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I have two columns in a data frame, and I have been able to delete all duplicate rows with unique( ) - Works a treat.

But now I want to delete rows were the values are the same, irrespective of which column they are in. like...

data1    data2
data3    data2
data2    data1
data2    data3

Should be simplified to

data1    data2
data3    data2

since rows 3 and 4 are the same as 1 and 2.

Any ideas?

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2 Answers

up vote 3 down vote accepted

First sort each row column-wise (using apply and sort), then use unique:

dat <- read.table(text="
data1    data2
data3    data2
data2    data1
data2    data3")

unique(t(apply(dat, 1, sort)))
     [,1]    [,2]   
[1,] "data1" "data2"
[2,] "data2" "data3"
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+1 @Andrie for clean use of apply. Interestingly my compiled function takes about 439 micro seconds and the apply takes 515 micro seconds for the small example table with 4 rows. However for the 4,000 row table it is the other way around at 3.45ms vs 2.92ms. Overall less difference than I'd expected. –  Sean Jun 16 '12 at 12:54
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I'd create a new column with the sorted columns you have pasted together, and then unique() that.

# create some dummy data
adf <- data.frame(colA=c('data1', 'data3', 'data2', 'data2'),
       colB=c('data2', 'data2', 'data1', 'data3'), stringsAsFactors=FALSE)

# function to fix up this data...
# can't see a way of avoiding the loop at the moment, but I'm sure somebody will!
fixit <- function(adf) {
  nc <- vector(mode='character', length=nrow(adf))
  for (i in 1:nrow(adf)) {
    nc[i] <- paste(sort(c(adf[i,1], adf[i,2])), collapse='')
  } 
  adf[!duplicated(nc),]
} 
fixit(adf)

Having the loop will be slow on a big data.frame, but it can be sped up by using

library(compiler)
faster.fixit <- cmpfun(fixit)
faster.fixit(adf)

I know this is slightly off topic, but interestingly when I benchmark this looped function, the byte-compiled version is only about 5% faster

# create a bigger test data.frame
N <- 10
adf.bigger <- data.frame(colA=rep(adf$colA, N), colB=rep(adf$colB, N),
               stringsAsFactors=FALSE)

N <- 1000
adf.biggest <- data.frame(colA=rep(adf$colA, N), colB=rep(adf$colB, N),
               stringsAsFactors=FALSE)

library(microbenchmark)
microbenchmark(fixit(adf), faster.fixit(adf), times=1000L)
microbenchmark(fixit(adf.bigger), faster.fixit(adf.bigger), times=1000L)
microbenchmark(fixit(adf.biggest), faster.fixit(adf.biggest), times=100L)
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1  
What is comfun? Should that be cmpfun? –  GSee Jun 16 '12 at 20:50
    
@GSee you are absolutely correct - edit made –  Sean Jun 16 '12 at 21:58
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