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Connectivity (graph theory)

In mathematics and computer science, connectivity is one of the basic concepts of graph theory: it asks for the minimum number of elements (nodes or edges) that need to be removed to separate the remaining nodes into two or more isolated subgraphs.[1] It is closely related to the theory of network flow problems. The connectivity of a graph is an important measure of its resilience as a network.

This graph becomes disconnected when the right-most node in the gray area on the left is removed
This graph becomes disconnected when the dashed edge is removed.

Connected vertices and graphs Edit

 
With vertex 0, this graph is disconnected. The rest of the graph is connected.

In an undirected graph G, two vertices u and v are called connected if G contains a path from u to v. Otherwise, they are called disconnected. If the two vertices are additionally connected by a path of length 1, i.e. by a single edge, the vertices are called adjacent.

A graph is said to be connected if every pair of vertices in the graph is connected. This means that there is a path between every pair of vertices. An undirected graph that is not connected is called disconnected. An undirected graph G is therefore disconnected if there exist two vertices in G such that no path in G has these vertices as endpoints. A graph with just one vertex is connected. An edgeless graph with two or more vertices is disconnected.

A directed graph is called weakly connected if replacing all of its directed edges with undirected edges produces a connected (undirected) graph. It is unilaterally connected or unilateral (also called semiconnected) if it contains a directed path from u to v or a directed path from v to u for every pair of vertices u, v.[2] It is strongly connected, or simply strong, if it contains a directed path from u to v and a directed path from v to u for every pair of vertices u, v.

Components and cuts Edit

A connected component is a maximal connected subgraph of an undirected graph. Each vertex belongs to exactly one connected component, as does each edge. A graph is connected if and only if it has exactly one connected component.

The strong components are the maximal strongly connected subgraphs of a directed graph.

A vertex cut or separating set of a connected graph G is a set of vertices whose removal renders G disconnected. The vertex connectivity κ(G) (where G is not a complete graph) is the size of a minimal vertex cut. A graph is called k-vertex-connected or k-connected if its vertex connectivity is k or greater.

More precisely, any graph G (complete or not) is said to be k-vertex-connected if it contains at least k+1 vertices, but does not contain a set of k − 1 vertices whose removal disconnects the graph; and κ(G) is defined as the largest k such that G is k-connected. In particular, a complete graph with n vertices, denoted Kn, has no vertex cuts at all, but κ(Kn) = n − 1.

A vertex cut for two vertices u and v is a set of vertices whose removal from the graph disconnects u and v. The local connectivity κ(u, v) is the size of a smallest vertex cut separating u and v. Local connectivity is symmetric for undirected graphs; that is, κ(u, v) = κ(v, u). Moreover, except for complete graphs, κ(G) equals the minimum of κ(u, v) over all nonadjacent pairs of vertices u, v.

2-connectivity is also called biconnectivity and 3-connectivity is also called triconnectivity. A graph G which is connected but not 2-connected is sometimes called separable.

Analogous concepts can be defined for edges. In the simple case in which cutting a single, specific edge would disconnect the graph, that edge is called a bridge. More generally, an edge cut of G is a set of edges whose removal renders the graph disconnected. The edge-connectivity λ(G) is the size of a smallest edge cut, and the local edge-connectivity λ(u, v) of two vertices u, v is the size of a smallest edge cut disconnecting u from v. Again, local edge-connectivity is symmetric. A graph is called k-edge-connected if its edge connectivity is k or greater.

A graph is said to be maximally connected if its connectivity equals its minimum degree. A graph is said to be maximally edge-connected if its edge-connectivity equals its minimum degree.[3]

Super- and hyper-connectivity Edit

A graph is said to be super-connected or super-κ if every minimum vertex cut isolates a vertex. A graph is said to be hyper-connected or hyper-κ if the deletion of each minimum vertex cut creates exactly two components, one of which is an isolated vertex. A graph is semi-hyper-connected or semi-hyper-κ if any minimum vertex cut separates the graph into exactly two components.[4]

More precisely: a G connected graph is said to be super-connected or super-κ if all minimum vertex-cuts consist of the vertices adjacent with one (minimum-degree) vertex. A G connected graph is said to be super-edge-connected or super-λ if all minimum edge-cuts consist of the edges incident on some (minimum-degree) vertex.[5]

A cutset X of G is called a non-trivial cutset if X does not contain the neighborhood N(u) of any vertex u ∉ X. Then the superconnectivity κ1 of G is:

κ1(G) = min{|X| : X is a non-trivial cutset}.

A non-trivial edge-cut and the edge-superconnectivity λ1(G) are defined analogously.[6]

Menger's theorem Edit

One of the most important facts about connectivity in graphs is Menger's theorem, which characterizes the connectivity and edge-connectivity of a graph in terms of the number of independent paths between vertices.

