# quick/elegant way to construct mean/variance summary table

I can achieve this task, but I feel like there must be a "best" (slickest, most compact, clearest-code, fastest?) way of doing it and have not figured it out so far ...

For a specified set of categorical factors I want to construct a table of means and variances by group.

generate data:

``````set.seed(1001)
d <- expand.grid(f1=LETTERS[1:3],f2=letters[1:3],
f3=factor(as.character(as.roman(1:3))),rep=1:4)
d\$y <- runif(nrow(d))
d\$z <- rnorm(nrow(d))
``````

desired output:

``````  f1 f2  f3    y.mean      y.var
1  A  a   I 0.6502307 0.09537958
2  A  a  II 0.4876630 0.11079670
3  A  a III 0.3102926 0.20280568
4  A  b   I 0.3914084 0.05869310
5  A  b  II 0.5257355 0.21863126
6  A  b III 0.3356860 0.07943314
... etc. ...
``````

using `aggregate`/`merge`:

``````library(reshape)
m1 <- aggregate(y~f1*f2*f3,data=d,FUN=mean)
m2 <- aggregate(y~f1*f2*f3,data=d,FUN=var)
mvtab <- merge(rename(m1,c(y="y.mean")),
rename(m2,c(y="y.var")))
``````

using `ddply`/`summarise` (possibly best but haven't been able to make it work):

``````mvtab2 <- ddply(subset(d,select=-c(z,rep)),
.(f1,f2,f3),
summarise,numcolwise(mean),numcolwise(var))
``````

results in

``````Error in output[[var]][rng] <- df[[var]] :
incompatible types (from closure to logical) in subassignment type fix
``````

using `melt`/`cast` (maybe best?)

``````mvtab3 <- cast(melt(subset(d,select=-c(z,rep)),
id.vars=1:3),
...~.,fun.aggregate=c(mean,var))
## now have to drop "variable"
mvtab3 <- subset(mvtab3,select=-variable)
## also should rename response variables
``````

Won't (?) work in `reshape2`. Explaining `...~.` to someone could be tricky!

I'm a bit puzzled. Does this not work:

``````mvtab2 <- ddply(d,.(f1,f2,f3),
summarise,y.mean = mean(y),y.var = var(y))
``````

This give me something like this:

``````   f1 f2  f3    y.mean       y.var
1   A  a   I 0.6502307 0.095379578
2   A  a  II 0.4876630 0.110796695
3   A  a III 0.3102926 0.202805677
4   A  b   I 0.3914084 0.058693103
5   A  b  II 0.5257355 0.218631264
``````

Which is in the right form, but it looks like the values are different that what you specified.

Edit

Here's how to make your version with `numcolwise` work:

``````mvtab2 <- ddply(subset(d,select=-c(z,rep)),.(f1,f2,f3),summarise,
y.mean = numcolwise(mean)(piece),
y.var = numcolwise(var)(piece))
``````

You forgot to pass the actual data to `numcolwise`. And then there's the little `ddply` trick that each piece is called `piece` internally. (Which Hadley points out in the comments shouldn't be relied upon as it may change in future versions of `plyr`.)

• the values problem is because I didn't really do `set.seed` where I claimed -- added it later on (oops, fixed now, so your comment about "different" no longer make sense -- sorry). This looks like it works. I need to figure out what's up with `numcolwise` -- I thought it would automatically handle the fact that there was only one numeric variable left in the data frame but maybe I'm confused about that. – Ben Bolker Sep 16 '11 at 19:13
• a tough call on which to accept, but this was the first answer, and I like the elegance (no anonymous functions to define), even if it is slower. – Ben Bolker Sep 16 '11 at 21:00
• You should not by relying on the use of any internal variables - that will break when I finally figure out how to fix scoping in plyr – hadley Sep 17 '11 at 14:27
• @hadley Bummer! I actually thought that little trick was kind of handy in a lot of cases. – joran Sep 17 '11 at 14:47
• If you find yourself doing that it's probably a sign you shouldn't be using summarise. I do need to think more about pronouns though. – hadley Sep 17 '11 at 19:30

Here is a solution using `data.table`

``````library(data.table)
d2 = data.table(d)
ans = d2[,list(avg_y = mean(y), var_y = var(y)), 'f1, f2, f3']
``````

