# Idiomatic R code for partitioning a vector by an index and performing an operation on that partition

I'm trying to find the idiomatic way in R to partition a numerical vector by some index vector, find the sum of all numbers in that partition and then divide each individual entry by that partition sum. In other words, if I start with this:

``````df <- data.frame(x = c(1,2,3,4,5,6), index = c('a', 'a', 'b', 'b', 'c', 'c'))
``````

I want the output to create a vector (let's call it z):

``````c(1/(1+2), 2/(1+2), 3/(3+4), 3/(3+4), 5/(5+6), 6/(5+6))
``````

If I were doing this is SQL and could use window functions, I would do this:

``````select
x / sum(x) over (partition by index) as z
from df
``````

and if I were using plyr, I would do something like this:

``````ddply(df, .(index), transform, z = x / sum(x))
``````

but I'd like to know how to do it using the standard R functional programming tools like mapply/aggregate etc.

-

Yet another option is `ave`. For good measure, I've collected the answers above, tried my best to make their output equivalent (a vector), and provided timings over 1000 runs using your example data as an input. First, my answer using `ave`: `ave(df\$x, df\$index, FUN = function(z) z/sum(z))`. I also show an example using `data.table` package since it is usually pretty quick, but I know you're looking for base solutions, so you can ignore that if you want.

And now a bunch of timings:

``````library(data.table)
library(plyr)
dt <- data.table(df)

plyr <- function() ddply(df, .(index), transform, z = x / sum(x))
av <- function() ave(df\$x, df\$index, FUN = function(z) z/sum(z))
t.apply <- function() unlist(tapply(df\$x, df\$index, function(x) x/sum(x)))
l.apply <- function() unlist(lapply(split(df\$x, df\$index), function(x){x/sum(x)}))
b.y <- function() unlist(by(df\$x, df\$index, function(x){x/sum(x)}))
agg <- function() aggregate(df\$x, list(df\$index), function(x){x/sum(x)})
d.t <- function() dt[, x/sum(x), by = index]

library(rbenchmark)
benchmark(plyr(), av(), t.apply(), l.apply(), b.y(), agg(), d.t(),
replications = 1000,
columns = c("test", "elapsed", "relative"),
order = "elapsed")
#-----

test elapsed  relative
4 l.apply()   0.052  1.000000
2      av()   0.168  3.230769
3 t.apply()   0.257  4.942308
5     b.y()   0.694 13.346154
6     agg()   1.020 19.615385
7     d.t()   2.380 45.769231
1    plyr()   5.119 98.442308
``````

the `lapply()` solution seems to win in this case and `data.table()` is surprisingly slow. Let's see how this scales to a bigger aggregation problem:

``````df <- data.frame(x = sample(1:100, 1e5, TRUE), index = gl(1000, 100))
dt <- data.table(df)

#Replication code omitted for brevity, used 100 replications and dropped plyr() since I know it
#will be slow by comparison:
test elapsed  relative
6     d.t()   2.052  1.000000
1      av()   2.401  1.170078
3 l.apply()   4.660  2.270955
2 t.apply()   9.500  4.629630
4     b.y()  16.329  7.957602
5     agg()  20.541 10.010234
``````

that seems more consistent with what I'd expect.

In summary, you've got plenty of good options. Find one or two methods that work with your mental model of how aggregation tasks should work and master that function. Many ways to skin a cat.

# Edit - and an example with 1e7 rows

Probably not large enough for Matt, but as big as my laptop can handle without crashing:

``````df <- data.frame(x = sample(1:100, 1e7, TRUE), index = gl(10000, 1000))
dt <- data.table(df)
#-----
test elapsed  relative
6     d.t()    0.61  1.000000
1      av()    1.45  2.377049
3 l.apply()    4.61  7.557377
2 t.apply()    8.80 14.426230
4     b.y()    8.92 14.622951
5     agg()   18.20 29.83606
``````
-
This is such a great answer - thanks! –  John Horton May 25 '12 at 5:13
Glad you realised the first test was finding significant differences of insignificant times. I dunno why `benchmark` has a `replications` argument really - it just seems to encouage people to time overhead and miss the point entirely about `data.table`. –  Matt Dowle Jun 6 '12 at 10:25
Also, `1e5` isn't big enough for `data.table` to really shine. Try `1e6`,`1e7` and `1e8`. It should then be significantly faster than the next fastest (`ave()`). A `numeric` vector length `1e8` is 0.75GB, so that's starting to be size we mean by large data. At some point `ave()` will fail with 'out of memory', too, but `data.table` will continue to work. –  Matt Dowle Jun 12 '12 at 11:08
A 64bit netbook with 4GB of RAM is under £300, so `1e8` is not large really. 1e8 = 100 million = 1/20th of the (current) maximum vector length in R (2 billion). On machines with larger RAM available (say 32GB-128GB) try `1e9` (7GB). Seems like `1e10`+ will be possible in R 2.16, so someone must have enough RAM (or something RAM-like). –  Matt Dowle Jun 12 '12 at 11:25
@MatthewDowle - good points. Maybe I should amend my answer to further indicate I was balancing a larger aggregation problem with my patience to see the results and update my answer. As is often the case, my attention span is the limiting factor :). I'm traveling today, but will update my answer later to further show `data.table()` in it's best light. –  Chase Jun 12 '12 at 11:28

If you're only operating on a single vector and only need a single indexing vector then tapply is quite fast

``````dat <- 1:6
lev <- rep(1:3, each = 2)
tapply(dat, lev, function(x){x/sum(x)})
#\$`1`
#[1] 0.3333333 0.6666667
#
#\$`2`
#[1] 0.4285714 0.5714286
#
#\$`3`
#[1] 0.4545455 0.5454545
#
unlist(tapply(dat, lev, function(x){x/sum(x)}))
#       11        12        21        22        31        32
#0.3333333 0.6666667 0.4285714 0.5714286 0.4545455 0.5454545
``````
-

Three other approaches as well:

``````dat <- 1:6
lev <- rep(1:3, each = 2)

lapply(split(dat, lev), function(x){x/sum(x)})
by(dat, lev, function(x){x/sum(x)})
aggregate(dat, list(lev), function(x){x/sum(x)})
``````
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