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7.3. shortest paths

7.3.1. properties of shortest paths

(From Wikipedia, the free encyclopedia)

In graph theory, the shortest path problem is the problem of finding a path between two vertices such that the sum of the weights of its constituent edges is minimized. An example is finding the quickest way to get from one location to another on a road map; in this case, the vertices represent locations and the edges represent segments of road and are weighted by the time needed to travel that segment.

Formally, given a weighted graph (that is, a set V of vertices, a set E of edges, and a real-valued weight function f : E → R), and one element v of V, find a path P from v to each v' of V so that

is minimal among all paths connecting v to v' .

Sometimes it is called the single-pair shortest path problem, to distinguish it from the following generalizations:

  • The single-source shortest path problem is a more general problem, in which we have to find shortest paths from a source vertex v to all other vertices in the graph.
  • The all-pairs shortest path problem is an even more general problem, in which we have to find shortest paths between every pair of vertices v, v' in the graph.

Both these generalizations have significantly more performant algorithms in practice than simply running a single-pair shortest path algorithm on all relevant pairs of vertices.

Algorithms

The most important algorithms for solving this problem are:

  • Dijkstra's algorithm — solves single source problem if all edge weights are greater than or equal to zero. Without worsening the run time, this algorithm can in fact compute the shortest paths from a given start point s to all other nodes.
  • Bellman-Ford algorithm — solves single source problem if edge weights may be negative.
  • A* search algorithm solves for single source shortest paths using heuristics to try to speed up the search
  • Floyd-Warshall algorithm — solves all pairs shortest paths.
  • Johnson's algorithm — solves all pairs shortest paths, may be faster than Floyd-Warshall on sparse graphs.
  • Perturbation theory; finds (at worst) the locally shortest path

Applications

Shortest path algorithms are applied in an obvious way to automatically find directions between physical locations, such as driving directions on web mapping websites like Mapquest.

If one represents a nondeterministic abstract machine as a graph where vertices describe states and edges describe possible transitions, shortest path algorithms can be used to find an optimal sequence of choices to reach a certain goal state, or to establish lower bounds on the time needed to reach a given state. For example, if vertices represents the states of a puzzle like a Rubik's Cube and each directed edge corresponds to a single move or turn, shortest path algorithms can be used to find a solution that uses the minimum possible number of moves.

In a networking or telecommunications mindset, this shortest path problem is sometimes called the min-delay path problem and usually tied with a widest path problem. e.g.: Shortest (min-delay) widest path or Widest shortest (min-delay) path.

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Source:  OpenStax, Data structures and algorithms. OpenStax CNX. Jul 29, 2009 Download for free at http://cnx.org/content/col10765/1.1
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