If u and v are vertices of a graph G, then a collection of paths between u and v is called independent if no two of them share a vertex (other than u and v themselves). Similarly, the collection is edge-independent if no two paths in it share an edge. The number of mutually independent paths between u and v is written as κ′(u, v), and the number of mutually edge-independent paths between u and v is written as λ′(u, v).

Menger's theorem asserts that for distinct vertices u,v, λ(u, v) equals λ′(u, v), and if u is also not adjacent to v then κ(u, v) equals κ′(u, v).[7][8] This fact is actually a special case of the max-flow min-cut theorem.

Computational aspects Edit

The problem of determining whether two vertices in a graph are connected can be solved efficiently using a search algorithm, such as breadth-first search. More generally, it is easy to determine computationally whether a graph is connected (for example, by using a disjoint-set data structure), or to count the number of connected components. A simple algorithm might be written in pseudo-code as follows:

  1. Begin at any arbitrary node of the graph, G
  2. Proceed from that node using either depth-first or breadth-first search, counting all nodes reached.
  3. Once the graph has been entirely traversed, if the number of nodes counted is equal to the number of nodes of G, the graph is connected; otherwise it is disconnected.

By Menger's theorem, for any two vertices u and v in a connected graph G, the numbers κ(u, v) and λ(u, v) can be determined efficiently using the max-flow min-cut algorithm. The connectivity and edge-connectivity of G can then be computed as the minimum values of κ(u, v) and λ(u, v), respectively.

In computational complexity theory, SL is the class of problems log-space reducible to the problem of determining whether two vertices in a graph are connected, which was proved to be equal to L by Omer Reingold in 2004.[9] Hence, undirected graph connectivity may be solved in O(log n) space.

The problem of computing the probability that a Bernoulli random graph is connected is called network reliability and the problem of computing whether two given vertices are connected the ST-reliability problem. Both of these are #P-hard.[10]

Number of connected graphs Edit

The number of distinct connected labeled graphs with n nodes is tabulated in the On-Line Encyclopedia of Integer Sequences as sequence A001187. The first few non-trivial terms are

 
The number and images of connected graphs with 4 nodes
n graphs
1 1
2 1
3 4
4 38
5 728
6 26704
7 1866256
8 251548592

Examples Edit

  • The vertex- and edge-connectivities of a disconnected graph are both 0.
  • 1-connectedness is equivalent to connectedness for graphs of at least 2 vertices.
  • The complete graph on n vertices has edge-connectivity equal to n − 1. Every other simple graph on n vertices has strictly smaller edge-connectivity.
  • In a tree, the local edge-connectivity between every pair of vertices is 1.

Bounds on connectivity Edit

Other properties Edit

See also Edit

References Edit

  1. ^ a b Diestel, R. (2005). "Graph Theory, Electronic Edition". p. 12.
  2. ^ Chapter 11: Digraphs: Principle of duality for digraphs: Definition
  3. ^ Gross, Jonathan L.; Yellen, Jay (2004). Handbook of graph theory. CRC Press. p. 335. ISBN 978-1-58488-090-5.
  4. ^ Liu, Qinghai; Zhang, Zhao (2010-03-01). "The existence and upper bound for two types of restricted connectivity". Discrete Applied Mathematics. 158 (5): 516–521. doi:10.1016/j.dam.2009.10.017.
  5. ^ Gross, Jonathan L.; Yellen, Jay (2004). Handbook of graph theory. CRC Press. p. 338. ISBN 978-1-58488-090-5.
  6. ^ Balbuena, Camino; Carmona, Angeles (2001-10-01). "On the connectivity and superconnectivity of bipartite digraphs and graphs". Ars Combinatorica. 61: 3–22. CiteSeerX 10.1.1.101.1458.
  7. ^ Gibbons, A. (1985). Algorithmic Graph Theory. Cambridge University Press.
  8. ^ Nagamochi, H.; Ibaraki, T. (2008). Algorithmic Aspects of Graph Connectivity. Cambridge University Press.
  9. ^ Reingold, Omer (2008). "Undirected connectivity in log-space". Journal of the ACM. 55 (4): 1–24. doi:10.1145/1391289.1391291. S2CID 207168478.
  10. ^ Provan, J. Scott; Ball, Michael O. (1983). "The complexity of counting cuts and of computing the probability that a graph is connected". SIAM Journal on Computing. 12 (4): 777–788. doi:10.1137/0212053. MR 0721012..
  11. ^ Godsil, C.; Royle, G. (2001). Algebraic Graph Theory. Springer Verlag.
  12. ^ Babai, L. (1996). . Technical Report TR-94-10. University of Chicago. Archived from the original on 2010-06-11. Chapter 27 of The Handbook of Combinatorics.
  13. ^ Balinski, M. L. (1961). "On the graph structure of convex polyhedra in n-space". Pacific Journal of Mathematics. 11 (2): 431–434. doi:10.2140/pjm.1961.11.431.
  14. ^ Dirac, Gabriel Andrew (1960). "In abstrakten Graphen vorhandene vollständige 4-Graphen und ihre Unterteilungen". Mathematische Nachrichten. 22 (1–2): 61–85. doi:10.1002/mana.19600220107. MR 0121311..
  15. ^ Flandrin, Evelyne; Li, Hao; Marczyk, Antoni; Woźniak, Mariusz (2007). "A generalization of Dirac's theorem on cycles through k vertices in k-connected graphs". Discrete Mathematics. 307 (7–8): 878–884. doi:10.1016/j.disc.2005.11.052. MR 2297171..

