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I have a undirected graph with about 100 nodes and about 200 edges. One node is labelled 'start', one is 'end', and there's about a dozen labelled 'mustpass'.

I need to find the shortest path through this graph that starts at 'start', ends at 'end', and passes through all of the 'mustpass' nodes (in any order).

( http://3e.org/local/maize-graph.png / http://3e.org/local/maize-graph.dot.txt is the graph in question - it represents a corn maze in Lancaster, PA)

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11 Answers 11

up vote 25 down vote accepted

Everyone else comparing this to the Travelling Salesman Problem probably hasn't read your question carefully. In TSP, the objective is to find the shortest cycle that visits all the vertices (a Hamiltonian cycle) -- it corresponds to having every node labelled 'mustpass'.

In your case, given that you have only about a dozen labelled 'mustpass', and given that 12! is rather small (479001600), you can simply try all permutations of only the 'mustpass' nodes, and look at the shortest path from 'start' to 'end' that visits the 'mustpass' nodes in that order -- it will simply be the concatenation of the shortest paths between every two consecutive nodes in that list.

In other words, first find the shortest distance between each pair of vertices (you can use Dijkstra's algorithm or others, but with those small numbers (100 nodes), even the simplest-to-code Floyd-Warshall algorithm will run in time). Then, once you have this in a table, try all permutations of your 'mustpass' nodes, and the rest.

Something like this:

//Precomputation: Find all pairs shortest paths, e.g. using Floyd-Warshall
n = number of nodes
for i=1 to n: for j=1 to n: d[i][j]=INF
for k=1 to n:
    for i=1 to n:
        for j=1 to n:
            d[i][j] = min(d[i][j], d[i][k] + d[k][j])
//That *really* gives the shortest distance between every pair of nodes! :-)

//Now try all permutations
shortest = INF
for each permutation a[1],a[2],...a[k] of the 'mustpass' nodes:
    shortest = min(shortest, d['start'][a[1]]+d[a[1]][a[2]]+...+d[a[k]]['end'])
print shortest

(Of course that's not real code, and if you want the actual path you'll have to keep track of which permutation gives the shortest distance, and also what the all-pairs shortest paths are, but you get the idea.)

It will run in at most a few seconds on any reasonable language :)
[If you have n nodes and k 'mustpass' nodes, its running time is O(n3) for the Floyd-Warshall part, and O(k!n) for the all permutations part, and 100^3+(12!)(100) is practically peanuts unless you have some really restrictive constraints.]

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Why the downvote? –  ShreevatsaR Oct 24 '11 at 1:20
    
an error on my part. and when i realized it, i couldn't undo it. :( –  Jayen Oct 25 '11 at 22:48
1  
Given the small input size, I agree with the answer. But I'm interested in why you reject others' assertions that this is a case of TSP. The way I understand it, you could extract all the must-pass nodes and use it to create a sub-graph. The edges between nodes in the sub-graph have weights corresponding to the APSP solution on the original graph. Then doesn't the question become an instance of TSP on the subgraph? Your solution appears to be a brute-force solution to that problem (which is fine). –  maditya Apr 5 '13 at 7:41
3  
@maditya: Firstly, I hope you agree that (to quote Steven A Lowe's comment on another answer) an answer like "TSP is hard, bwahahaha" is not an appropriate answer to someone who has a real problem to solve, especially one very easily solved on any computer from the last few decades. Secondly, this is not identical to the TSP for trivial reasons (different input format): the tiny instance of TSP it contains is for a smaller graph, not one of input size N. So NP-completeness depends on how many 'mustpass' nodes there are asymptotically: if it's always 12, or O(log N), it's not NP-complete, etc. –  ShreevatsaR Apr 8 '13 at 14:14

run Djikstra's Algorithm to find the shortest paths between all of the critical nodes (start, end, and must-pass), then a depth-first traversal should tell you the shortest path through the resulting subgraph that touches all of the nodes start ... mustpasses ... end

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The unenviable traveling salesman set of problems should open your eyes.

Excerpt:

The most direct solution would be to try all the permutations (ordered combinations) and see which one is cheapest (using brute force search), but given that the number of permutations is n! (the factorial of the number of cities, n), this solution rapidly becomes impractical. Using the techniques of dynamic programming, one can solve the problem in time O(n^2 * 2^n)[4]. Although this is exponential, it is still much better than O(n!).

