Delete rows with repeated values in different columns

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?

-

2 Answers

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"
``````
-
+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

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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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