# loop: selection of variable for correlation function in r

Here is what I intend to do (for a fairly large number of variables and dataset):

``````mygroupdf <- data.frame (varname = c("A", "B", "c1", "D2",
"E", "F", "g1"), group = c(1, 1, 1, 2,3,3,4))

> mygroupdf
varname group
1       A     1
2       B     1
3      c1     1
4      D2     2
5       E     3
6       F     3
7      g1     4
``````

This dataframe only consists of information for grouping of variables:

``````group 1 = A, B, c1
group 2 = D2
group 3 = E, F
group 4 = g1
``````

Second dataset - contains actual data

``````set.seed(1234)
dataf <- data.frame (yvar = rnorm (10, 10,3),
A = sample(c(1,0), 10, T), B = sample(c(1,0), 10, T),
c1 = sample (c(1,0), 10, T), D2 = sample (c(1,0), 10, T),
E= sample (c(1,0), 10, T),F = sample (c(1,0), T),
g1 = sample (c(1,0), 10, T))

# manual workout:
xtemp <- dataf\$A* dataf\$B * dataf\$c1 # all from group 1
# I error in previous version it is * not +
# (is product of all members of a group i.e.
xtemp <- dataf\$D2 (- group 2)
xtemp <- dataf\$E * dataf\$F (- group 3)
xtemp <- dataf\$G (- group 4)
``````

Then correlation of the product with Yvar:

``````x <- cor(dataf\$yvar, xtemp)
``````

I want to wrap it to a function so that I can apply it to the 1000 groups of variables in my dataset.

``````   corrfun <- function (x, V1, V2, V3) {
xtemp <- V1 * V2  + V3
x <- cor(dataf\$yvar, xtemp)
return (x)
}
``````

As different groups have different variables, I am not sure how can I build such a function and apply to whole dataset. Help please !

Edits: process:

-
Not sure I follow when you say different groups have different variables. Since this is a `data.frame`,isn't the dim going to be the same? Are you talking about different variable names? – Maiasaura Aug 2 '12 at 21:25
@Maiasaura please see my recent edits, actually I had typo it is "*" not "+" while creating xtemp. – SHRram Aug 2 '12 at 21:36
There are two datasets. The problem is the while creating variable xtemp, there might be n number of variables. – SHRram Aug 2 '12 at 21:38
There are only two groups (0,1) right? Each group has the same set of variables (A,B,c1,D2,E,F), right? So why doesn't one function do it all? – Maiasaura Aug 2 '12 at 21:40
I give up. Can't follow your example at all. – Maiasaura Aug 2 '12 at 21:46

I'll wager a guess...

``````corrfun <- function (group.no, x=dataf, x.lookup=mygroupdf) {
xtemp <- apply(x[x.lookup\$varname[x.lookup\$group == group.no]], 1, prod)

out <- cor(x\$yvar, xtemp)

return (out)
}

>     corrfun(1)
[1] 0.35593
> corrfun(2)
[1] 0.4181311
>
``````
-
thanks for the answer and guess (indeed is right guess !!!), can we put in loop instead of typing group.no every time. – SHRram Aug 2 '12 at 22:17
you could or you can use `sapply(unique(mygroupdf\$group), corrfun)` – Justin Aug 2 '12 at 22:19
Your code will fail for one subtile error: with default settings, `mygroupdf\$varname` will be a factor, and subsetting a data.frame with a factor will use its numeric value, not its character interpretation. You'll get the correct output format, but wrong numbers. – MvG Aug 2 '12 at 22:52
@MvG Good point! I have `options(stringsAsFactors=FALSE)` in my `.Rprofile` so I forget about that stuff! – Justin Aug 2 '12 at 23:27

``````cbind(
group = unique(mygroupdf\$group),
corr =
do.call(
c,
lapply(
unique(mygroupdf\$group),
function(x) {
varnames <- unique(mygroupdf[mygroupdf\$group == x, 'varname'])
products <- apply(as.matrix(dataf[, colnames(dataf) %in% varnames]), 1, prod)
cor(products, dataf\$yvar)
}
)
)
)
``````

which gives

``````     group       corr
[1,]     1  0.3559300
[2,]     2  0.4181311
[3,]     3         NA
[4,]     4 -0.1015003
``````
-
``````sapply(unique(mygroupdf\$group), function(x) {
a <- as.character(mygroupdf\$varname[mygroupdf\$group == x])
cor(dataf\$yvar, apply(dataf[a],1,prod))
})
``````
1. unique: identify unique group numbers
2. sapply: to each of them apply the function
3. a <- …: let `a` be the corresponding variable names
4. dataf[a]: choose the approproate columns from the data frame
5. apply(…prod): compute product for each row
6. cor: correlate
7. sapply: combine results to a simple vector
-

And to create yet another answer using my current favorite library:

``````library(plyr)
ddply(mygroupdf, .(group), summarise,
cor=cor(dataf\$yvar, apply(dataf[as.character(varname)],1,prod)))
``````

This will generate the following result:

``````  group        cor
1     1  0.3559300
2     2  0.4181311
3     3         NA
4     4 -0.1015003
Warning message:
In cor(dataf\$yvar, apply(dataf[as.character(varname)], 1, prod)) :
the standard deviation is zero
``````
-