Algorithm for finding basis of a set of bitstrings?

This is for a diff utility I'm writing in C++.

I have a list of n character-sets {"a", "abc", "abcde", "bcd", "de"} (taken from an alphabet of k=5 different letters). I need a way to observe that the entire list can be constructed by disjunctions of the character-sets {"a", "bc", "d", "e"}. That is, "b" and "c" are linearly dependent, and every other pair of letters is independent.

In the bit-twiddling version, the character-sets above are represented as {10000, 11100, 11111, 01110, 00011}, and I need a way to observe that they can all be constructed by ORing together bitstrings from the smaller set {10000, 01100, 00010, 00001}.

In other words, I believe I'm looking for a "discrete basis" of a set of n different bit-vectors in {0,1}k. This paper claims the general problem is NP-complete... but luckily I'm only looking for a solution to small cases (k < 32).

I can think of really stupid algorithms for generating the basis. For example: For each of the k2 pairs of letters, try to demonstrate (by an O(n) search) that they're dependent. But I really feel like there's an efficient bit-twiddling algorithm that I just haven't stumbled upon yet. Does anyone know it?

EDIT: I ended up not really needing a solution to this problem after all. But I'd still like to know if there is a simple bit-twiddling solution.

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You could combine the passes of the stupid algorithm at the cost of space.

Make a bit vector called `violations` that is `(k - 1) k / 2` bits long (so, 496 for `k = 32`.) Take a single pass over character sets. For each, and for each pair of letters, look for violations (i.e. `XOR` the bits for those letters, `OR` the result into the corresponding position in `violations`.) When you're done, negate and read off what's left.

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I'm thinking a disjoint set data structure, like union find turned on it's head (rather than combining nodes, we split them).

Algorithm:

Create an array `main` where you assign all the positions to the same group, then:

``````for each bitstring curr
for each position i
if (curr[i] == 1)
// max of main can be stored for constant time access
main[i] += max of main from previous iteration
``````

Then all the distinct numbers in `main` are your different sets (possibly using the actual union-find algorithm).

Example:

So, `main = 22222`. (I won't use `1` as groups to reduce possible confusion, as `curr` uses bitstrings).

``````curr = 10000
main = 42222 // first bit (=2) += max (=2)

curr = 11100
main = 86622 // first 3 bits (=422) += max (=4)

curr = 11111
main = 16-14-14-10-10

curr = 01110
main = 16-30-30-26-10

curr = 00011
main = 16-30-30-56-40
``````

Then split by distinct numbers:

``````{10000, 01100, 00010, 00001}
``````

Improvement:

To reduce the speed at which `main` increases, we can replace

``````main[i] += max of main from previous iteration
``````

with

``````main[i] += 1 + (max - min) of main from previous iteration
``````

EDIT: Edit based on j_random_hacker's comment

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I like it! Though I don't actually see the connection to union-find, where I'm accustomed to seeing each "vertex" assigned to its own distinct "component" initially (instead of all to the same group). Also I think confusion reduction is not the only reason to avoid `0`s in `main[]`: if all `main[]` values are `0`, then they will remain `0` till the end. Finally it would be clearer to say `main[i] += max of main from previous iteration`. –  j_random_hacker Jan 6 '13 at 14:47

You could give Principal Component Analysis a try. There are some flavors of PCA designed for binary or more generally for categorical data.

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Thanks for the suggestion, but I'm not looking for heavyweight theory; I already know how to find the answer in ~20 lines of code and a nested for-loop. My question is just whether there's a cleverer, shorter, less-nested way to do it. –  Quuxplusone Aug 30 '12 at 20:28

Since someone showed it as NP complete, for large vocabs I doubt you will do better than a brute force search (with various pruning possible) of the entire set of possibilities O((2k-1) * n). At least in a worst case scenario, probably some heuristics will help in many cases as outlined in the paper you linked. This is your "stupid" approach generalized to all possible basis strings instead of just basis of length 2.

However, for small vocabs, I think an approach like this would do a lot better:

1. Are your words disjoint? If so, you are done (simple case of independent words like "abc" and "def")

2. Perform bitwise and on each possible pair of words. This gives you an initial set of candidate basis strings.

3. Goto step 1, but instead of using the original words, use the current basis candidate strings

Afterwards you also need to include any individual letter which is not a subset of one of the final accepted candidates. Maybe some other minor bookeeping for things like unused letters (using something like a bitwise or on all possible words).