Let's say I have the following unweighted, undirected graph where edges can be connected by two different types of edges: support edges (green) and opposition edges (red).

Here's an example:

Example support-opposition graph

I want to calculate the "distance" of opposition or support between any given two nodes. For example, if the nodes represented countries at war or political candidates, even though A and D have no edge between them we might conclude that they are likely to be opposed to one another since A is opposed to C and C supports D.

This is a simple example, but given a large graph with many nodes of high degree, how might I determine how likely any two nodes might be opposed to or supporting one another if they cannot be directly connected by a successive chain of opposition/support edges?

I imagine you'd represent each node as a vector whose components where whether an edge of a type exist between any other nodes. If this is a good way to go, what distance measure would you use (Euclidean, Hamming, etc?)

  • Interesting problem, I think it's more like engineering problem than algorithm one? I do not have an idea yet, but could you tell me what is the relation (likely) between A & C, B&D in the following graph: { B oppose A; B oppose C; D support A; D support B } – shole Aug 20 '15 at 6:28
  • I think you must read about bipartite. – vish4071 Aug 20 '15 at 6:56
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    Also, if in your example, lets say there is one more node F. BC is not present. CF and BF are support edges. In that case, what is your relation between C/B (as CAB shows opposition and CFB shows support) – vish4071 Aug 20 '15 at 6:59
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    Also,your nodes don't have coordinates, so how do you plan on representing your nodes as vectors? If it is according to edge types, won't there be collision as in my example (above comment)? – vish4071 Aug 20 '15 at 7:02
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    @user1569339 no, I am not familiar with that too :) , what i meant is that it sounds you are asking for some good "definition" of "distance" between nodes, while this definition has to be tuned based on your conditions. Therefore we try to ask you "how you handle that manually?" with some examples above, to gain some sense to see how to define the "distance" – shole Aug 20 '15 at 7:39

This problem looks as if it needs numerical optimization. Here is an approach:

Introduce a random variable for every node. This variable will be in the range [-1, 1], where -1 means clear opposition and +1 means clear support. Values in between give you the probabilities for either. Fix the variable for the node you're interested in to 1 (hence, it will not be part of the optimization).

Now, define a potential function on the edges. I would suggest the absolute difference:

v1, v2 are the incident nodes' values
for supporting edges:
  P(v1, v2) = abs(v1 - v2)
for opposing edges:
  P(v1, v2) = abs(v1 + v2)

Depending on your optimization method, you might need a differentiable potential function. You could for example make these functions differentiable with:

for supporting edges:
  P(v1, v2) = sqrt((v1 - v2)^2 + epsilon)
for opposing edges:
  P(v1, v2) = sqrt((v1 + v2)^2 + epsilon)

where epsilon is a rather small number.

The sum of all potentials is the energy:

E = Sum P_i

Then, you need to find arg min E with respect to v. There are several optimizers. Just try, which one performs best (e.g. gradient descent, simulated annealing, L-BFGS...). If you stick to convex potentials (like the absolute difference), simple gradient-descent is probably enough.

This gives you a support value for every other node. If edges do not contradict each other, all values will be either +1 or -1. If you have contradicting edges, other values are possible as well.

Your example would result in these support values (with respect to A):

B: -0.333  (probably opposing)
C:  0.333  (probably supporting)
D:  0.333  (probably supporting)
  • This is very interesting. Do you have a resource I could peruse to get more perspective on this approach? – user1569339 Aug 20 '15 at 19:25
  • Unfortunately not. But I may give you some keywords. The entire procedure is a continuous optimization of a graphical model (Markov Random Field). Do not mix it with discrete optimization. The algorithms are fundamentally different. – Nico Schertler Aug 20 '15 at 20:16
  • It seems as if the example graph has changed again. Here is the result for the current one: B:1, C:-1, D:-1, E:-1. – Nico Schertler Aug 20 '15 at 20:22
  • Apologies for the changing example. – user1569339 Aug 21 '15 at 1:46
  • Find the shortest path(s) between your two nodes
    • If no path exists your result is unknown
  • Find all of the distinct edges in your collection of shortest paths
  • Sum all of the distinct edges (green:+1 and red:-1)
  • The result is your score
    • A positive score is support
    • A negative score is opposition
    • A score of 0 is neutral
  • The magnitude of the score can show greater levels of support or opposition
  • Wouldn't your solution would yield a result of neutral for the example in the question. – user1569339 Aug 20 '15 at 19:22
  • Why only find shortest path? Isn't non-shortest path should have effect to the result as well with a lower weight, naturally? – shole Aug 21 '15 at 1:11
  • @shole - The shorter the path the more relavent the score will be. If A and B are connected by a green edge, but there are also ACB (green, red) and ADEB (red, green, red) those longer paths are less important, because we already know from the shortest path that A and B support eachother. – Louis Ricci Aug 21 '15 at 11:40

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