# Remove duplicates keeping entry with largest absolute value

Let's say I have four samples: id=1, 2, 3, and 4, with one or more measurements on each of those samples:

``````> a <- data.frame(id=c(1,1,2,2,3,4), value=c(1,2,3,-4,-5,6))
> a
id value
1  1     1
2  1     2
3  2     3
4  2    -4
5  3    -5
6  4     6
``````

I want to remove duplicates, keeping only one entry per ID - the one having the largest absolute value of the "value" column. I.e., this is what I want:

``````> a[c(2,4,5,6), ]
id value
2  1     2
4  2    -4
5  3    -5
6  4     6
``````

How might I do this in R?

-
You mention "keeping only one entry per ID - the one having the largest absolute value of the 'value' column." What is the desired behavior if more than one entry per ID matches that condition? Return both values, or either one? For example, what's your desired output if `a[3, 2] <- 4`? –  Ananda Mahto Oct 9 '12 at 19:16
Ah.. that's a good question. The value column is a actually real number not an integer, and will very likely never be exactly equal. Ideal desired behavior should probably be to discard both observations, but this probably won't happen as I said. –  Stephen Turner Oct 9 '12 at 21:06
Thanks everyone for the help. –  Stephen Turner Oct 10 '12 at 12:42

`````` aa <- a[order(a\$id, -abs(a\$value) ), ] #sort by id and reverse of abs(value)
aa[ !duplicated(aa\$id), ]              # take the first row within each id
id value
2  1     2
4  2    -4
5  3    -5
6  4     6
``````
-

Check out `?aggregate`:

``````aggregate(value~id,a,function(x) x[which.max(abs(x))])
``````

I like the answer by @DWin, but I would like show how this could also work with metadata:

``````aa<-merge(aggregate(value~id,a,function(x) x[which.max(abs(x))]),a)
# Fails if the max value is duplicated for a single id without next line.
aa[!duplicated(aa),]
``````

I couldn't help myself and created one last answer:

``````do.call(rbind,lapply(split(a,a\$id),function(x) x[which.max(abs(x\$value)),]))
``````
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Not quite--"largest absolute value" is what the OP is after. –  Ananda Mahto Oct 9 '12 at 18:23
Thanks. I changed the code. –  nograpes Oct 9 '12 at 19:00
Your most recent edit fixed the problem. +1 –  Ananda Mahto Oct 9 '12 at 19:05
This works well as per my description, but I should have been more informative. There is actually a single ID and many other metadata columns that are the same for each ID, and many other value columns for each ID. I want to keep all of the columns in the data frame, not just the one id and value. –  Stephen Turner Oct 10 '12 at 12:31

A `data.table` approach might be in order if your data set is very large:

``````library(data.table)

aDT[J(unique(id)), list(value = value[which.max(abs(value))])]
``````

Or a not as fast, but still fast, alternative :

``````library(data.table)
as.data.table(a)[, .SD[which.max(abs(value))], by=id]
``````

This version returns all the columns of `a`, in case there are more in the real dataset.

-

Another approach (though the code might look a little cumbersome) is to use `ave()`:

``````a[which(abs(a\$value) == ave(a\$value, a\$id,
FUN=function(x) max(abs(x)))), ]
#   id value
# 2  1     2
# 4  2    -4
# 5  3    -5
# 6  4     6
``````
-
+1 for `ave`, ... my favorite function. –  IShouldBuyABoat Oct 10 '12 at 0:52
@DWin, "I learned it by watching you!". ;) –  Ananda Mahto Oct 10 '12 at 3:17
Heh. Not from my cultural framework, but the Scrubs outtakes I got to after the "brain on drugs" clip at youtube were curiously amusing. –  IShouldBuyABoat Oct 10 '12 at 6:02
``````library(plyr)