I am using Python (and have access to pandas, numpy, scipy).

I have two sets strings set A and set B. Each set A and B contains c. 2000 elements (each element being a string). The strings are around 50-100 characters long comprising up to c. 20 words (these sets may get much larger).

I wish to check if an member of set A is also a member of set B.

Now I am thinking a naive implementation can be visualised as a matrix where members in A and B are compared to one another (e.g. A1 == B1, A1 == B2, A1 == B3 and so on...) and the booleans (0, 1) from the comparison comprise the elements of the matrix.

What is the best way to implement this efficiently?

Two further elaborations:

(i) I am also thinking that for larger sets I may use a Bloom Filter (e.g. using PyBloom, pybloomfilter) to hash each string (i.e. I dont mind fasle positives so much...). Is this a good approach or are there other strategies I should consider?

(ii) I am thinking of including a Levenshtein distance match between strings (which I know can be slow) as I may need fuzzy matches - is there a way of combining this with the approach in (i) or otherwise making it more efficient?

Thanks in advance for any help!

`seta & setb`

(or`seta.intersection(setb)`

) – mgilson Jun 23 '13 at 18:03`set`

(like`dictionary`

) use a hash to check if an item is present or not. This is a efficient approach for most application. However, this only work forexactmatches. Not forfuzzymatches. If you are planning to use some algorithm like the Levenshtein distance you will have to work with effective data. Not the hash. So this will be an important performances drop. Not mentioning you will have to compute the distance between each item of the first set and and every item of the second set. O(n log n) at best ?. – Sylvain Leroux Jun 23 '13 at 18:20