HOME

TheInfoList



OR:

In
graph theory In mathematics, graph theory is the study of '' graphs'', which are mathematical structures used to model pairwise relations between objects. A graph in this context is made up of '' vertices'' (also called ''nodes'' or ''points'') which are conn ...
, the shortest path problem is the problem of finding a path between two vertices (or nodes) in a
graph Graph may refer to: Mathematics *Graph (discrete mathematics), a structure made of vertices and edges **Graph theory, the study of such graphs and their properties *Graph (topology), a topological space resembling a graph in the sense of discre ...
such that the sum of the weights of its constituent edges is minimized. The problem of finding the shortest path between two intersections on a road map may be modeled as a special case of the shortest path problem in graphs, where the vertices correspond to intersections and the edges correspond to road segments, each weighted by the length of the segment.


Definition

The shortest path problem can be defined for graphs whether
undirected In discrete mathematics, and more specifically in graph theory, a graph is a structure amounting to a set of objects in which some pairs of the objects are in some sense "related". The objects correspond to mathematical abstractions called '' ...
, directed, or mixed. It is defined here for undirected graphs; for directed graphs the definition of path requires that consecutive vertices be connected by an appropriate directed edge. Two vertices are adjacent when they are both incident to a common edge. A path in an undirected graph is a
sequence In mathematics, a sequence is an enumerated collection of objects in which repetitions are allowed and order matters. Like a set, it contains members (also called ''elements'', or ''terms''). The number of elements (possibly infinite) is called ...
of vertices P = ( v_1, v_2, \ldots, v_n ) \in V \times V \times \cdots \times V such that v_i is adjacent to v_ for 1 \leq i < n. Such a path P is called a path of length n-1 from v_1 to v_n. (The v_i are variables; their numbering here relates to their position in the sequence and needs not to relate to any canonical labeling of the vertices.) Let e_ be the edge incident to both v_i and v_j. Given a real-valued weight function f: E \rightarrow \mathbb, and an undirected (simple) graph G, the shortest path from v to v' is the path P = ( v_1, v_2, \ldots, v_n ) (where v_1 = v and v_n = v') that over all possible n minimizes the sum \sum_^ f(e_). When each edge in the graph has unit weight or f: E \rightarrow \, this is equivalent to finding the path with fewest edges. The problem is also sometimes called the single-pair shortest path problem, to distinguish it from the following variations: * The single-source shortest path problem, in which we have to find shortest paths from a source vertex ''v'' to all other vertices in the graph. * The single-destination shortest path problem, in which we have to find shortest paths from all vertices in the directed graph to a single destination vertex ''v''. This can be reduced to the single-source shortest path problem by reversing the arcs in the directed graph. * The all-pairs shortest path problem, in which we have to find shortest paths between every pair of vertices ''v'', ''v' '' in the graph. These generalizations have significantly more efficient algorithms than the simplistic approach of 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 Dijkstra's algorithm ( ) is an algorithm for finding the shortest paths between nodes in a graph, which may represent, for example, road networks. It was conceived by computer scientist Edsger W. Dijkstra in 1956 and published three years ...
solves the single-source shortest path problem with non-negative edge weight. * Bellman–Ford algorithm solves the single-source problem if edge weights may be negative. * A* search algorithm solves for single-pair shortest path using heuristics to try to speed up the search. *
Floyd–Warshall algorithm In computer science, the Floyd–Warshall algorithm (also known as Floyd's algorithm, the Roy–Warshall algorithm, the Roy–Floyd algorithm, or the WFI algorithm) is an algorithm for finding shortest paths in a directed weighted graph with p ...
solves all pairs shortest paths. * Johnson's algorithm solves all pairs shortest paths, and may be faster than Floyd–Warshall on sparse graphs. * Viterbi algorithm solves the shortest stochastic path problem with an additional probabilistic weight on each node. Additional algorithms and associated evaluations may be found in .


