Difference between revisions of "Shortest path"

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(Created page with "The '''shortest paths''' problem is one of the most fundamental problems in graph theory. Given a directed graph <math>G = (V,E)</math>, possibly weighted, and a set of pairs...")
 
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* In the ''single-source shortest paths'' problem, the problem set is of the form <math>\{u\} \times V</math>. One vertex, <math>u</math>, is designated the ''source'', and we wish to find the shortest paths from the source to all other vertices. (To solve the analogous ''single-destination shortest paths'' problem, we merely reverse the directions of all edges, which reduces it to single-source.)
 
* In the ''single-source shortest paths'' problem, the problem set is of the form <math>\{u\} \times V</math>. One vertex, <math>u</math>, is designated the ''source'', and we wish to find the shortest paths from the source to all other vertices. (To solve the analogous ''single-destination shortest paths'' problem, we merely reverse the directions of all edges, which reduces it to single-source.)
 
* In the ''all-pairs shortest paths'' problem, the problem set is <math>V \times V</math>; that is, we wish to know the shortest paths from every vertex to every other vertex.
 
* In the ''all-pairs shortest paths'' problem, the problem set is <math>V \times V</math>; that is, we wish to know the shortest paths from every vertex to every other vertex.
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==Approach==
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All the shortest paths algorithms discussed in this article have the same basic approach. At their core, they compute not the shortest paths themselves, but the distances. Using information computed in order to compute the distances, one can easily then reconstruct the paths themselves. They begin with the knowledge that the distance from any vertex to itself is zero, and they overestimate all other distances they need. (By this it is meant that they find a number <math>d_{i,j}</math> for each pair <math>(i,j)</math> under consideration such that the distance from <math>i</math> to <math>j</math> is less than or equal to <math>d_{i,j}</math>.) At some point, all overestimates will be refined, perhaps gradually, perhaps at once, so that once the algorithm has terminated, they are exactly the correct distances.
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===Relaxation===
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There are theoretically many ways to refine overestimates but a specific way, known as '''relaxation''', is used in all the algorithms discussed in this article. Relaxation can take place when three conditions are met:
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# The currently best overestimate for the distance from some vertex <math>i</math> to some vertex <math>j</math> is <math>d_1</math>;
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# The currently best overestimate for the distance from <math>j</math> to some vertex <math>k</math> is <math>d_2</math>;
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# The currently best overestimate for the distance from <math>i</math> to <math>k</math> is greater than <math>d_1+d_2</math>. (This includes the case in which it is infinite.)
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Relaxation refines the best overestimate for the distance from <math>i</math> to <math>k</math> by setting it to <math>d_1+d_2</math>, which is better than its current value.
  
 
==Single-source shortest paths==
 
==Single-source shortest paths==

Revision as of 20:37, 15 November 2010

The shortest paths problem is one of the most fundamental problems in graph theory. Given a directed graph G = (V,E), possibly weighted, and a set of pairs of vertices \{(u_1,v_1), ..., (u_n,v_n)\}, u_i, v_i \in V, the problem is to compute, for each i, a path in G from u_i to v_i (a list of vertices u_i = s_{i,0}, s_{i,1}, ..., s_{i,k} = v_i such that for all 0 \leq j < k, (s_{i,j},s_{i,j+1}) \in E) such that no other path in G from u_i to v_i has a lower total weight.

Shortest paths in undirected graphs can be computed by replacing each undirected edge with two arcs of the same weight, one going in each direction, to obtain a directed graph.

Variations

Three variations of the shortest path algorithm exist, and they are discussed in the following sections.

  • In the single-pair shortest path problem, there is only one pair (u,v) in the problem set. In other words the shortest path is desired between a single pair of vertices.
  • In the single-source shortest paths problem, the problem set is of the form \{u\} \times V. One vertex, u, is designated the source, and we wish to find the shortest paths from the source to all other vertices. (To solve the analogous single-destination shortest paths problem, we merely reverse the directions of all edges, which reduces it to single-source.)
  • In the all-pairs shortest paths problem, the problem set is V \times V; that is, we wish to know the shortest paths from every vertex to every other vertex.

Approach

All the shortest paths algorithms discussed in this article have the same basic approach. At their core, they compute not the shortest paths themselves, but the distances. Using information computed in order to compute the distances, one can easily then reconstruct the paths themselves. They begin with the knowledge that the distance from any vertex to itself is zero, and they overestimate all other distances they need. (By this it is meant that they find a number d_{i,j} for each pair (i,j) under consideration such that the distance from i to j is less than or equal to d_{i,j}.) At some point, all overestimates will be refined, perhaps gradually, perhaps at once, so that once the algorithm has terminated, they are exactly the correct distances.

Relaxation

There are theoretically many ways to refine overestimates but a specific way, known as relaxation, is used in all the algorithms discussed in this article. Relaxation can take place when three conditions are met:

  1. The currently best overestimate for the distance from some vertex i to some vertex j is d_1;
  2. The currently best overestimate for the distance from j to some vertex k is d_2;
  3. The currently best overestimate for the distance from i to k is greater than d_1+d_2. (This includes the case in which it is infinite.)

Relaxation refines the best overestimate for the distance from i to k by setting it to d_1+d_2, which is better than its current value.

Single-source shortest paths

All-pairs shortest paths

Single-pair shortest path

References