(I voted for Joshua's.) Here's an Hmisc::summary.formula solution. The advantage of this for me is that it is well integrated with the Hmisc::latex output "channel".

``````summary(y ~ interaction(f3,f2,f1), data=d, method="response",
fun=function(y) c(mean.y=mean(y) ,var.y=var(y) ))
#-----output----------
y    N=108

+-----------------------+-------+---+---------+-----------+
|                       |       |N  |mean.y   |var.y      |
+-----------------------+-------+---+---------+-----------+
|interaction(f3, f2, f1)|I.a.A  |  4|0.6502307|0.095379578|
|                       |II.a.A |  4|0.4876630|0.110796695|
``````

snipped output to show the latex -> PDF -> png output: @joran is spot-on with the `ddply` answer. Here's how I would do it with `aggregate`. Note that I avoid the formula interface (it is slower).

``````aggregate(d\$y, d[,c("f1","f2","f3")], FUN=function(x) c(mean=mean(x),var=var(x)))
``````

I'm slightly addicted to speed comparisons even though they're largely irrelevant for me in this situation ...

``````joran_ddply <- function(d) ddply(d,.(f1,f2,f3),
summarise,y.mean = mean(y),y.var = var(y))
joshulrich_aggregate <- function(d) {
aggregate(d\$y, d[,c("f1","f2","f3")],
FUN=function(x) c(mean=mean(x),var=var(x)))
}

formula_aggregate <- function(d) {
aggregate(y~f1*f2*f3,data=d,
FUN=function(x) c(mean=mean(x),var=var(x)))
}
library(data.table)
d2 <- data.table(d)
ramnath_datatable <- function(d) {
d[,list(avg_y = mean(y), var_y = var(y)), 'f1, f2, f3']
}

library(Hmisc)
dwin_hmisc <- function(d) {summary(y ~ interaction(f3,f2,f1),
data=d, method="response",
fun=function(y) c(mean.y=mean(y) ,var.y=var(y) ))
}

library(rbenchmark)
benchmark(joran_ddply(d),
joshulrich_aggregate(d),
ramnath_datatable(d2),
formula_aggregate(d),
dwin_hmisc(d))
``````

`aggregate` is fastest (even faster than `data.table`, which is a surprise to me, although things might be different with a bigger table to aggregate), even using the formula interface ...)

``````                     test replications elapsed relative user.self sys.self
5           dwin_hmisc(d)          100   1.235 2.125645     1.168    0.044
4    formula_aggregate(d)          100   0.703 1.209983     0.656    0.036
1          joran_ddply(d)          100   3.345 5.757315     3.152    0.144
2 joshulrich_aggregate(d)          100   0.581 1.000000     0.596    0.000
3   ramnath_datatable(d2)          100   0.750 1.290878     0.708    0.000
``````

(Now I just need Dirk to step up and post an `Rcpp` solution that is 1000 times faster than anything else ...)

• I checked on bigger tables with 2700 rows and found that `data.table` trumps the `aggregate` based solution by 1.5x. – Ramnath Sep 16 '11 at 21:51
• @Ramnath If the tables are bigger, the improvement on your solution is 21x faster joshua's aggregate. – marbel Jan 16 '14 at 14:38
• Not surprising, given how much `data.table` has been optimized. Full credit to Matt Dowle and Arun :) – Ramnath Jan 16 '14 at 17:04

I find the doBy package has some very convenient functions for things like this. For example, the function ?summaryBy is quite handy. Consider:

``````> summaryBy(y~f1+f2+f3, data=d, FUN=c(mean, var))
f1 f2  f3    y.mean       y.var
1   A  a   I 0.6502307 0.095379578
2   A  a  II 0.4876630 0.110796695
3   A  a III 0.3102926 0.202805677
4   A  b   I 0.3914084 0.058693103
5   A  b  II 0.5257355 0.218631264
6   A  b III 0.3356860 0.079433136
7   A  c   I 0.3367841 0.079487973
8   A  c  II 0.6273320 0.041373836
9   A  c III 0.4532720 0.022779672
10  B  a   I 0.6688221 0.044184575
11  B  a  II 0.5514724 0.020359289
12  B  a III 0.6389354 0.104056229
13  B  b   I 0.5052346 0.138379070
14  B  b  II 0.3933283 0.050261804
15  B  b III 0.5953874 0.161943989
16  B  c   I 0.3490460 0.079286849
17  B  c  II 0.5534569 0.207381592
18  B  c III 0.4652424 0.187463143
19  C  a   I 0.3340988 0.004994589
20  C  a  II 0.3970315 0.126967554
21  C  a III 0.3580250 0.066769484
22  C  b   I 0.7676858 0.124945402
23  C  b  II 0.3613772 0.182689385
24  C  b III 0.4175562 0.095933470
25  C  c   I 0.3592491 0.039832864
26  C  c  II 0.7882591 0.084271963
27  C  c III 0.3936949 0.085758343
``````

So the function call is simple, easy to use, and I would say, elegant.

