I have a correlation matrix between 2 sets of variables. I want to find the variable B that has the max correlation with each of the As
> B = data.frame('B1' = c(3,3,5), 'B2' = c(2,7,8)) > A = data.frame('A1' = c(1,2,3), 'A2' = c(4,2,6)) > corr_matrix = cor(A,B) > corr_matrix B1 B2 A1 0.8660254 0.9332565 A2 0.8660254 0.1555428
> temp = apply(corr_matrix,1,which.max) > temp A1 A2 2 1 > names(B)[temp]  "B2" "B1"
And get a nice vector of what I need. Heres the catch. If my matrix looks like this
corr_matrix B1 B2 B3 A1 NA NA NA A2 0.3986434 NA 0.2807630 A3 -0.3568664 NA 0.6037172 A4 0.1974342 NA 0.6827092 apply(corr_matrix,1,which.max) $A1 integer(0) $A2 B1 1 $A3 B3 3 $A4 B3 3
I get an odd nested structure which I don't particularly understand. Can someone please explain what this structure is and why it comes out differently from the example above?
I mean I would be happy if it spat out
A1 A2 A3 A4 NA 1 3 3
Last of all, I can see the answer I want (NA,B1,B3,B3) but how do I get it out in a vector form?
I see many NA + apply threads but none of them seem to work for my purpose so I apologize if this is a duplicate of something that I am not aware of.