Showing posts with label NP-hard. Show all posts
Showing posts with label NP-hard. Show all posts

Tuesday, February 14, 2012

Modeling the Traveling Salesman

I’m going to attack a well-known problem from the 1800 century in this post: Traveling Salesman Problem (TSP).
The objective in the traveling salesman problem is to find the shortest path through a network graph visiting every node/vertex exactly once and returning to the origin, such a path is called a tour of the graph (or a Hamiltonian cycle if you are into computer science). The problem is NP-hard to solve, meaning it is likely that no feasible exact solution exists for large graphs. There exist a lot of variant on the traveling salesman problem. I will consider the form of the problem in which the graph lies in a plane, also known as the Euclidian TSP. This puts constraints on the distances between nodes and is a symmetric formulation of the problem. But still, this is an NP-hard problem.
To put things into perspective, the number of distinct Hamiltonian cycles through a graph is:
Enumerating all possibilities becomes infeasible for even small graphs. For n = 21 the number of solutions is 1,216,451,004,088,320,000. For the case of n = 101 the number of solutions is approximately 9e+157 which exceeds the approximated number of atoms in the known universe. Of course, I’m not claiming to solve this problem – actually I’m not trying to solve it at all. Many better people have tried that before me. I’ll however focus on testing a TSP solver. It may be exceptionally difficult to solve the problem, but it is possible to construct graphs for which the solution is known (and non-trivial) without too much effort. A model for that could look like:
I plan on doing a series of posts on this problem. In this first post I will define the problem and the method in which I’m constructing a graph for the TSP. In the following posts I will investigate different models for growing TSP graphs, and look into how they perform.