# How can I extract the rows from a large data set by common IDs and take the means of these rows and make a column having these IDs

I know it is a very silly question but I could not sort it out that is why asking... How can I extract the rows from a large data set by common IDs and take the means of these rows and make a column having these IDs as rownames. e.g.

``````IDs Var2
Ae4 2
Ae4 4
Ae4 6
Bc3 3
Bc3 5

OutPut
Var(x)
Ae4 4
Bc3 4
``````
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Please make your example reproducible next time, right now we cannot easily copy the data into R. In addition, please start accepting answers.. –  Paul Hiemstra Oct 18 '12 at 13:53

This kinds of things can easily be done using the `plyr` function `ddply`:

``````dat = data.frame(ID = rep(LETTERS[1:5], each = 20), value = runif(100))
ID      value
1  A 0.45800889
2  A 0.11221072
3  A 0.58833532
4  A 0.70056704
5  A 0.08337996
6  A 0.05195357

ddply(dat, .(ID), summarize, mn = mean(value))
ID        mn
1  A 0.4960083
2  B 0.5809681
3  C 0.4512388
4  D 0.5079790
5  E 0.5397708
``````

If your dataset is big, and/or the number of unique `ID`'s is big, you could use `data.table`. See this paper for more detail about `plyr`.

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Thank you very much for your help Paul Hiemstra and thanks for the paper recomendation and also I will take care to accept the answer in future. Sorry, for not accepting previous answers though they all worked ver well. –  maria riaz Oct 18 '12 at 14:14
No problem! Just mentioning that it was happening :) –  Paul Hiemstra Oct 18 '12 at 14:17

If you have a large data.frame you could use `data.table`

Some alternatives to `ddply` are `aggregate` and `data.table`

``````set.seed(001)
dat <- data.frame(ID = rep(LETTERS[1:5], each = 20), value = runif(1e6))

library(data.table)
DT <- data.table(dat)
DT[, mean(value), by=list(ID)]  # data.table approach

aggregate(.~ID, data=dat, mean) # aggregate (R Base function) approach

library(rbenchmark) # comparing performance
benchmark(DT[, mean(value), by=list(ID)],                 # data.table approach
aggregate(.~ID, data=dat, mean),                # aggregate  approach
ddply(dat, .(ID), summarize, mn = mean(value)), # ddply approach (Paul Hiemstra's answer)
columns=c("test", "replications", "elapsed", "relative"),
order='relative',
replications=1)

test replications elapsed relative
1               DT[, mean(value), by = list(ID)]            1    0.14    1.000
3 ddply(dat, .(ID), summarize, mn = mean(value))            1    0.58    4.143
2            aggregate(. ~ ID, data = dat, mean)            1    3.59   25.643
``````

As you can see the fastest is `data.table` approach.

# Edit

There's an R base approach even faster than `data.table`, let's see:

`````` unlist(lapply(split(dat\$value, dat\$ID), mean)) # another R Base approach

benchmark(DT[, mean(value), by=list(ID)],                 # data.table approach
aggregate(.~ID, data=dat, mean),                # aggregate  approach
ddply(dat, .(ID), summarize, mn = mean(value)), # ddply approach (Paul Hiemstra's answer)
unlist(lapply(split(dat\$value, dat\$ID), mean)), # lapply, split approach
columns=c("test", "replications", "elapsed", "relative"),
order='relative',
replications=1)
test replications elapsed relative
4 unlist(lapply(split(dat\$value, dat\$ID), mean))            1    0.06    1.000
1               DT[, mean(value), by = list(ID)]            1    0.10    1.667
3 ddply(dat, .(ID), summarize, mn = mean(value))            1    0.56    9.333
2            aggregate(. ~ ID, data = dat, mean)            1    3.28   54.667
``````

Venables and Ripley (2000, pag.37) suggests that combining `unlist`, `lapply` and `split` is faster than just using `sapply` and in this particular example it turned out to be even faster than `data.table`

Reference:

Venables, W. N. and Ripley, B. D. (2000). S Programming. Springer. Statistics and Computing ISBN 0-387-98966-8 (alk. paper)