Other approaches include:

  • Various branch-and-bound algorithms, which can be used to process TSPs containing 40-60 cities.
  • Progressive improvement algorithms which use techniques reminiscent of linear programming. Works well for up to 200 cities.
  • Implementations of branch-and-bound and problem-specific cut generation; this is the method of choice for solving large instances. This approach holds the current record, solving an instance with 85,900 cities.
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With only ~2n edges for n nodes (instead of (n(n-1))/2 for canonical TSP), it would seem that there's a more tractable solution. –  Matt J Oct 21 '08 at 17:15
    
GLPK is a great tool for ILP solutions to this problem. –  Robert Elwell Oct 21 '08 at 17:45
    
There's more than 2n edges - every 'mustpass' connects to every other, as well as the start and the end. –  Nick Johnson Oct 22 '08 at 9:41
3  
how is this a helpful answer? where is the solution in this? the basic problem is NP-complete, so what? the specific problem described in the question is easily computable on modern hardware by various methods... –  Steven A. Lowe Oct 23 '08 at 2:14

Actually, the problem you posted is similar to the traveling salesman, but I think closer to a simple pathfinding problem. Rather than needing to visit each and every node, you simply need to visit a particular set of nodes in the shortest time (distance) possible.

The reason for this is that, unlike the traveling salesman problem, a corn maze will not allow you to travel directly from any one point to any other point on the map without needing to pass through other nodes to get there.

I would actually recommend A* pathfinding as a technique to consider. You set this up by deciding which nodes have access to which other nodes directly, and what the "cost" of each hop from a particular node is. In this case, it looks like each "hop" could be of equal cost, since your nodes seem relatively closely spaced. A* can use this information to find the lowest cost path between any two points. Since you need to get from point A to point B and visit about 12 inbetween, even a brute force approach using pathfinding wouldn't hurt at all.

Just an alternative to consider. It does look remarkably like the traveling salesman problem, and those are good papers to read up on, but look closer and you'll see that its only overcomplicating things. ^_^ This coming from the mind of a video game programmer who's dealt with these kinds of things before.

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1  
+1 - this is a much better answer than 'traveling saleman problem is hard, bwahahaha' –  Steven A. Lowe Oct 23 '08 at 2:15

This is two problems... Steven Lowe pointed this out, but didn't give enough respect to the second half of the problem.

You should first discover the shortest paths between all of your critical nodes (start, end, mustpass). Once these paths are discovered, you can construct a simplified graph, where each edge in the new graph is a path from one critical node to another in the original graph. There are many pathfinding algorithms that you can use to find the shortest path here.

Once you have this new graph, though, you have exactly the Traveling Salesperson problem (well, almost... No need to return to your starting point). Any of the posts concerning this, mentioned above, will apply.

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+1 thanks for the clarification, you are absolutely right –  Steven A. Lowe Oct 24 '08 at 1:20

Considering the amount of nodes and edges is relatively finite, you can probably calculate every possible path and take the shortest one.

Generally this known as the travelling salesman problem, and has a non-deterministic polynomial runtime, no matter what the algorithm you use.

http://en.wikipedia.org/wiki/Traveling_salesman_problem

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Andrew Top has the right idea:

1) Djikstra's Algorithm 2) Some TSP heuristic.

I recommend the Lin-Kernighan heuristic: it's one of the best known for any NP Complete problem. The only other thing to remember is that after you expanded out the graph again after step 2, you may have loops in your expanded path, so you should go around short-circuiting those (look at the degree of vertices along your path).

I'm actually not sure how good this solution will be relative to the optimum. There are probably some pathological cases to do with short circuiting. After all, this problem looks a LOT like Steiner Tree: http://en.wikipedia.org/wiki/Steiner_tree and you definitely can't approximate Steiner Tree by just contracting your graph and running Kruskal's for example.

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It would have been nice to tell us if the algorythm should run in about a second, a day, a week or so :) If a week is ok and it's one-time, you can write a software in some hours and brute force it. But if it's embedded in a user interface and must be calculated a lot of times a day... another problem i think.

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Technically, if all your nodes were labeled mustpass, your problem would still not be a TSP but an Hamiltonian path, which remains an NP-hard problem.

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This does not provide an answer to the question. To critique or request clarification from an author, leave a comment below their post. –  kjhughes Sep 14 at 1:43

How about using brute force on the dozen 'must visit' nodes. You can cover all the possible combinations of 12 nodes easily enough, and this leaves you with an optimal circuit you can follow to cover them.

Now your problem is simplified to one of finding optimal routes from the start node to the circuit, which you then follow around until you've covered them, and then find the route from that to the end.

Final path is composed of :

start -> path to circuit* -> circuit of must visit nodes -> path to end* -> end

You find the paths I marked with * like this

Do an A* search from the start node to every point on the circuit for each of these do an A* search from the next and previous node on the circuit to the end (because you can follow the circuit round in either direction) What you end up with is a lot of search paths, and you can choose the one with the lowest cost.

There's lots of room for optimization by caching the searches, but I think this will generate good solutions.

It doesn't go anywhere near looking for an optimal solution though, because that could involve leaving the must visit circuit within the search.

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One thing that is not mentioned anywhere, is whether it is ok for the same vertex to be visited more than once in the path. Most of the answers here assume that it's ok to visit the same edge multiple times, but my take given the question (a path should not visit the same vertex more than once!) is that it is not ok to visit the same vertex twice.

So a brute force approach would still apply, but you'd have to remove vertices already used when you attempt to calculate each subset of the path.

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