# Calculate correlation by aggregating columns of data frame

I have the following data frame:

``````y <- data.frame(group = letters[1:5], a = rnorm(5) , b = rnorm(5), c = rnorm(5), d = rnorm(5) )
``````

How to get a data frame which gives me the correlation between columns a,b and c,d for each row?

something like: `sapply(y, function(x) {cor(x[2:3],x[4:5])})`

Thank you, S

-

You could use `apply`

``````> apply(y[,-1],1,function(x) cor(x[1:2],x[3:4]))
[1] -1 -1  1 -1 1
``````

Or `ddply` (although this might be overkill, and if two rows have the same `group` it will do the correlation of columns a&b and c&d for both those rows):

``````> ddply(y,.(group),function(x) cor(c(x\$a,x\$b),c(x\$c,x\$d)))
group V1
1     a -1
2     b -1
3     c  1
4     d -1
5     e  1
``````
-

You can use `apply` to apply a function to each row (or column) of a matrix, array or data.frame.

``````apply(
y[,-1], # Remove the first column, to ensure that u remains numeric
1,      # Apply the function on each row
function(u) cor( u[1:2], u[3:4] )
)
``````

(With just 2 observations, the correlation can only be +1 or -1.)

-

You're almost there: you just need to use `apply` instead of `sapply`, and remove unnecessary columns.

``````apply(y[-1], 1, function(x) cor(x[1:2], x[3:4])
``````

Of course, the correlation between two length-2 vectors isn't very informative....

-