Now, if your primary concern is speed, it seems that it would be reasonable--at least with smaller sized tasks (note that I couldn't get the `ramnath_datatable` function to work for whatever reason):

``````                     test replications elapsed relative user.self
4           dwin_hmisc(d)          100    0.50    2.778      0.50
3    formula_aggregate(d)          100    0.23    1.278      0.24
5       gung_summaryBy(d)          100    0.34    1.889      0.35
1          joran_ddply(d)          100    1.34    7.444      1.32
2 joshulrich_aggregate(d)          100    0.18    1.000      0.19
``````

I've came accross with this question and found the benchmarks are done with small tables, so it's hard to tell which method is better with 100 rows.

I've also modified the data a bit also to make it "unsorted", this would be a more common case, for example as the data is in a DB. I've added a few more data.table trials to see if setting a key is faster beforehand. It seems here, setting the key beforehand doesn't improve much the performance, so ramnath solution seems to be the fastest.

``````set.seed(1001)
d <- data.frame(f1 = sample(LETTERS[1:3], 30e5, replace = T), f2 = sample(letters[1:3], 30e5, replace = T),
f3 = sample(factor(as.character(as.roman(1:3))), 30e5, replace = T), rep = sample(1:4, replace = T))

d\$y <- runif(nrow(d))
d\$z <- rnorm(nrow(d))

str(d)

require(Hmisc)
require(plyr)
require(data.table)
d2 = data.table(d)
d3 = data.table(d)

# Set key of d3 to compare how fast it is if the DT is already keyded
setkey(d3,f1,f2,f3)

joran_ddply <- function(d) ddply(d,.(f1,f2,f3),
summarise,y.mean = mean(y),y.var = var(y))

formula_aggregate <- function(d) {
aggregate(y~f1*f2*f3,data=d,
FUN=function(x) c(mean=mean(x),var=var(x)))
}

ramnath_datatable <- function(d) {
d[,list(avg_y = mean(y), var_y = var(y)), 'f1,f2,f3']
}

key_agg_datatable <- function(d) {
setkey(d2,f1,f2,f3)
d[,list(avg_y = mean(y), var_y = var(y)), 'f1,f2,f3']
}

one_key_datatable <- function(d) {
setkey(d2,f1)
d[,list(avg_y = mean(y), var_y = var(y)), 'f1,f2,f3']
}

including_3key_datatable <- function(d) {
d[,list(avg_y = mean(y), var_y = var(y)), 'f1,f2,f3']
}

dwin_hmisc <- function(d) {summary(y ~ interaction(f3,f2,f1),
data=d, method="response",
fun=function(y) c(mean.y=mean(y) ,var.y=var(y) ))
}

require(rbenchmark)
benchmark(joran_ddply(d),
joshulrich_aggregate(d),
ramnath_datatable(d2),
including_3key_datatable(d3),
one_key_datatable(d2),
key_agg_datatable(d2),
formula_aggregate(d),
dwin_hmisc(d)
)

#                         test replications elapsed relative user.self sys.self
#                dwin_hmisc(d)          100 1757.28  252.121   1590.89   165.65
#         formula_aggregate(d)          100  433.56   62.204    390.83    42.50
# including_3key_datatable(d3)          100    7.00    1.004      6.02     0.98
#               joran_ddply(d)          100  173.39   24.877    119.35    53.95
#      joshulrich_aggregate(d)          100  328.51   47.132    307.14    21.22
#        key_agg_datatable(d2)          100   24.62    3.532     19.13     5.50
#        one_key_datatable(d2)          100   29.66    4.255     22.28     7.34
#        ramnath_datatable(d2)          100    6.97    1.000      5.96     1.01
``````

And here is a solution using Hadley Wickham's new `dplyr` library.

``````library(dplyr)
d %>% group_by(f1, f2, f3) %>%
summarise(y.mean = mean(y), z.mean = mean(z))
``````