Single-source shortest paths


Undirected graphs


Unweighted graphs


Directed acyclic graphs (DAGs)

An algorithm using topological sorting can solve the single-source shortest path problem in time in arbitrarily-weighted DAGs.


Directed graphs with nonnegative weights

The following table is taken from , with some corrections and additions. A green background indicates an asymptotically best bound in the table; ''L'' is the maximum length (or weight) among all edges, assuming integer edge weights.


Directed graphs with arbitrary weights without negative cycles


Directed graphs with arbitrary weights with negative cycles

Finds a negative cycle or calculates distances to all vertices.


Planar graphs with nonnegative weights


All-pairs shortest paths

The all-pairs shortest path problem finds the shortest paths between every pair of vertices , in the graph. The all-pairs shortest paths problem for unweighted directed graphs was introduced by , who observed that it could be solved by a linear number of matrix multiplications that takes a total time of .


Undirected graph


Directed graph


Applications

Shortest path algorithms are applied to automatically find directions between physical locations, such as driving directions on
web mapping Web mapping or an online mapping is the process of using maps, usually created through geographic information systems (GIS), on the Internet, more specifically in the World Wide Web (WWW). A web map or an online map is both served and consumed, ...
websites like MapQuest or
Google Maps Google Maps is a web mapping platform and consumer application offered by Google. It offers satellite imagery, aerial photography, street maps, 360° interactive panorama, interactive panoramic views of streets (Google Street View, Street View ...
. For this application fast specialized algorithms are available. If one represents a nondeterministic
abstract machine An abstract machine is a computer science theoretical model that allows for a detailed and precise analysis of how a computer system functions. It is analogous to a mathematical function in that it receives inputs and produces outputs based on p ...
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 represent the states of a puzzle like a
Rubik's Cube The Rubik's Cube is a 3-D combination puzzle originally invented in 1974 by Hungarian sculptor and professor of architecture Ernő Rubik. Originally called the Magic Cube, the puzzle was licensed by Rubik to be sold by Pentangle Puzzles in t ...
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 Network, networking and networked may refer to: Science and technology * Network theory, the study of graphs as a representation of relations between discrete objects * Network science, an academic field that studies complex networks Mathematics ...
or
telecommunications Telecommunication is the transmission of information by various types of technologies over wire, radio, optical, or other electromagnetic systems. It has its origin in the desire of humans for communication over a distance greater than tha ...
mindset, this shortest path problem is sometimes called the min-delay path problem and usually tied with a
widest path problem In graph algorithms, the widest path problem is the problem of finding a path between two designated vertices in a weighted graph, maximizing the weight of the minimum-weight edge in the path. The widest path problem is also known as the maximum ...
. For example, the algorithm may seek the shortest (min-delay) widest path, or widest shortest (min-delay) path. A more lighthearted application is the games of " six degrees of separation" that try to find the shortest path in graphs like movie stars appearing in the same film. Other applications, often studied in
operations research Operations research ( en-GB, operational research) (U.S. Air Force Specialty Code: Operations Analysis), often shortened to the initialism OR, is a discipline that deals with the development and application of analytical methods to improve dec ...
, include plant and facility layout,
robotics Robotics is an interdisciplinarity, interdisciplinary branch of computer science and engineering. Robotics involves design, construction, operation, and use of robots. The goal of robotics is to design machines that can help and assist human ...
,
transportation Transport (in British English), or transportation (in American English), is the intentional movement of humans, animals, and goods from one location to another. Modes of transport include air, land ( rail and road), water, cable, pipel ...
, and VLSI design.


