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I have an asymmetric directed graph with a set of probabilities (so the likelihood that a person will move from point A to B, or point A to C, etc). Given a route through all the points, I would like to calculate the likelihood that each choice made in the route is a good choice.

As an example, suppose a graph of just 2 points.

//In a matrix, the probabilities might look like
//A     B
[ 0    0.9  //A
  0.1   0 ] //B

So the probability of moving from A to B is 0.9 and from B to A is 0.1. Given the route A->B, how correct is the first point (A), and how correct is the second point (B).

Suppose I have a bigger matrix with a route that goes A->B->C->D. So, some examples of what I would like to know:

  • How likely is it that A comes before B,C, & D
  • How likely is it that B comes after A
  • How likely is it that C & D come after B

Basically, at each point, I want to know the likelihood that the previous points come before the current and also the likelihood that the following points come after. I don't need something that is statistically sound. Just an indicator that I can use for relative comparisons. Any ideas?

update: I see that this question is not useful to everyone but the answer is really useful to me so I've tried to make the description of the problem more clear and will include my answer shortly in case it helps someone.

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How does probability fit into this problem at all? Can't you tell which state you are at when you are traversing your graph? – Hunter McMillen Apr 16 '12 at 15:05
I realize now that I did not phrase this problem correctly at all. TSP has nothing to do with it at this point. I have a route and a graph of probabilities. I want to find the likelihood that a route is correct based on probabilities. I'm going to update the question. – i8abug Apr 16 '12 at 15:27
You seem to be alluding to an optimization problem for which you haven't stated the optimization criterion. Can you state it more explicitly? For example, right in your first paragraph you say a "good choice" but why is one choice better than another? How is this measured? – Chris A. Apr 16 '12 at 15:37
@ChrisA. Thanks You helped me clarify the problem. I updated the problem with another example. A simple 2 point asymmetric directed graph. – i8abug Apr 16 '12 at 15:46
OK, you're making progress, but still not there: "Given the route A->B, I can probably be 90% certain that A comes before B." This is still fuzzy and handwaving. What is the mathematical optimization criterion? Can you write it down? I suspect you aren't even sure what it is, hence lots of people not being able to answer your question. – Chris A. Apr 16 '12 at 15:49

3 Answers 3

I don't think that's possible efficiently. If there was an algorithm to calculate the probability that a point was in the wrong position, you could simply work out which position was least wrong for each point, and thus calculate the correct order. The problem is essentially the same as finding the optimal route.

The subsidiary question is what the probability is 'of', here. Can the probability be 100%? How would you know?

Part of the reason the travelling salesman problem is hard is that there is no way to know that you have the optimal solution except looking at all the solutions and finding that it is the shortest.

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I apologize. I did not correctly frame my problem. I've updated the question. I just have a graph of probabilities and a route through the graph. That might make things a bit easier. In terms of if there was an algorithm to calculate the probability of a point being in the wrong position, I don't think you could use it to find the optimal route because improving the probability of a point might lower the probability of another point in a complex graph. – i8abug Apr 16 '12 at 15:36
The other thing I was thinking of is maybe not using probabilities but using something similar (I called it confidence although that is probably a synonym for probability). But in an asymmetric problem, if the distance from A to B is 9 and the distance from B to A is 1, then I can say with pretty high confidence that A comes before B (I think). Maybe 90% confident in this case. If I start throwing in other points, it becomes more complicated – i8abug Apr 16 '12 at 15:40
It sounds like you are assigning probabilities/confidence based on Greedy assumptions. I don't see the value of that. The TSP solution algorithm that follows the general algorithm of computing the point to point probabilities will seem best by that measure, and there is no guarantee that's the case, particularly if you assign probabilities using greedy assumptions. – hatchet Apr 16 '12 at 15:47
hmm...I will have to think about this. Based on the updated 2 point example in my question, it makes sense to me to say that AB is better than BA. And it also seems like AB is way better than BA (it's not like the probabilities for the two routes are 0.49 and 0.51 - there are big differences). So for the simple example, having a confidence number has a value to me. I 'think' it should apply to more complex examples... – i8abug Apr 16 '12 at 16:29

Replace probability matrix (p) with -log(p) and finding shortest path in that matrix would solve your problem.

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up vote 0 down vote accepted

After much thought, I came up with something that suits my needs. It still has the the same problem where to get an accurate answer would require checking every possible route. However, in my case, only checking direct and the first indirect routes are enough to give an idea of how "correct" my answer is.

First I need the confidence for each probability. This is a separate calculation and is contained in a separate matrix (that maps 1 to 1 to the probability matrix). I just take the 1.0-confidenceInterval for each probability.

If I have a route A->B->C->D, I calculate a "correctness indicator" for a point. It looks like I am getting some sort of average of a direct route and the first level of indirect routes.

Some examples:

Denote P(A,B) as probability that A comes before B Denote C(A,B) as confidence in the probability that A comes before B Denote P`(A,C) as confidence that A comes before C based on the indirect route A->B->C

At point B, likelihood that A comes before it:

indicator = P(A,B)*C(A,B)/C(A,B)

At point C, likelihood that A & B come before:

P(A,C) = P(A,B)*P(B,C) C(A,C) = C(A,B)*C(B,C)

indicator = [P(A,C)*C(A,C) + P(B,C)*C(B,C) + P'(A,C)*C'(A,C)]/[C(A,C)+C(B,C)+C'(A,C)]

So this gives me some sort of indicator that is always between 0 and 1, and takes the first level indirect route into account (from->indirectPoint->to). It seems to provide the rough estimation I was looking for. It is not a great answer, but it does provide some estimate and since nothing else provides anything better, it is suitable

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