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I split a data frame into X and Y. X has one column, Y has about 100.

x <- subset(tbl, , select = ordernum)
y <- subset(tbl, select = -c(ordernum, paid1num, 
          weight, returnnum, order_only, multi_dep, sequence_id))

Next I correlate X with each column in Y which produces a frame with 100 columns and a single row.

corr <- cor(x,y)

Next I transpose,

corr.t <- t(corr)

and the (truncated) result looks like this:

                                   ordernum
HH_AFFORD_MOMS_BUY_GREEN      -0.0021281583
HH_AFFORD_SPORTS              -0.0047221159
HH_AFFORD_CLASSICAL_MUSIC     -0.0006594956
HH_AFFORD_HOME_DECOR           0.0052106766

I would like to split this single column, called ordernum, into 2 columns. A character field with the variable names, and a numeric with the correlations.

I appreciate any guidance. Perhaps if I use lm, instead of cor?

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closed as too localized by csgillespie, Justin, mnel, Sudarshan, CloudyMarble Feb 7 '13 at 5:49

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1 Answer 1

The output that you have stored as corr.t is a matrix, and the "variable names" you mention are the row names of the matrix, accessible using rownames().

To get your desired output, you can just do:

data.frame(id = rownames(corr.t), val = c(t(corr.t)))

A more general solution--applicable when your matrix is more than just one column--would be:

data.frame(ID = rownames(your-matrix), 
           as.data.frame(your-matrix, 
                         row.names = 1:nrow(your-matrix)))

The last line, row.names = 1:nrow(your-matrix), removes the row names from the output; they are no longer needed since they are now part of your data frame.


For what it's worth, you don't actually need to specifically transpose your data to get to the output you desire. Here's an example with one of the datasets available with R that demonstrates what you're trying to achieve:

(mycor <- cor(swiss[, 1], swiss[, 2:5]))
#      Agriculture Examination  Education  Catholic
# [1,]   0.3530792  -0.6458827 -0.6637889 0.4636847

# Now, make it into a data.frame
data.frame(id = colnames(mycor), val = as.vector(mycor))
#            id        val
# 1 Agriculture  0.3530792
# 2 Examination -0.6458827
# 3   Education -0.6637889
# 4    Catholic  0.4636847
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I'm tempted to edit this just to add a little more explanation than "just do"... –  Ananda Mahto Feb 6 '13 at 17:07
    
please feel free to edit! –  Arun Feb 6 '13 at 17:08
    
I think I overdid it. Maybe it's time I called it a night ;) –  Ananda Mahto Feb 6 '13 at 17:36
    
what the...!!?! yes, indeed! :P –  Arun Feb 6 '13 at 17:38
    
Thank you very much. You completely solved my problem, and have helped me learn some R. –  Malcolm Houtz Feb 7 '13 at 1:21

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