T), nrow=n.row))

Compare the 2 methods:

> system.time(ddply(data, 'X1', function(x) x[sample(nrow(x), size=1), ]))
   user  system elapsed 
  3.264   0.921   4.315 
> system.time(RemoveDups(data, 'X1'))
   user  system elapsed 
  0.375   0.025   0.399 
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Elegant ! Awesome, Thanks John –  Dar Nov 8 '11 at 17:04

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