Road networks

A road network can be considered as a graph with positive weights. The nodes represent road junctions and each edge of the graph is associated with a road segment between two junctions. The weight of an edge may correspond to the length of the associated road segment, the time needed to traverse the segment, or the cost of traversing the segment. Using directed edges it is also possible to model one-way streets. Such graphs are special in the sense that some edges are more important than others for long-distance travel (e.g. highways). This property has been formalized using the notion of highway dimension. There are a great number of algorithms that exploit this property and are therefore able to compute the shortest path a lot quicker than would be possible on general graphs. All of these algorithms work in two phases. In the first phase, the graph is preprocessed without knowing the source or target node. The second phase is the query phase. In this phase, source and target node are known. The idea is that the road network is static, so the preprocessing phase can be done once and used for a large number of queries on the same road network. The algorithm with the fastest known query time is called hub labeling and is able to compute shortest path on the road networks of Europe or the US in a fraction of a microsecond. Other techniques that have been used are: * ALT ( A* search, landmarks, and
triangle inequality In mathematics, the triangle inequality states that for any triangle, the sum of the lengths of any two sides must be greater than or equal to the length of the remaining side. This statement permits the inclusion of degenerate triangles, bu ...
) * Arc flags *
Contraction hierarchies In computer science, the method of contraction hierarchies is a speed-up technique for finding the shortest-path in a graph. The most intuitive applications are car-navigation systems: a user wants to drive from A to B using the quickest possibl ...
* Transit node routing * Reach-based pruning * Labeling * Hub labels


Related problems

For shortest path problems in computational geometry, see Euclidean shortest path. The shortest multiple disconnected path is a representation of the primitive path network within the framework of Reptation theory. The
widest path problem In graph algorithms, the widest path problem is the problem of finding a path between two designated vertices in a weighted graph, maximizing the weight of the minimum-weight edge in the path. The widest path problem is also known as the maximum ...
seeks a path so that the minimum label of any edge is as large as possible. Other related problems may be classified into the following categories.


Paths with constraints

Unlike the shortest path problem, which can be solved in polynomial time in graphs without negative cycles, shortest path problems which include additional constraints on the desired solution path are called
Constrained Shortest Path First Constrained Shortest Path First (CSPF) is an extension of shortest path algorithms. The path computed using CSPF is a shortest path fulfilling a set of constraints. It simply means that it runs shortest path algorithm after ''pruning'' those links ...
, and are harder to solve. One example is the constrained shortest path problem, which attempts to minimize the total cost of the path while at the same time maintaining another metric below a given threshold. This makes the problem NP-complete (such problems are not believed to be efficiently solvable for large sets of data, see P = NP problem). Another NP-complete example requires a specific set of vertices to be included in the path, which makes the problem similar to the Traveling Salesman Problem (TSP). The TSP is the problem of finding the shortest path that goes through every vertex exactly once, and returns to the start. The problem of finding the longest path in a graph is also NP-complete.


Partial observability

The Canadian traveller problem and the stochastic shortest path problem are generalizations where either the graph isn't completely known to the mover, changes over time, or where actions (traversals) are probabilistic.


Strategic shortest paths

Sometimes, the edges in a graph have personalities: each edge has its own selfish interest. An example is a communication network, in which each edge is a computer that possibly belongs to a different person. Different computers have different transmission speeds, so every edge in the network has a numeric weight equal to the number of milliseconds it takes to transmit a message. Our goal is to send a message between two points in the network in the shortest time possible. If we know the transmission-time of each computer (the weight of each edge), then we can use a standard shortest-paths algorithm. If we do not know the transmission times, then we have to ask each computer to tell us its transmission-time. But, the computers may be selfish: a computer might tell us that its transmission time is very long, so that we will not bother it with our messages. A possible solution to this problem is to use a variant of the VCG mechanism, which gives the computers an incentive to reveal their true weights.


Negative cycle detection

In some cases, the main goal is not to find the shortest path, but only to detect if the graph contains a negative cycle. Some shortest-paths algorithms can be used for this purpose: * The Bellman–Ford algorithm can be used to detect a negative cycle in time O(, V, , E, ). * Cherkassky and Goldberg survey several other algorithms for negative cycle detection.


