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I would like to break a dataset into two frames - one for which the original dataset has duplicate observations based on a condition and one for which the original dataset does not have duplicate observations based on a condition. In the following example, I would like to break the frame into one for which there is only one coder for an observation and one for which there are two coders::

frame <- data.frame(id = c(1,1,1,2,2,3), coder = c("A", "A", "B", "A", "B", "A"), y = c(4,5,4,1,1,2))
frame

For this, I would like to produce, such that:

  frame1:

     id coder y
  1  1     A 4
  2  1     A 5
  3  1     B 4
  4  2     A 1
  5  2     B 1

  frame2:

  6  3     A 2

Thanks for any and all help.

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Hi, i'm not sure exactly what you're asking. You'd like to split a data.frames, one with duplicates and one without? what are you considering de-duplicating by: the entire row, a specific column, or a combination of columns? –  bjoseph Aug 8 at 17:09

2 Answers 2

up vote 1 down vote accepted

You can use aggregate to determine the ids you want in each data frame:

cts <- aggregate(coder~id, frame, function(x) length(unique(x)))
cts
#   id coder
# 1  1     2
# 2  2     2
# 3  3     1

Then you can subset as appropriate based on this:

subset(frame, id %in% cts$id[cts$coder >= 2])
#   id coder y
# 1  1     A 4
# 2  1     A 5
# 3  1     B 4
# 4  2     A 1
# 5  2     B 1
subset(frame, id %in% cts$id[cts$coder < 2])
#   id coder y
# 6  3     A 2
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You may also try:

 indx <- !colSums(!table(frame$coder, frame$id))
 frame[frame$id %in% names(indx)[indx],]
#   id coder y
#1  1     A 4
#2  1     A 5
#3  1     B 4
#4  2     A 1
#5  2     B 1

 frame[frame$id %in% names(indx)[!indx],]
#  id coder y
#6  3     A 2

Explanation

 table(frame$coder, frame$id) 
  #    1 2 3
  #  A 2 1 1
  #  B 1 1 0 #Here for id 3, B==0
  • If we Negate that, the result would be a logical index
  • !table(frame$coder, frame$id).
  • Do the colSums of the above, which results

    # 1 2 3 
    # 0 0 1 
    
  • Negate again and get the index for ids and subset those ids which are TRUE
  • From this you can subset by matching with the names of the ids
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