After thorough research and based on this , this and a lot more I was suggested to implement k shortest paths algorithm in order to find first, second, third ... k-th shortest path in a large undirected, cyclic, weighted graph. About 2000 nodes.
The pseudocode on Wikipedia is this:
function YenKSP(Graph, source, sink, K): //Determine the shortest path from the source to the sink. A = Dijkstra(Graph, source, sink); // Initialize the heap to store the potential kth shortest path. B = ; for k from 1 to K: // The spur node ranges from the first node to the next to last node in the shortest path. for i from 0 to size(A[i]) − 1: // Spur node is retrieved from the previous k-shortest path, k − 1. spurNode = A[k-1].node(i); // The sequence of nodes from the source to the spur node of the previous k-shortest path. rootPath = A[k-1].nodes(0, i); for each path p in A: if rootPath == p.nodes(0, i): // Remove the links that are part of the previous shortest paths which share the same root path. remove p.edge(i, i) from Graph; // Calculate the spur path from the spur node to the sink. spurPath = Dijkstra(Graph, spurNode, sink); // Entire path is made up of the root path and spur path. totalPath = rootPath + spurPath; // Add the potential k-shortest path to the heap. B.append(totalPath); // Add back the edges that were removed from the graph. restore edges to Graph; // Sort the potential k-shortest paths by cost. B.sort(); // Add the lowest cost path becomes the k-shortest path. A[k] = B; return A;
The main problem is that I couldn't write the correct python script yet for this (delete edges and places them back in place correctly) so I've only got this far with reliyng on Igraph as usual:
def yenksp(graph,source,sink, k): global distance """Determine the shortest path from the source to the sink.""" a = graph.get_shortest_paths(source, sink, weights=distance, mode=ALL, output="vpath") b =  #Initialize the heap to store the potential kth shortest path #for xk in range(1,k): for xk in range(1,k+1): #for i in range(0,len(a)-1): for i in range(0,len(a)): if i != len(a[:-1])-1: spurnode = a[i] rootpath = a[0:i] #I should remove edges part of the previous shortest paths, but...: for p in a: if rootpath == p: graph.delete_edges(i) spurpath = graph.get_shortest_paths(spurnode, sink, weights=distance, mode=ALL, output="vpath") totalpath = rootpath + spurpath b.append(totalpath) # should restore the edges # graph.add_edges([(0,i)]) <- this is definitely not correct. graph.add_edges(i) b.sort() a[k] = b return a
It's a really poor try and it returns only a list in a list
I'm not very sure anymore what am I doing and I'm very desperate with this issue already and in the last days my point of view on this was changed with 180 degrees and even once. I'm just a noob doing its best. Please help. Networkx implementation can also be suggested.
P.S. It's likely that there are no other working ways about this because we researched it here already . I've already received lots of suggestions and I owe the community alot. DFS or BFS wont work. Graph is huge.
Edit: I keep correcting the python script. In a nutshell the aim of this question is the correct script.