The solution is to brute force it. You can do some optimizations to speed it up, some are trivial, some are very complicated. I doubt you can get it to work fast enough for 18 000 nodes on a desktop computer, and even if you can I have no idea how. Here's how the bruteforce works however.
Note: Dijkstra and any of the other shortest path algorithms will NOT work for this problem if you are interested in an exact answer.
Start at a root node *root*
Let D[i] = longest path from node *root* to node i. D[*root*] = 0, and the others are also 0.
void getLongestPath(node, currSum)
if node is visited
mark node as visited;
if D[node] < currSum
D[node] = currSum;
for each child i of node do
getLongestPath(i, currSum + EdgeWeight(i, node));
mark node as not visited;
Let's run it by hand on this graph:
1 - 2 (4), 1 - 3 (100), 2 - 3 (5), 3 - 5 (200), 3 - 4 (7), 4 - 5 (1000)
Let the root be 1. We call getLongestPath(1, 0);
2 is marked as visited and getLongestPath(2, 4); is called
D = 0 < currSum = 4 so D = 4.
3 is marked as visited and getLongestPath(3, 4 + 5); is called
D = 0 < currSum = 9 so D = 9.
4 is marked as visited and getLongestPath(4, 9 + 7); is called
D = 0 < currSum = 16 so D = 16.
5 is marked as visited and getLongestPath(5, 16 + 1000); is called
D = 0 < currSum = 1016 so D = 1016.
getLongestPath(3, 1016 + 200); is called, but node 3 is marked as visited, so nothing happens.
Node 5 has no more child nodes, so the function marks 5 as not visited and backtracks to 4. The backtracking will happen until node 1 is hit, which will end up setting D = 100 and updating more nodes.
Here's how it would look iteratively (not tested, just a basic idea):
Let st be a stack, the rest remains unchanged;
while st is not empty
topStack = st.top();
if topStack.node is visited
mark topStack.node as visited;
if D[topStack.node] < topStack.sum
D[topStack.node = topStack.sum;
if topStack.node has a remaining child (*)
st.push(pair(nextchild of topStack.node, topStack.sum + edge cost of topStack.node - nextchild))
mark topStack.node as not visited
(*) - this is a bit of a problem - you have to keep a pointer to the next child for each node, since it can change between different iterations of the while loop and even reset itself (the pointer resets itself when you pop the
topStack.node node off the stack, so make sure to reset it). This is easiest to implement on linked lists, however you should use either
int lists or
vector<int> lists, so as to be able to store the pointers and have random access, because you will need it. You can keep for example
next[i] = next child of node i in its adjacency list and update that accordingly. You might have some edge cases and might need to different
end: situations: a normal one and one that happens when you visit an already visited node, in which case the pointers don't need to be reset. Maybe move the visited condition before you decide to push something on the stack to avoid this.
See why I said you shouldn't bother? :)