General algebraic framework on semirings: the algebraic path problem

Many problems can be framed as a form of the shortest path for some suitably substituted notions of addition along a path and taking the minimum. The general approach to these is to consider the two operations to be those of a
semiring In abstract algebra, a semiring is an algebraic structure similar to a ring, but without the requirement that each element must have an additive inverse. The term rig is also used occasionally—this originated as a joke, suggesting that rigs a ...
. Semiring multiplication is done along the path, and the addition is between paths. This general framework is known as the algebraic path problem. Most of the classic shortest-path algorithms (and new ones) can be formulated as solving linear systems over such algebraic structures. More recently, an even more general framework for solving these (and much less obviously related problems) has been developed under the banner of valuation algebras.


Shortest path in stochastic time-dependent networks

In real-life situations, the transportation network is usually stochastic and time-dependent. In fact, a traveler traversing a link daily may experiences different travel times on that link due not only to the fluctuations in travel demand (origin-destination matrix) but also due to such incidents as work zones, bad weather conditions, accidents and vehicle breakdowns. As a result, a stochastic time-dependent (STD) network is a more realistic representation of an actual road network compared with the deterministic one. Despite considerable progress during the course of the past decade, it remains a controversial question how an optimal path should be defined and identified in stochastic road networks. In other words, there is no unique definition of an optimal path under uncertainty. One possible and common answer to this question is to find a path with the minimum expected travel time. The main advantage of using this approach is that efficient shortest path algorithms introduced for the deterministic networks can be readily employed to identify the path with the minimum expected travel time in a stochastic network. However, the resulting optimal path identified by this approach may not be reliable, because this approach fails to address travel time variability. To tackle this issue some researchers use distribution of travel time instead of expected value of it so they find the probability distribution of total travelling time using different optimization methods such as dynamic programming and
Dijkstra's algorithm Dijkstra's algorithm ( ) is an algorithm for finding the shortest paths between nodes in a graph, which may represent, for example, road networks. It was conceived by computer scientist Edsger W. Dijkstra in 1956 and published three years ...
. These methods use
stochastic optimization Stochastic optimization (SO) methods are optimization methods that generate and use random variables. For stochastic problems, the random variables appear in the formulation of the optimization problem itself, which involves random objective fun ...
, specifically stochastic dynamic programming to find the shortest path in networks with probabilistic arc length. The concept of travel time reliability is used interchangeably with travel time variability in the transportation research literature, so that, in general, one can say that the higher the variability in travel time, the lower the reliability would be, and vice versa. In order to account for travel time reliability more accurately, two common alternative definitions for an optimal path under uncertainty have been suggested. Some have introduced the concept of the most reliable path, aiming to maximize the probability of arriving on time or earlier than a given travel time budget. Others, alternatively, have put forward the concept of an α-reliable path based on which they intended to minimize the travel time budget required to ensure a pre-specified on-time arrival probability.


See also

* Bidirectional search, an algorithm that finds the shortest path between two vertices on a directed graph * Euclidean shortest path * Flow network * K shortest path routing * Min-plus matrix multiplication * Pathfinding * Shortest Path Bridging *
Shortest path tree In mathematics and computer science, a shortest-path tree rooted at a vertex ''v'' of a connected, undirected graph ''G'' is a spanning tree ''T'' of ''G'', such that the path distance from root ''v'' to any other vertex ''u'' in ''T'' is the short ...
* TRILL (TRansparent Interconnection of Lots of Links)


References


Notes


Bibliography

* * * * * * * * * * * * * * * * * * * * * * Attributes Dijkstra's algorithm to Minty ("private communication") on p. 225. * Here: vol.A, sect.7.5b, p. 103 * * * * * *


Further reading

* * DTIC AD-661265. {{Authority control Network theory Graph distance Polynomial-time problems Computational problems in graph theory Edsger W. Dijkstra