# Show correlations as an ordered list, not as a large matrix

I've a data frame with 100+ columns. cor() returns remarkably quickly, but tells me far too much, especially as most columns are not correlated. I'd like it to just tell me column pairs and their correlation, ideally ordered.

In case that doesn't make sense here is an artificial example:

df = data.frame(a=1:10,b=20:11*20:11,c=runif(10),d=runif(10),e=runif(10)*1:10)
z = cor(df)


z looks like this:

           a          b           c           d          e
a  1.0000000 -0.9966867 -0.38925240 -0.35142452  0.2594220
b -0.9966867  1.0000000  0.40266637  0.35896626 -0.2859906
c -0.3892524  0.4026664  1.00000000  0.03958307  0.1781210
d -0.3514245  0.3589663  0.03958307  1.00000000 -0.3901608
e  0.2594220 -0.2859906  0.17812098 -0.39016080  1.0000000


What I'm looking for is a function that will instead tell me:

a:b -0.9966867
b:c  0.4026664
d:e -0.39016080
a:c -0.3892524
b:d  0.3589663
a:d -0.3514245
b:e -0.2859906
a:e  0.2594220
c:e  0.17812098
c:d  0.03958307


I have a crude way to get rid of some of the noise:

z[abs(z)<0.5]=0


then scan looking for non-zero values. But it is far inferior to the desired output above.

UPDATE: Based on the answers received, and some trial and error, here is the solution I went with:

z[lower.tri(z,diag=TRUE)]=NA  #Prepare to drop duplicates and meaningless information
z=as.data.frame(as.table(z))  #Turn into a 3-column table
z=na.omit(z)  #Get rid of the junk we flagged above
z=z[order(-abs(z$Freq)),] #Sort by highest correlation (whether +ve or -ve)  • @Aaron Yes, it is exactly the same question. My apologies! (I did skim the Related Questions list, but completely missed that one.) But it is educational (to me at least) to note the similarities and differences in the answers. – Darren Cook Aug 17 '11 at 5:32 ## 5 Answers I always use zdf <- as.data.frame(as.table(z)) zdf # Var1 Var2 Freq # 1 a a 1.00000 # 2 b a -0.99669 # 3 c a -0.14063 # 4 d a -0.28061 # 5 e a 0.80519  Then use subset(zdf, abs(Freq) > 0.5) to select significant values. • Thanks. It still includes the diagonal, includes each correlation twice, and isn't sorted, but I used it as the starting point for the solution I went with. – Darren Cook Aug 17 '11 at 5:39 library(reshape) z[z == 1] <- NA #drop perfect z[abs(z) < 0.5] <- NA # drop less than abs(0.5) z <- na.omit(melt(z)) # melt! z[order(-abs(z$value)),] # sort

• Brilliant! melt rarely jumps out at me to be used. – nzcoops Aug 16 '11 at 6:41
• Thanks. z[z==1] <- NA is dangerous as it also removes genuine perfect correlations (better to use z[lower.tri(z,diag=TRUE)]=NA). BTW, in this case melt(z) does exactly (?) the same as as.data.frame(as.table(z)), so it can be done without other packages. – Darren Cook Aug 17 '11 at 5:42

Building off of @Marek's answer. Eliminates diagonal and duplicates

data = as.data.frame( as.table( z ) )
combinations = combn( colnames( z ) , 2 , FUN = function( x ) { paste( x , collapse = "_" ) } )
data = data[ data$Var1 != data$Var2 , ]
data = data[ paste( data$Var1 , data$Var2 , sep = "_" ) %in% combinations , ]


There are several ways to visualize correlation matrices so that one can get a quick picture of the data set. Here is a link to an approach which looks pretty good.

• Thanks for the idea. Of course, with 100+ columns it gets a bit impractical (except perhaps if my columns were clustered in some meaningful way). – Darren Cook Aug 17 '11 at 5:36

Starting from the answer by Marek, I added a few lines for common cleaning using Tidyverse pipes:

  df_cor %>%                               # start from the correlation matrix
as.table() %>% as.data.frame() %>%       # Marek's answer in TidyVerse format
subset(Var1 != Var2 & abs(Freq)>0.5) %>% # omit diagonal and keep significant correlations (optional...)
filter(!duplicated(paste0(pmax(as.character(Var1), as.character(Var2)), pmin(as.character(Var1), as.character(Var2))))) %>%
# keep only unique occurrences, as.character because Var1 and Var2 are factors
arrange(desc(Freq))                      # sort by Freq


More on line 4 here: How do I select all unique combinations of two columns in an R data frame?