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if xmpl is a list where each element has an integer age and a list data, where data contains three matrices of equal size, a to c

What is the best way to do

cor( xmpl[[:]]$data[[:]][c('a','b','c')],  xmpl[[:]]$age)

where the results would be 3 x length(a) array or list that reflects age correlated with each instance of each element of a (row 1), b (row 2), and c (row 3) across xmpl.

I am reading in matrices that represent the output of different pipelines. There are 3 of these per subject and a whole lot of subjects. Currently, I've built a list of subjects that has among other things a list of pipeline matrices.

The structure looks like:

 $ :List of 4
  ..$ id       : int 5
  ..$ age      : num 10
  ..$ data     :List of 3
  .. ..$ a: num [1:10, 1:10] 0.782 1.113 3.988 0.253 4.118 ...
  .. ..$ b: num [1:10, 1:10] 5.25 5.31 5.28 5.43 5.13 ...
  .. ..$ c: num [1:10, 1:10] 1.19e-05 5.64e-03 7.65e-01 1.65e-03 4.50e-01 ...
  ..$ otherdata: chr "ignorefornow"

I want to correlate every element of a across all subjects with the age of subjects. Then do the same for b and c and put the results into a list.

I think I am approaching this in a way that is awkward for R. I'm interested in what the "R way" of storing and retrieving this data would be.

Data Structure and desired output


## example structure
xmpl.mat  <- function(){ matrix(runif(100),nrow=10) }
xmpl.list <- function(x){ list(  id=x, age=2*x, data=list(  a=x*xmpl.mat(), b=x+xmpl.mat(), c=xmpl.mat()^x   ), otherdata='ignorefornow' ) }
xmpl      <- lapply( 1:5, xmpl.list )

## extract
ages <- laply(xmpl,'[[','age')
data <- llply(xmpl,'[[','data')

# to get the cor for one set of matrices is easy enough
# though it would be nice to do: a <- xmpl[[:]]$data$a
x.a      <- sapply(data,'[[','a')
x.a.corr <- apply(x.a,1,cor,ages)

# ...

#xmpl.corr   <- list(x.a.corr,x.b.corr,x.c.corr)

# and by loop, not R like?
for (i in 1:length(names(data[[1]])) ){
  x <- sapply(data,'[[',i)
  xmpl.corr[[i]] <- apply(x,1,cor,ages)
names(xmpl.corr) <- names(data[[1]])

Final output:

List of 3
 $ a: num [1:100] 0.712 -0.296 0.739 0.8 0.77 ...
 $ b: num [1:100] 0.98 0.997 0.974 0.983 0.992 ...
 $ c: num [1:100] -0.914 -0.399 -0.844 -0.339 -0.571 ..
share|improve this question
can you elaborate on "across all subjects with the age of subjects" . Also, perhaps a dput(xmpl)? –  Ricardo Saporta Dec 20 '12 at 19:49
@RicardoSaporta The object xmpl could be created with the provided code. –  Sven Hohenstein Dec 20 '12 at 19:54
whoops! I missed the part towards the end, my mistake –  Ricardo Saporta Dec 20 '12 at 20:11

2 Answers 2

up vote 3 down vote accepted

Here's a solution. It should be short enough.

ages <- sapply(xmpl, "[[", "age")                      # extract ages
data <- sapply(xmpl, function(x) unlist(x[["data"]]))  # combine all matrices
corr <- apply(data, 1, cor, ages)                      # calculate correlations
xmpl.corr <- split(corr, substr(names(corr), 1, 1))    # split the vector
share|improve this answer
That's pretty cool. Is this a novel use of unlist+split, or is it something I should recognize as idiomatic R? –  Will Dec 20 '12 at 20:34
@Will For me your task seems quite special. So, the use of unlist in this context (transforming multiple matrices to one vector) appears to be unexpected. But the use of split here is idiomatic. –  Sven Hohenstein Dec 21 '12 at 7:41

Instead of x.a, x.b, x.c you would probably want to have all of these in one list.

# First, get a list of the items in data
      abc  <- names(xmpl[[1]]$data)    # incase variables change in future
names(abc) <- abc   # these are the same names that will be used for the final list. You can use whichever names make sense

## use lapply to keep as list, use sapply to "simplify" the list <- lapply(abc, function(z)
                  sapply(xmpl, function(xm) c(xm$data[[z]])) )

ages <- sapply(xmpl, `[[`, "age")

# Then compute the correlations.  Note that on each element of we are apply'ing per row
correlations <- lapply(, apply, 1, cor, ages)
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