# Best algorithm to compare a set with a collection of sets

What is the best algorithm to find the sets in a finite collection of sets that are a subset of a specific set?

For example, if

``````A = {1, 2}
B = {2, 3, 4}
C = {3, 5}
D = {6}
``````

and X = `{1, 2, 3, 5}`

Then, A and C are subsets of X.

Is there an algorithm that I could do this in linear time complexity?

Implementation Note: The members of the sets are generally from a very limited range, therefore, it could be a good idea to use C++ bitset to implement the algorithm. Couldn't it?

Edit: The number of sets in the collection is generally very greater than The number of elements in X (in the example). Is there a way to do this linear in terms of the number of elements in X? Probably using hash or something?

-
No way to do this in true linear time. Testing if a set contains another set will always be technically quadratic time, but using a hashtable will make such a problem be linear time in practice (if the sets are of a reasonable length). So the answer to your question is that the time complexity will be `M*N*Q`, if M is the number of sets (A-D), N is the size of the largest of those sets, and Q is the size of the set X. – David Robinson Sep 24 '12 at 6:35
Could you give me a link or probably the name of the algorithm? – Mohammad Sep 24 '12 at 6:46
It's not the algorithm that's important so much as the data structure. As you (and @amit) mention, a bitset is useful if you have a limited number of possible elements. A hash table is another very useful data structure (in C++ it's referred to as an unordered_map. – David Robinson Sep 24 '12 at 6:48

Let's assume for a moment 64 possible elements.

Then, if you represent each element as a bit, you can use a 64 bits long integer to represent each set, and then: `a & b` is the set intersection of `a` and `b`.
If (and only if) `a` is a subset of `b` then `a & b == a`.

Of course you can use a bitset if you need more then 64 bits.

For large range of elements, using a hash table to store (once) the superset, and then iterating the potential subsets to check if all elements are in it can be done.
It is linear in the input size (average case).

EDIT: (response to editted question)

Unless you pre-stored some information on the data - it cannot be done betetr then `O(|X| + n*min{m,|X|})` Where |X| is the size of the set X, `n` is the number of sets, and `m` is the average size of the sets.
The reason for this is becasue at worst case, you need to read all elements in all set (because the last element you read for each set decides if it is a subset or not), and thus we cannot achieve better without previous knowledge on the sets.

The suggested solutions are:
Bitset: `O(|X|*n)`
Hash solution: `O(|X| + min{m,|X|}*n)` (average case)

Although the hash solution provides better asymptotic complexity, the constants are much better for a bitset- and thus the bitset solution will probably be faster for small `|X|`

-
Your answer is correct. But what if the number of sets in the collection is very large but the number of elements in X is small? Can I do this more efficiently? – Mohammad Sep 24 '12 at 6:43