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I have a large data.frame of character data that I want to convert based on what is commonly called a dictionary in other languages. Currently I am going about it like so:

foo <- data.frame(snp1 = c("AA", "AG", "AA", "AA"), snp2 = c("AA", "AT", "AG", "AA"), snp3 = c(NA, "GG", "GG", "GC"), stringsAsFactors=FALSE)
foo <- replace(foo, foo == "AA", "0101")
foo <- replace(foo, foo == "AC", "0102")
foo <- replace(foo, foo == "AG", "0103")

This works fine, but it is obviously not pretty and seems silly to repeat the replace statement each time I want to replace one item in the data.frame. Is there a better way to do this since I have a dictionary of approximately 25 key/value pairs?

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Is your dictionary an R list? –  Mark Sep 25 '11 at 18:39
Not currently, but it would easy to make it into one. –  Stedy Sep 25 '11 at 18:41
Maybe this questions could be helpful: Case Statement Equivalent, How to add a column in a data.frame, Data cleaning in Excel sheets. –  Marek Sep 26 '11 at 21:44
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3 Answers 3

up vote 8 down vote accepted
map = setNames(c("0101", "0102", "0103"), c("AA", "AC", "AG"))
foo[] <- map[unlist(foo)]

assuming that map covers all the cases in foo. This would feel less like a 'hack' and be more efficient in both space and time if foo were a matrix (of character()), then

matrix(map[foo], nrow=nrow(foo), dimnames=dimnames(foo))

Both matrix and data frame variants run afoul of R's 2^31-1 limit on vector size when there are millions of SNPs and thousands of samples.

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very elegant solution !! –  Ramnath Sep 26 '11 at 2:39
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Here is a quick solution

dict = list(AA = '0101', AC = '0102', AG = '0103')
foo2 = foo
for (i in 1:3){foo2 <- replace(foo2, foo2 == names(dict[i]), dict[i])}
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can anyone explain the silent downvote??? –  Ramnath Sep 26 '11 at 2:36
I like this answer because it keeps the keys and values together. Having the keys and values in separate character vectors means that if you get the order of one of the vectors wrong, your dictionary silently mislabels all incorrectly ordered entries. –  mgriebe May 22 at 18:32
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Here's something simple that will do the job:

key <- c('AA','AC','AG')
val <- c('0101','0102','0103')

lapply(1:3,FUN = function(i){foo[foo == key[i]] <<- val[i]})

 snp1 snp2 snp3
1 0101 0101 <NA>
2 0103   AT   GG
3 0101 0103   GG
4 0101 0101   GC

lapply will output a list in this case that we don't actually care about. You could assign the result to something if you like and then just discard it. I'm iterating over the indices here, but you could just as easily place the key/vals in a list themselves and iterate over them directly. Note the use of global assignment with <<-.

I tinkered with a way to do this with mapply but my first attempt didn't work, so I switched. I suspect a solution with mapply is possible, though.

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i wouldn't advise the use of the global assignment operator <<-. –  Ramnath Sep 25 '11 at 18:59
@Ramnath Agreed, <<- can be risky, but it's not inherently bad. –  joran Sep 25 '11 at 19:02
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