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I have a rather small dataset of 3 columns (id, date and distance) in which some dates may be duplicated (otherwise unique) because there is a second distance value associated with that date.

For those duplicated dates, how do I average the distances then replace the original distance with the averages?

Let's use this dataset as the model:

z <- data.frame(id=c(1,1,2,2,3,4),var=c(2,4,1,3,5,2))
# id var
#  1   2
#  1   4
#  2   1
#  2   3
#  3   5
#  4   2

The mean of id#1 is 3 and of id#2 is 2, which would then replace each of the original var's.

I've checked multiple questions to address this and have found related discussions. As a result, here is what I have so far:

# Check if any dates have two estimates (duplicate Epochs)
length(unique(Rdataset$Epoch)) == nrow(Rdataset)
# if 'TRUE' then each day has a unique data point (no duplicate Epochs)
# if 'FALSE' then duplicate Epochs exist, and the distances must be 
# averaged for each duplicate Epoch
Rdataset$Distance <- ave(Rdataset$Distance, Rdataset$Epoch, FUN=mean)
Rdataset <- unique(Rdataset)

Then, with the distances for duplicate dates averaged and replaced, I wish to perform other functions on the entire dataset.

share|improve this question
You should provide a reproducible example. ave(Rdataset$Distance, Rdataset$Epoch) should be OK. What'wrong with ave? to get duplicates use duplicated function. –  agstudy Jul 3 '13 at 0:51
where is the question? –  flodel Jul 3 '13 at 0:55
#flodel: The question is, How do I calculate the mean of distances for duplicated dates within a dataset? –  remarkableearth Jul 3 '13 at 1:00
I have added a reproducible example and clarified some points in the original post. –  remarkableearth Jul 3 '13 at 1:15

3 Answers 3

Here's a solution that doesn't bother to actually check if the id's are duplicated- you don't actually need to, since for non-duplicated id's, you can just use the mean of the single var value:

duplicated_ids = unique(z$id[duplicated(z$id)])

z_deduped = ddply(
  function(df_section) {
    res_df = data.frame(id=df_section$id[1], var=mean(df_section$var))


> z_deduped
  id var
1  1   3
2  2   2
3  3   5
4  4   2
share|improve this answer
Or in base R and much simpler: aggregate(var ~ id, data=z, FUN=mean). Alternatively, to not throw out the duplicate id rows, z$var <- ave(z$var,z$id) –  thelatemail Jul 3 '13 at 2:37
@thelatemail Since no one else has claimed it, you should probably make that its own answer. –  Thomas Jul 3 '13 at 14:43
@thelatemail Your script is the best and simplest. As Thomas says, you should make it its own answer so I can check it. Thanks to all - I tried all your methods. –  remarkableearth Jul 3 '13 at 16:21

Unless I misunderstand:

ddply(z, .(id), summarise, var2 = mean(var))
# id var2
# 1  1    3
# 2  2    2
# 3  3    5
# 4  4    2
share|improve this answer
  id var
1  1   3
2  2   2
3  3   5
4  4   2
share|improve this answer
Giving a bit more context like a short explanation what aggregate does is nice and more the answer even more helpful. Just a comment. –  Trilarion Dec 12 '14 at 12:37
This does not provide an answer to the question. To critique or request clarification from an author, leave a comment below their post - you can always comment on your own posts, and once you have sufficient reputation you will be able to comment on any post. –  Peter Foti Dec 12 '14 at 14:29

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