find unique combinations of items

I am trying to find all of the unique groupings of a list of items. Below is the code I have:

``````x <- c("Dominion","progress","scarolina","tampa","tva","TminKTYS","TmaxKTYS","TminKBNA","TmaxKBNA",
"TminKMEM","TmaxKMEM","TminKCRW","TmaxKCRW","TminKROA","TmaxKROA","TminKCLT","TmaxKCLT","TminKCHS"
,"TmaxKCHS","TminKATL","TmaxKATL","TminKCMH","TmaxKCMH","TminKJAX","TmaxKJAX","TminKLTH","TmaxKLTH"
,"TminKMCO","TmaxKMCO","TminKMIA","TmaxKMIA","TminKPTA","TmaxKTPA","TminKPNS","TmaxKPNS","TminKLEX"
,"TmaxKLEX","TminKSDF","TmaxKSDF")

zz <- sapply(seq_along(x), function(y) combn(x,y))  #Generates a list with of the combinations
sapply(zz, function(z) t(unique(t(z)))) #Filter out all the duplicates
``````

However, the code causes my computer to run out of memory. Is there a better way to do this? I realize I have a large list. thanks.

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ALL groupings (as in all subsets) or just all pairs? –  Iterator Aug 5 '11 at 17:19
Um....`sum(choose(39,1:39))` = 549755813887. Think about how big that number is for a second, and now think about whether you really want to do this. –  joran Aug 5 '11 at 17:22
@joran: When you say think how big it is ... you mean like: "549755813887 or ~549 Billion, is 1/25 the US Debt" ? ;-) –  Kyle Brandt Aug 5 '11 at 17:27
@RyanB, I realize you think you want all combinations... but I suspect you don't really need all combinations. Is this a maximization problem of some type? If it is, you might ask a different question about how to solve a certain type of goal seek rather than brute forcing every possible combination. –  JD Long Aug 5 '11 at 17:47
@joran: Some people use `sum(choose())` and some just calculate `2^39 - 1`. :) –  Iterator Aug 5 '11 at 18:15

To calculate all unique subsets, you are simply creating all binary vectors with the same length as the cardinality of the original set of items. If there are 39 items, then you are looking at all binary vectors of length 39. Each element of each vector identifies, yes or no, whether or not the item is in the corresponding subset.

As there are 39 items, and each can either be in or not-in a given subset, then there are 2^39 possible subsets. Excluding the empty set, i.e. the all-0 vector, you have 2^39 - 1 possible subsets.

That is, as @joran said, about 549B vectors. Given that the binary vectors are most compactly representing the data (i.e. without strings), then you will need 549B * 39 bits to return all of the subsets. I don't think you want to store this: that's about 2.68E12 bytes. If you insist on using the characters, you're likely to be in the many tens of terabytes.

It's certainly feasible to buy a system that can support this, but not very cost-effective.

At a meta-level, it is very likely, as @JD said, that this is not the path you really need to go. I recommend posting a new question and maybe it can be refined here or on the statistics-related SE site.

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FWIW, even if you don't store it, transmitting the data would take some time. Any decent computer should be fine generating all of the 39 bit vectors very rapidly. See "brute force password cracker" for illustrative purposes. :) DES was a 56-bit key, so a bit longer, and it required a few more computations per key. –  Iterator Aug 5 '11 at 19:36
selected answers on both threads @Iterator –  RyanB Aug 5 '11 at 20:18