# 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

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
``````
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