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# Finding all the shortest paths between two nodes in unweighted undirected graph

I need help finding all the shortest paths between two nodes in an unweighted undirected graph.

I am able to find one of the shortest paths using BFS, but so far I am lost as to how I could find and print out all of them.

Any idea of the algorithm / pseudocode I could use?

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By definition, there cannot be more than one shortest path? – KingCronus Jan 3 '13 at 17:33
@KingCronus: The shortest path between each pair of nodes, perhaps? That would be plausible. – C. A. McCann Jan 3 '13 at 17:50
@KingCronus- There can be multiple different paths between two nodes that both have the shortest length among all possible paths between them. Think about a regular polygon and the two paths connecting each opposite pair of corners. – templatetypedef Jan 3 '13 at 18:55

As a caveat, remember that there can be exponentially many shortest paths between two nodes in a graph. Any algorithm for this will potentially take exponential time.

That said, there is a relatively straightforward modification to BFS that you can use as a preprocessing step to speed up generation of all possible paths. Remember that as BFS runs, it proceeds outwards in "layers," getting a single shortest path to all nodes at distance 0, then distance 1, then distance 2, etc. The motivating idea behind BFS is that any node at distance k + 1 from the start node must be connected by an edge to some node at distance k from the start node. BFS discovers this node at distance k + 1 by finding some path of length k to a node at distance k, then extending it by some edge.

If your goal is to find all shortest paths, then you can modify BFS by extending every path to a node at distance k to all the nodes at distance k + 1 that they connect to, rather than picking a single edge. To do this, modify BFS in the following way: whenever you process an edge by adding its endpoint in the processing queue, don't immediately mark that node as being done. Instead, insert that node into the queue annotated with which edge you followed to get to it. This will potentially let you insert the same node into the queue multiple times if there are multiple nodes that link to it. When you remove a node from the queue, then you mark it as being done and never insert it into the queue again. Similarly, rather than storing a single parent pointer, you'll store multiple parent pointers, one for each node that linked into that node.

If you do this modified BFS, you will end up with a DAG where every node will either be the start node and have no outgoing edges, or will be at distance k + 1 from the start node and will have a pointer to each node of distance k that it is connected to. From there, you can reconstruct all shortest paths from some node to the start node by listing of all possible paths from your node of choice back to the start node within the DAG. This can be done recursively:

• There is only one path from the start node to itself, namely the empty path.
• For any other node, the paths can be found by following each outgoing edge, then recursively extending those paths to yield a path back to the start node.

Hope this helps!

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Thank you! This was indeed very helpful. – user1946334 Jan 4 '13 at 17:17
@templatetypedef could you explain what do you mean when you say "To do this, modify BFS in the following way: whenever you process an edge by adding its endpoint in the processing queue, don't immediately mark that node as being done. Instead, insert that node into the queue annotated with which edge you followed to get to it" ?? I couldnt understant it fully. – caesar Nov 28 '13 at 3:21
@templatetypedef, now I got it,but I have a different question. When I come to final step,is there any other way to print shortest paths rather than recursion ? – caesar Nov 28 '13 at 3:26
Thank you for detailed description. I tried to implement according to your description ideone.com/2IUfcd (it's a bit messy as strings are used as keys in graph, that's what was necessary for another problem) Unfortunately it doesn't produce the correct result as prints not only the shortest paths. Of course, I can sort the result paths and leave only the shortest, but is this really what was necessary? Seems this is necessary to save nodes level and remove those parents that don't have k - 1 level during BFS traversing.. – bitec Jan 17 '15 at 13:25
@smilingpoplar see my working solution below – bitec Apr 30 '15 at 16:03

@templatetypedef is correct, but he forgot to mention about distance check that must be done before any parent links are added to node. This means that se keep the distance from source in each of nodes and increment by one the distance for children. We must skip this increment and parent addition in case the child was already visited and has the lower distance.

``````public void addParent(Node n) {
// forbidding the parent it its level is equal to ours
if (n.level == level) {
return;
}

level = n.level + 1;
}
``````

The full java implementation can be found by the following link.

http://ideone.com/UluCBb

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First, find the distance-to-start of all nodes using breadth-first search.

(if there are a lot of nodes, you can use A* and stop when top of the queue has `distance-to-start > distance-to-start(end-node)`. This will give you all nodes that belong to some shortest path)

Then just backtrack from the end-node. Anytime a node is connected to two (or more) nodes with a lower distance-to-start, you branch off into two (or more) paths.

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templatetypedef your answer was very good, thank you a lot for that one(!!), but it missed out one point:

If you have a graph like this:

```A-B-C-E-F
|     |
D------
```

Now lets imagine I want this path:

`A -> E.`

It will expand like this:

` A-> B -> D-> C -> F -> E.`

The problem there is, that you will have F as a parent of E, but

` A->B->D->F-E `
is longer than

` A->B->C->E.`
You will have to take of tracking the distances of parents you are so happily adding.

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You are correct. I faced the same problem, we cannot simply modify parent links greedely, but we need to edit them as soon as we find the shorter paths during traversals – bitec Jan 17 '15 at 13:38

I encountered the similar problem while solving this https://oj.leetcode.com/problems/word-ladder-ii/

The way I tried to deal with is first find the shortest distance using BFS, lets say the shortest distance is d. Now apply DFS and in DFS recursive call don't go beyond recursive level d.

However this might end up exploring all paths as mentioned by @templatetypedef.

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My logic was also same but I ended up getting Time limit exceeded – Kaidul Islam Feb 17 at 14:36

BFS stops when you find what you want.

You have to modify the algorithm so it continues its execution when the first path is found. (delete the `return` statement and save the path somehow.

You may end the execution after check the last node of the level that has the ending nodes of the shortest paths. (All ending nodes of the shortest paths are at the same level)

Also, there known algorithm that find all shortest paths:

Floyd–Warshall algorithm (it has pseudocode)

Johnson's algorithm

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Without significant modifications BFS is not going to find all possible paths. Since it builds up a tree structure as it goes, if the BFS traversal reaches a node, then it will find exactly one path there. Even if it did find other paths later, there is no guarantee that it would find all of them. – templatetypedef Jan 3 '13 at 19:01
BFS has the ability to find all paths (imagine that you remove the first path, then the second will be found for sure. If you were to remove the first and second paths, then you would find the third for sure). But, as I have already said, all the path must be saved. – Helio Santos Jan 3 '13 at 19:11
I'm not sure this works. If you delete the paths that you find, wouldn't you possibly change the graph in a way that breaks other possible paths from the start node outward? – templatetypedef Jan 3 '13 at 19:16
But you don't have to delete a thing. I was creating a scenario to prove that BFS can find all paths. – Helio Santos Jan 3 '13 at 19:29
I think we're thinking of different algorithms. You seem to be listing off all paths from the start node outward, which will definitely find all possible shortest paths. However, this isn't the same as breadth-first search, which builds a shortest-path tree for a graph rooted at some node. – templatetypedef Jan 3 '13 at 19:32