# Efficient way to find degrees of separation between two nodes in a graph

This is an interview question that I recently found on Internet:

How would you find the degree of separation between two person on Facebook? Discuss different ideas, algorithms, and trade-offs. (Definition of degree of saparation: http://en.wikipedia.org/wiki/Six_degrees_of_separation)

Here's what I think about it:

The candidate algorithms that I can think of are: breadth-first search(BFS), depth-first search(DFS), depth-limited search(DLS), iterative-deepening search(IDS).

First, DFS should be taken of consideration. It is very likely that even when the two persons are connected (i.e. degree of separation = 1), the algorithm may keep searching along a wrong path for a long time.

BFS is guaranteed to find the minimum degree of separation (since the graph is not weighted). Assume the max branching factor is b and the actual degree of separation between two target persons is d, both time complexity and space complexity would be O(b^d).

Since the max possible degree of separation is unknown (although it should not be too higher than 6), it may not be a good idea to use DLS. However, IDS seems to be a better idea than BFS - it's time complexity is also O(b^d) (although the actual time cost a bit higher than BFS due to repeated visiting of intermediate nodes), while its space complexity is O(bd), which is a lot better than O(b^d).

After all, I would choose IDS. Is that an acceptable answer in an interview? Did I mid any mistake in the above inference? Or are there any better solutions that I missed?

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A better solution might be to start a BFS from both nodes simultaneously. Something like the following pseudo-code:

``````nodes1 = (A);
nodes2 = (B);
d = 1;
loop {
nodes1 = successors(nodes1);
if (intersects(nodes1, nodes2)) {
return d;
}
d += 1;
nodes2 = successors(nodes2);
if (intersects(nodes2, nodes1)) {
return d;
}
d += 1;
}
``````

The time complexity of this algorithm is about `O(m ^ (d/2))` where `m` is the maximum degree of all nodes and `d` is the maximum distance. Compared to a simple BFS with `O(m ^ d)`, this can be a lot faster in large graphs.

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I haven't thought about bidirectional search before. Thanks for mention that. –  quantumrose Mar 11 '13 at 1:32