Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I have a directed acyclic graph with positive edge-weights. It has a single source and a set of targets (vertices furthest from the source). I find the shortest paths from the source to each target. Some of these paths overlap. What I want is a shortest path tree which minimizes the total sum of weights over all edges.

For example, consider two of the targets. Given all edge weights equal, if they share a single shortest path for most of their length, then that is preferable to two mostly non-overlapping shortest paths (fewer edges in the tree equals lower overall cost).

Another example: two paths are non-overlapping for a small part of their length, with high cost for the non-overlapping paths, but low cost for the long shared path (low combined cost). On the other hand, two paths are non-overlapping for most of their length, with low costs for the non-overlapping paths, but high cost for the short shared path (also, low combined cost). There are many combinations. I want to find solutions with the lowest overall cost, given all the shortest paths from source to target.

In other words, I want the shortest, shortest-path-trees.

Does this ring any bells with anyone? Can anyone point me to relevant algorithms or analogous applications?


share|improve this question
Hm ... try to partition am not sure though. the paths into sets that have nothing in common with others. Perhaps reverse every edge and solve the complement problem ... – Hamish Grubijan May 8 '10 at 4:44
Just delete those nodes and edges which are not on any path from source to target and compute the minimum weight spanning tree of the resultant DAG. Seems like it will work. One of the answers mentions it too. – Aryabhatta May 17 '10 at 18:33
Seems like this is NP-Complete and MST was just a red-herring. I have posted an answer. – Aryabhatta May 18 '10 at 3:40

This problem (Steiner Tree) is NP-hard and max SNP-complete, so there are neither polynomial-time algorithms nor PTAS (arbitrarily close approximations) unless P = NP.

The MST can give a weight arbitrarily worse than optimal, unless you know some special feature of your graph (e.g. the graph is planar, or at least that the weights obey the triangle inequality). For example, if you have K_1,000,000,001 with all edge weights 1 and only one target, the optimal solution has weight 1 and the MST has weight 1,000,000,000.

If you assume that all edges between targets and all edges between the source and each target exist, you can still overshoot by an arbitrary factor. Consider the above example, but change the edge weight between the target and source to 2,000,000,000,000,000,000 (you're still off by a factor of a billion from optimal).

Of course you can transform the graph to 'remove' edge weights that are high in time O(E) or so by traversing the graph. This plus a MST of the set of targets and source gives an approximation ratio of 2.

Better approximation ratios exist. Robins & Zelikovsky have a polynomial-time algorithm that is never more than 54.94% worse than optimal:

Chlebik & Chlebikova show that approximating closer than 1.05% is NP-hard: The Steiner tree problem on graphs: Inapproximability results (doi

If your graph is planar, the situation is better. There's a fast algorithm that gives an arbitrarily-close approximation due to Borradaile, Kenyon-Mathieu & Klein (building on Erickson, Monma, & Veinott): An O(nlogn) approximation scheme for Steiner tree in planar graphs (doi

share|improve this answer
well, I didn't say in all cases (i just said refer wiki). Anyway, I deleted that part. thx. Anyway +1 for all the references. I suggest you also add a link saying what problem it is, in the first place. – Aryabhatta May 18 '10 at 17:58
I have edited the post to add the relevant links. – Aryabhatta May 18 '10 at 18:18
Edited to remove the reference to your statement. I wasn't being accusatory, just wanted to make it clear for the readers. Thanks for the links. – Charles May 21 '10 at 3:15

If you have only positive costs and you are minimizing, just use the Dijkstra's algorithm.

share|improve this answer
It is not obvious how to use this. Please elaborate. -1 till then. Also, just to clarify the question is about the total weight (overlaps counted once), so just using all the shortest paths might not work. – Aryabhatta May 17 '10 at 18:37
Sorry, I misunderstood the question. The only thing you may use this algorithm for is to find an approximation using the weights such as the new weight is the initial one divided by the number of reachable sinks. – Kru May 18 '10 at 10:41

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.