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'Length' of a path is the number of edges in the path.

Given a source and a destination vertex, I want to find the number of paths form the source vertex to the destination vertex of given length k.

  • We can visit each vertex as many times as we want, so if a path from a to b goes like this: a -> c -> b -> c -> b it is considered valid. This means there can be cycles and we can go through the destination more than once.

  • Two vertices can be connected by more than one edge. So if vertex a an vertex b are connected by two edges, then the paths , a -> b via edge 1 and a -> b via edge 2 are considered different.

  • Number of vertices N is <= 70, and K, the length of the path, is <= 10^9.

  • As the answer can be very large, it is to be reported modulo some number.

Here is what I have thought so far:

We can use breadth-first-search without marking any vertices as visited, at each iteration, we keep track of the number of edges 'n_e' we required for that path and product 'p' of the number of duplicate edges each edge in our path has.

The search search should terminate if the n_e is greater than k, if we ever reach the destination with n_eequal to k, we terminate the search and add p to out count of number of paths.

I think it we could use a depth-first-search instead of breadth first search, as we do not need the shortest path and the size of Q used in breadth first search might not be enough.

The second algorithm i have am thinking about, is something similar to Floyd Warshall's Algorithm using this approach . Only we dont need a shortest path, so i am not sure this is correct.

The problem I have with my first algorithm is that 'K' can be upto 1000000000 and that means my search will run until it has 10^9 edges and n_e the edge count will be incremented by just 1 at each level, which will be very slow, and I am not sure it will ever terminate for large inputs.

So I need a different approach to solve this problem; any help would be greatly appreciated.

  • Do all of the edges have weight 1? – Dennis Meng Jan 11 '13 at 5:45
  • @DennisMeng Yes, its an unweighted graph, i'll add it in the question – 2147483647 Jan 11 '13 at 5:48
31

So, here's a nifty graph theory trick that I remember for this one.

Make an adjacency matrix A. where A[i][j] is 1 if there is an edge between i and j, and 0 otherwise.

Then, the number of paths of length k between i and j is just the [i][j] entry of A^k.

So, to solve the problem, build A and construct A^k using matrix multiplication (the usual trick for doing exponentiation applies here). Then just look up the necessary entry.

EDIT: Well, you need to do the modular arithmetic inside the matrix multiplication to avoid overflow issues, but that's a much smaller detail.

  • +1 Beautiful solution. – templatetypedef Jan 11 '13 at 5:55
  • "Then, the number of paths of length k between i and j is just the [i][j] entry of A^k." As every entry will be either 1 or 0, the number of paths will be either 0 or k? – 2147483647 Jan 11 '13 at 5:58
  • No. You can do a quick induction proof to show correctness if you'd like, but A^k will not have only 0s and ks. – Dennis Meng Jan 11 '13 at 6:00
  • "A[i][j] is 1 if there is an edge between i and j, and 0 otherwise." you said that yourself – 2147483647 Jan 11 '13 at 6:01
  • 3
    well, allocate more matrices via self-multiplication, say A0=A, A1=A0*A0, A2=A1*A1, etc, you'll end up only needing to multiply at most 2*ceil(log2(K)) times. – Vesper Jan 11 '13 at 7:40
1

Actually the [i][j] entry of A^k shows the total different "walk", not "path", in each simple graph. We can easily prove it by "mathematical induction". However, the major question is to find total different "path" in a given graph. We there are a quite bit of different algorithm to solve, but the upper band is as follow:

(n-2)(n-3)...(n-k) which "k" is the given parameter stating length of path.

  • This is indeed the correct word in graph theory, it should be noted. Finding paths is harder. – ZirconCode May 27 '17 at 9:35
0

Let me add some more content to above answers (as this is the extended problem I faced). The extended problem is

Find the number of paths of length k in a given undirected tree.

The solution is simple for the given adjacency matrix A of the graph G find out Ak-1 and Ak and then count number of the 1s in the elements above the diagonal (or below).

Let me also add the python code.

import numpy as np

def count_paths(v, n, a):
    # v: number of vertices, n: expected path length
    paths = 0    
    b = np.array(a, copy=True)

    for i in range(n-2):
        b = np.dot(b, a)

    c = np.dot(b, a)
    x = c - b

    for i in range(v):
        for j in range(i+1, v):
            if x[i][j] == 1:
                paths = paths + 1

    return paths

print count_paths(5, 2, np.array([
                np.array([0, 1, 0, 0, 0]),
                np.array([1, 0, 1, 0, 1]),
                np.array([0, 1, 0, 1, 0]),
                np.array([0, 0, 1, 0, 0]),
                np.array([0, 1, 0, 0, 0])
            ])

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