# Marginal summaries of three-dimensional array

I'm working with a system that outputs data in "R dump" format. For example it might output a three-dimensional array looking like this:

``````obs <- structure(c(1,2,3,4,5,6,7,8,9,10,11,12,13,14,15,16,17,18,19,20,21,22,23,24),
.Dim=c(2,4,3))
``````

I'm new to R but I would like to use R to inspect marginal summaries of this data. For example, I'd like to see a 2x4 table of mean values averaged across that third dimension.

(If possible, I'd also like to see marginal summaries collapsed down to one dimension, e.g. a row of 4 mean values, each mean being taken over a 2x3 slice of my data.)

I tried `summary(obs)` which collapses all the dimensions and gives overall stats, and `sapply(obs, summary)` which doesn't collapse any of the dimensions, just giving a "summary" of each individual datum.

I expect there's a function for what I'm after but I can't find it!

-

`apply` works for this:

`````` apply(obs,1:2,mean)
[,1] [,2] [,3] [,4]
[1,]    9   11   13   15
[2,]   10   12   14   16
``````

or

``````aperm(apply(obs,1:2,summary),c(1,3,2))
``````

(or `apply(obs,2:1,summary)` as pointed out in comments)

with results:

``````        [,1] [,2] [,3] [,4]
Min.       1    3    5    7
1st Qu.    5    7    9   11
Median     9   11   13   15
Mean       9   11   13   15
3rd Qu.   13   15   17   19
Max.      17   19   21   23

, , 2

[,1] [,2] [,3] [,4]
Min.       2    4    6    8
1st Qu.    6    8   10   12
Median    10   12   14   16
Mean      10   12   14   16
3rd Qu.   14   16   18   20
Max.      18   20   22   24
``````

As requested you can get other marginal summaries

``````apply(obs,2,mean)
## [1]  9.5 11.5 13.5 15.5
``````

(double-check: `mean(obs[,1,])` is indeed 9.5 ...)

-
+1. `apply(obs,2:1,summary)` does the same thing as your `aperm`ed example, I think. Also, small typo there, with the `, , 1` – Frank Sep 22 '13 at 20:38

While digging in the R toolbox, you may also wish to check the `plyr` tool: `a*ply`. The function takes an `array` as input, and it is easy to control in which form the result is returned: array, data frame or list.

To make it a little bit easier to keep track of the dimensions when we play around with your example array, I added some arbitrary dimension names. The first dimension (rows) = species; second (columns) = time; third (separate 'tables') = site

``````obs <- array(c(1:24),
dim = c(2, 4, 3),
dimnames = list(species = c("cat", "dog"),
time = 1:4,
site = letters[1:3]))

library(plyr)
# result as (2-d) array: aaply
# i.e. same output as @Ben Bolker's `apply` example
# keep the first two dimensions (species, time), collapse the third (site)
aaply(obs, 1:2, mean)

#         time
# species  1  2  3  4
#     cat  9 11 13 15
#     dog 10 12 14 16

# result as data frame: adply

#   species time V1
# 1     cat    1  9
# 2     dog    1 10
# 3     cat    2 11
# 4     dog    2 12
# 5     cat    3 13
# 6     dog    3 14
# 7     cat    4 15
# 8     dog    4 16

# several functions
adply(obs, 1:2, each(min, mean, max))
#   species time min mean max
# 1     cat    1   1    9  17
# 2     dog    1   2   10  18
# 3     cat    2   3   11  19
# 4     dog    2   4   12  20
# 5     cat    3   5   13  21
# 6     dog    3   6   14  22
# 7     cat    4   7   15  23
# 8     dog    4   8   16  24

# apparently the `each` thing can be used on just one function as well,
# then the function name appears as column name instead of 'V1' as above.
#   species time mean
# 1     cat    1    9
# 2     dog    1   10
# 3     cat    2   11
# 4     dog    2   12
# 5     cat    3   13
# 6     dog    3   14
# 7     cat    4   15
# 8     dog    4   16

# one-dimensional summary
I don't think so, but you could `match("species",dimnames(x))` (admittedly slightly clunky) – Ben Bolker Sep 22 '13 at 22:00
@Frank, I think Ben is right. About the `.margins` argument in `?adply`: a vector giving the subscripts to split up data by. 1 splits up by rows, 2 by columns and c(1,2) by rows and columns, and so on for higher dimensions. Thanks Ben for the `match` solution! – Henrik Sep 22 '13 at 22:03
oops, actually I think that should be `match("species",names(dimnames(x)))` – Ben Bolker Sep 22 '13 at 22:24