30

I have a huge dataframe 5600 X 6592 and I want to remove any variables that are correlated to each other more than 0.99 I do know how to do this the long way, step by step i.e. forming a correlation matrix, rounding the values, removing similar ones and use the indexing to get my "reduced" data again.

cor(mydata)
mydata <- round(mydata,2)
mydata <- mydata[,!duplicated (mydata)]
## then do the indexing...

I would like to know if this could be done in short command, or some advanced function. I'm learning how to make use of the powerful tools in the R language, which avoids such long unnecessary commands

I was thinking of something like

mydata <- mydata[, which(apply(mydata, 2, function(x) !duplicated(round(cor(x),2))))]

Sorry I know the above command doesn't work, but I hope I would be able to do this.

a play-data that applies to the question:

mydata <- structure(list(V1 = c(1L, 2L, 5L, 4L, 366L, 65L, 43L, 456L, 876L, 
78L, 687L, 378L, 378L, 34L, 53L, 43L), V2 = c(2L, 2L, 5L, 4L, 
366L, 65L, 43L, 456L, 876L, 78L, 687L, 378L, 378L, 34L, 53L, 
41L), V3 = c(10L, 20L, 10L, 20L, 10L, 20L, 1L, 0L, 1L, 2010L, 
20L, 10L, 10L, 10L, 10L, 10L), V4 = c(2L, 10L, 31L, 2L, 2L, 5L, 
2L, 5L, 1L, 52L, 1L, 2L, 52L, 6L, 2L, 1L), V5 = c(4L, 10L, 31L, 
2L, 2L, 5L, 2L, 5L, 1L, 52L, 1L, 2L, 52L, 6L, 2L, 3L)), .Names = c("V1", 
"V2", "V3", "V4", "V5"), class = "data.frame", row.names = c(NA, 
-16L))

Many thanks

42

I'm sure there are many ways to do this and certainly some better than this, but this should work. I basically just set the upper triangle to be zero and then remove any rows that have values over 0.99.

> tmp <- cor(data)
> tmp[upper.tri(tmp)] <- 0
> diag(tmp) <- 0
# Above two commands can be replaced with 
# tmp[!lower.tri(tmp)] <- 0
#
> 
> data.new <- data[,!apply(tmp,2,function(x) any(x > 0.99))]
> head(data.new)
   V2 V3 V5
1   2 10  4
2   2 20 10
3   5 10 31
4   4 20  2
5 366 10  2
6  65 20  5
  • Thanks David, it does the Job, although I don't know what the upper triangle is! I found the R help page but I cannot really understand what it does! :) – Error404 Aug 16 '13 at 14:38
  • @Error404 upper.tri just fills that part of a matrix with "TRUE" (and the rest is zero aka FALSE) , so tmp[upper.tri(tmp)] selects only the upper triangle portion of tmp . – Carl Witthoft Aug 16 '13 at 14:51
  • 11
    Might be clearer if you do data[, apply(tmp,2,function(x) all(x<=0.99))] Don't use no double negatives :-) – Carl Witthoft Aug 16 '13 at 14:52
  • Interesting simplification of the command :) I'll play around with the upper triangle. Thanks buddy – Error404 Aug 16 '13 at 14:59
  • 2
    Hi can anyone help when i use norm.num[, apply(tmp,2,function(x) any(x > 0.99))] on my data set, i get error message saying Error in [.data.frame(norm.num, , !apply(tmp, 2, function(x) any(abs(x) > : undefined columns selected – alily Sep 22 '16 at 8:50
31

This is my R code this would be helpfull for you

library('caret')

df1 = read.csv("stack.csv")

print (df1)

     GA     PN     PC   MBP    GR    AP
1 0.033  6.652  6.681 0.194 0.874 3.177
2 0.034  9.039  6.224 0.194 1.137 3.400
3 0.035 10.936 10.304 1.015 0.911 4.900
4 0.022 10.110  9.603 1.374 0.848 4.566
5 0.035  2.963 17.156 0.599 0.823 9.406
6 0.033 10.872 10.244 1.015 0.574 4.871
7 0.035 21.694 22.389 1.015 0.859 9.259
8 0.035 10.936 10.304 1.015 0.911 4.500


df2 = cor(df1)
hc = findCorrelation(df2, cutoff=0.3) # putt any value as a "cutoff" 
hc = sort(hc)
reduced_Data = df1[,-c(hc)]
print (reduced_Data)

     GA     PN    GR    AP
1 0.033  6.652 0.874 3.177
2 0.034  9.039 1.137 3.400
3 0.035 10.936 0.911 4.900
4 0.022 10.110 0.848 4.566
5 0.035  2.963 0.823 9.406
6 0.033 10.872 0.574 4.871
7 0.035 21.694 0.859 9.259
8 0.035 10.936 0.911 4.500

and to write down a reduced data into new csv just use:

write.csv(reduced_Data, file = "outfile.csv", row.names = FALSE)
  • where have you defined findCorrelation? – Ankit Dhingra Nov 3 '15 at 16:38
  • 2
    @AnkitDhingra - findCorrelation is a function built into the caret package that jax loaded on his first line. – n1k31t4 Dec 14 '15 at 21:28
  • @JAX, you're a genious! Thanks – loki May 19 '17 at 9:34
14

@David A small change in your code make it more robust to negative correlation , by providing

abs(x) > 0.99 

instead of only

x > 0.99

data.new <- data[,!apply(tmp,2,function(x) any(abs(x) > 0.99))]

cheers..!!!

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