# Scaling up (edit from Matthew Dowle)

More groups

``````dat <- data.frame(ID = as.character(as.hexmode(1:2000)), value = runif(1e6))
DT <- as.data.table(dat)
benchmark(
DT[, mean(value), by=ID],
aggregate(.~ID, data=dat, mean),
ddply(dat, .(ID), summarize, mn = mean(value)),
unlist(lapply(split(dat\$value, dat\$ID), mean)),
columns=c("test", "replications", "elapsed", "relative"),
order='relative',
replications=3)
test replications elapsed relative
1                     DT[, mean(value), by = ID]            3    0.33    1.000
4 unlist(lapply(split(dat\$value, dat\$ID), mean))            3    0.41    1.242
2            aggregate(. ~ ID, data = dat, mean)            3    7.69   23.303
3 ddply(dat, .(ID), summarize, mn = mean(value))            3   17.08   51.758
``````

More rows

``````dat <- data.frame(ID = as.character(as.hexmode(1:2000)), value = runif(1e7))
DT <- as.data.table(dat)
benchmark(
DT[, mean(value), by=ID],
aggregate(.~ID, data=dat, mean),
ddply(dat, .(ID), summarize, mn = mean(value)),
unlist(lapply(split(dat\$value, dat\$ID), mean)),
columns=c("test", "replications", "elapsed", "relative"),
order='relative',
replications=3)
test replications elapsed relative
1                     DT[, mean(value), by = ID]            3    3.18    1.000
4 unlist(lapply(split(dat\$value, dat\$ID), mean))            3    4.26    1.340
2            aggregate(. ~ ID, data = dat, mean)            3   90.28   28.390
3 ddply(dat, .(ID), summarize, mn = mean(value))            3  268.86   84.547
``````

Setting a key first

``````system.time(setkey(DT,ID))
user  system elapsed
0.71    0.03    0.75
object.size(dat)
152.7 Mb              # Quite small. Easy for a 32bit PC with 2GB RAM.
object.size(DT)
152.7 Mb
benchmark(
DT[, mean(value), by=ID],
aggregate(.~ID, data=dat, mean),
ddply(dat, .(ID), summarize, mn = mean(value)),
unlist(lapply(split(dat\$value, dat\$ID), mean)),
columns=c("test", "replications", "elapsed", "relative"),
order='relative',
replications=3)
test replications elapsed relative
1                     DT[, mean(value), by = ID]            3    0.95    1.000
4 unlist(lapply(split(dat\$value, dat\$ID), mean))            3    4.08    4.295
2            aggregate(. ~ ID, data = dat, mean)            3   91.76   96.589
3 ddply(dat, .(ID), summarize, mn = mean(value))            3  265.15  279.105
``````

Even more rows

``````dat <- data.frame(ID = rep(1:2000,each=50000), value = runif(1e8))
DT <- as.data.table(dat)
system.time(setkey(DT,ID))
user  system elapsed
2.10    0.25    2.34
object.size(dat)
1.1 Gb             # Comfortable for a 64bit PC with 8GB RAM
object.size(DT)
1.1 Gb
benchmark(
DT[, mean(value), by=ID],
unlist(lapply(split(dat\$value, dat\$ID), mean)),
columns=c("test", "replications", "elapsed", "relative"),
order='relative',
replications=3)
test replications elapsed relative
1                     DT[, mean(value), by = ID]            3    7.30    1.000
2 unlist(lapply(split(dat\$value, dat\$ID), mean))            3  184.83   25.319
``````
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+1 for the benchmarks! –  Paul Hiemstra Oct 18 '12 at 14:18
+1 too. But 0.06 vs 0.10 on a single run is neither significant or robust. The `unlist`, `lapply` and `split` method doesn't scale. And it returns a different result. –  Matt Dowle Oct 18 '12 at 15:36
Thank you @MatthewDowle nice edit. –  Jilber Oct 18 '12 at 16:14
@PaulHiemstra More benchmarks added. –  Matt Dowle Oct 18 '12 at 17:57