# Finding the mean of all Duplicates

There is a nice explanation here describing how to eliminate duplicates in a data frame by picking the maximum variable.
I can also see how this can be applied to pick the duplicate with the minimum variable.
my question now is how do I display the mean of all duplicates?
for example:

``````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
``````

I would like the output:

``````# id var
#  1   3     mean(2,4)
#  2   2     mean(1,3)
#  3   5
#  4   2
``````

My current code is:

``````averages<-do.call(rbind,lapply(split(z,z\$id),function(chunk) mean(chunk\$var)))
z<-z[order(z\$id),]
z<-z[!duplicated(z\$id),]
z\$var<-averages
``````

My code runs very slowly and is takes about 10 times longer than the method for picking the maximum. How do I optimize this code?

-

I would use a combination of `ave` and `unique`:

``````z <- data.frame(id=rep(c(1,1,2,2,3,4),1e5),var=rnorm(6e5))
z\$var <- ave(z\$var, z\$id, FUN=mean)
z <- unique(z)
``````

UPDATE: after actually timing the solution, here's something that's a little faster.

``````z <- data.frame(id=rep(c(1,1,2,2,3,4),1e5),var=rnorm(6e5))
system.time({
averages <- t(sapply(split(z,z\$id), function(x) sapply(x,mean)))
})
#    user  system elapsed
#    1.32    0.00    1.33
system.time({
z\$var <- ave(z\$var, z\$id, FUN=mean)
z <- unique(z)
})
#    user  system elapsed
#    4.33    0.02    4.37
``````
-
do you know if unique is faster or has any advantage over duplicated? –  CAPSLOCK Oct 24 '11 at 20:58
thanks for this! reduced my time from 39s to about 4s –  CAPSLOCK Oct 24 '11 at 21:00
@Ellipsis...: you're welcome. See my update for a solution that's faster (given my tests). –  Joshua Ulrich Oct 24 '11 at 21:02
=/ unfortunately the split method does not work as well for me. –  CAPSLOCK Oct 24 '11 at 21:31

Here is a faster solution using `data.table`

``````library(data.table)
z <- data.frame(id=sample(letters, 6e5, replace = TRUE),var = rnorm(6e5))

fn1 <- function(z){
z\$var <- ave(z\$var, z\$id, FUN=mean)
return(unique(z))
}

fn2 <- function(z) {
t(sapply(split(z,z\$id), function(x) sapply(x,mean)))
}

fn3 <- function(z){
data.table(z)[,list(var = mean(var)), 'id']
}

library(rbenchmark)
benchmark(f1 <- fn1(z), f2 <- fn2(z), f3 <- fn3(z), replications = 2)

est replications elapsed         relative     user.self  sys.self
1 f1 <- fn1(z)            2   3.619 8.455607     3.331    0.242
2 f2 <- fn2(z)            2   0.586 1.369159     0.365    0.220
3 f3 <- fn3(z)            2   0.428 1.000000     0.341    0.086
``````
-
Since when is 0.428 "much faster" than 0.586? ;-) The fastest solution will depend on the OP's data, but my bet would be on data.table. –  Joshua Ulrich Oct 24 '11 at 21:43
point taken and edit made! i pasted the output while my daughter was screaming to be picked up :) –  Ramnath Oct 24 '11 at 23:26
Thanks for this but the ave method works the fastest for me since my data doesn't have huge clusters of duplicates –  CAPSLOCK Oct 25 '11 at 14:52

I think `split()` and `unsplit()` is one way.

``````dupMean <- function(x)
{
result <- split(x[, 2], x[, 1])
result <- lapply(result, mean)
result <- unsplit(result, unique(x[, 1]))

return(result)
}
``````

Or, to save a line with plyr:

``````require(plyr)
dupMean <- function(x)
{
result <- split(x[, 2], x[, 1])
result <- laply(result, mean)

return(result)
}
``````

Update: Just for curiosity, here is a comparison of the various functions suggested. Ramnath (fn3) looks to be the winner on my computer.

``````require(plyr)
require(data.table)
require(rbenchmark)

fn1 <- function(z){
z\$var <- ave(z\$var, z\$id, FUN=mean)
return(unique(z))
}

fn2 <- function(z) {
t(sapply(split(z,z\$id), function(x) sapply(x,mean)))
}

fn3 <- function(z){
data.table(z)[,list(var = mean(var)), 'id']
}

fn4 <- function(x)
{
result <- t(sapply(split(x,x\$id), function(y) sapply(y,mean)))

return(result)
}

fn5 <- function(x)
{
x\$var <- ave(x\$var, x\$id, FUN=mean)
x <- unique(x)

return(x)
}

fn6 <- function(x)
{
result <- do.call(rbind,lapply(split(x,x\$id),function(chunk) mean(chunk\$var)))

return(data.frame(id = unique(x[, 1]), var = result))
}

fn7 <- function(x)
{
result <- split(x[, 2], x[, 1])
result <- lapply(result, mean)
result <- unsplit(result, unique(x[, 1]))

return(data.frame(id = unique(x[, 1]), var = result))
}

fn8 <- function(x)
{
result <- split(x[, 2], x[, 1])
result <- laply(result, mean)

return(data.frame(id = unique(x[, 1]), var = result))
}

z <- data.frame(id = rep(c(1,1,2,2,3,4,5,6,6,7), 1e5), var = rnorm(1e6))

benchmark(f1 <- fn1(z), f2 <- fn2(z), f3 <- fn3(z), f4 <- fn4(z), f5 <- fn5(z), f6 <- fn6(z), f7 <- fn7(z), f8 <- fn8(z), replications = 2)
``````

Result:

``````          test replications elapsed  relative user.self sys.self
1 f1 <- fn1(z)            2   13.45 20.692308     13.27     0.15
2 f2 <- fn2(z)            2    3.54  5.446154      3.43     0.09
3 f3 <- fn3(z)            2    0.65  1.000000      0.54     0.10
4 f4 <- fn4(z)            2    3.62  5.569231      3.50     0.09
5 f5 <- fn5(z)            2   13.57 20.876923     13.25     0.25
6 f6 <- fn6(z)            2    3.53  5.430769      3.36     0.14
7 f7 <- fn7(z)            2    3.34  5.138462      3.28     0.03
8 f8 <- fn8(z)            2    3.34  5.138462      3.26     0.03
``````
-
isn't your first solution pretty much what I have? –  CAPSLOCK Oct 24 '11 at 20:54
Using `unsplit()` cuts the time in half, compared to `rbind()`. But Joshua's is much much faster. Testing a data frame with 10^7 rows, total elapsed time was 9.83, 4.70, 0, respectively. –  jthetzel Oct 24 '11 at 21:09