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I have a list of strings which contain random characters such as:

list[1] = "djud7+dg[a]hs667"
list[2] = "7fd*hac11(5)"
list[3] = "2tu,g7gka5"

I want to know which numbers are present at least once (unique()) in this list. The solution of my example is:

solution: c(7,667,11,5,2)

If someone has a method that does not consider 11 as "eleven" but as "one and one", it would also be useful. The solution in this condition would be:

solution: c(7,6,1,5,2)

(I found this post on a related subject: Extracting numbers from vectors (of strings))

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4 Answers 4

up vote 13 down vote accepted

For the second answer, you can use gsub to remove everything from the string that's not a number, then split the string as follows:

unique(as.numeric(unlist(strsplit(gsub("[^0-9]", "", unlist(ll)), ""))))
# [1] 7 6 1 5 2

For the first answer, similarly using strsplit,

unique(na.omit(as.numeric(unlist(strsplit(unlist(ll), "[^0-9]+")))))
# [1]   7 667  11   5   2

PS: don't name your variable list (as there's an inbuilt function list). I've named your data as ll.

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+1, but aside from leading to confusing code, from what I've read, it's not too common that you will actually run into problems if you've named an object after an inbuilt function. –  Ananda Mahto Jun 9 '13 at 14:36
I think this answer explains nicely what I had in mind. –  Arun Jun 9 '13 at 17:20

You could use ?strsplit (like suggested in @Arun's answer in Extracting numbers from vectors (of strings)):

l <- c("djud7+dg[a]hs667", "7fd*hac11(5)", "2tu,g7gka5")

## split string at non-digits
s <- strsplit(l, "[^[:digit:]]")

## convert strings to numeric ("" become NA)
solution <- as.numeric(unlist(s))

## remove NA and duplicates
solution <- unique(solution[!is.na(solution)])
# [1]   7 667  11   5   2
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You can avoid the lapply here if you unlist first and then do as.numeric. –  Arun Jun 9 '13 at 12:55
@Arun: thanks, I correct my answer. –  sgibb Jun 9 '13 at 13:24

Here is yet another answer, this one using gregexpr to find the numbers, and regmatches to extract them:

l <- c("djud7+dg[a]hs667", "7fd*hac11(5)", "2tu,g7gka5")

temp1 <- gregexpr("[0-9]", l)   # Individual digits
temp2 <- gregexpr("[0-9]+", l)  # Numbers with any number of digits

as.numeric(unique(unlist(regmatches(l, temp1))))
# [1] 7 6 1 5 2
as.numeric(unique(unlist(regmatches(l, temp2))))
# [1]   7 667  11   5   2
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Use strsplit using pattern as the inverse of numeric digits: 0-9

For the example you have provided, do this:

tmp <- sapply(list, function (k) strsplit(k, "[^0-9]"))

Then simply take a union of all `sets' in the list, like so:

tmp <- Reduce(union, tmp)

Then you only have to remove the empty string.

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Three identical answers in a minute of each other! :D –  asb Jun 9 '13 at 12:52
strsplit is vectorised. You could/should avoid using loops by unlisting OP's data. –  Arun Jun 9 '13 at 12:53
Using Reduce with union (is essentially looping) here will also be very time consuming on huge lists (unique and unlist would be much faster). –  Arun Jun 9 '13 at 13:00
@Arun: Point taken. –  asb Jun 9 '13 at 13:35

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