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In mathematics and computer science connectivity is one of the basic concepts of graph theory it asks for the minimum number of elements nodes or edges that need to be removed to separate the remaining nodes into two or more isolated subgraphs 1 It is closely related to the theory of network flow problems The connectivity of a graph is an important measure of its resilience as a network This graph becomes disconnected when the right most node in the gray area on the left is removedThis graph becomes disconnected when the dashed edge is removed Contents 1 Connected vertices and graphs 2 Components and cuts 2 1 Super and hyper connectivity 3 Menger s theorem 4 Computational aspects 4 1 Number of connected graphs 5 Examples 6 Bounds on connectivity 7 Other properties 8 See also 9 ReferencesConnected vertices and graphs Edit nbsp With vertex 0 this graph is disconnected The rest of the graph is connected In an undirected graph G two vertices u and v are called connected if G contains a path from u to v Otherwise they are called disconnected If the two vertices are additionally connected by a path of length 1 i e by a single edge the vertices are called adjacent A graph is said to be connected if every pair of vertices in the graph is connected This means that there is a path between every pair of vertices An undirected graph that is not connected is called disconnected An undirected graph G is therefore disconnected if there exist two vertices in G such that no path in G has these vertices as endpoints A graph with just one vertex is connected An edgeless graph with two or more vertices is disconnected A directed graph is called weakly connected if replacing all of its directed edges with undirected edges produces a connected undirected graph It is unilaterally connected or unilateral also called semiconnected if it contains a directed path from u to v or a directed path from v to u for every pair of vertices u v 2 It is strongly connected or simply strong if it contains a directed path from u to v and a directed path from v to u for every pair of vertices u v Components and cuts EditA connected component is a maximal connected subgraph of an undirected graph Each vertex belongs to exactly one connected component as does each edge A graph is connected if and only if it has exactly one connected component The strong components are the maximal strongly connected subgraphs of a directed graph A vertex cut or separating set of a connected graph G is a set of vertices whose removal renders G disconnected The vertex connectivity k G where G is not a complete graph is the size of a minimal vertex cut A graph is called k vertex connected or k connected if its vertex connectivity is k or greater More precisely any graph G complete or not is said to be k vertex connected if it contains at least k 1 vertices but does not contain a set of k 1 vertices whose removal disconnects the graph and k G is defined as the largest k such that G is k connected In particular a complete graph with n vertices denoted Kn has no vertex cuts at all but k Kn n 1 A vertex cut for two vertices u and v is a set of vertices whose removal from the graph disconnects u and v The local connectivity k u v is the size of a smallest vertex cut separating u and v Local connectivity is symmetric for undirected graphs that is k u v k v u Moreover except for complete graphs k G equals the minimum of k u v over all nonadjacent pairs of vertices u v 2 connectivity is also called biconnectivity and 3 connectivity is also called triconnectivity A graph G which is connected but not 2 connected is sometimes called separable Analogous concepts can be defined for edges In the simple case in which cutting a single specific edge would disconnect the graph that edge is called a bridge More generally an edge cut of G is a set of edges whose removal renders the graph disconnected The edge connectivity l G is the size of a smallest edge cut and the local edge connectivity l u v of two vertices u v is the size of a smallest edge cut disconnecting u from v Again local edge connectivity is symmetric A graph is called k edge connected if its edge connectivity is k or greater A graph is said to be maximally connected if its connectivity equals its minimum degree A graph is said to be maximally edge connected if its edge connectivity equals its minimum degree 3 Super and hyper connectivity Edit A graph is said to be super connected or super k if every minimum vertex cut isolates a vertex A graph is said to be hyper connected or hyper k if the deletion of each minimum vertex cut creates exactly two components one of which is an isolated vertex A graph is semi hyper connected or semi hyper k if any minimum vertex cut separates the graph into exactly two components 4 More precisely a G connected graph is said to be super connected or super k if all minimum vertex cuts consist of the vertices adjacent with one minimum degree vertex A G connected graph is said to be super edge connected or super l if all minimum edge cuts consist of the edges incident on some minimum degree vertex 5 A cutset X of G is called a non trivial cutset if X does not contain the neighborhood N u of any vertex u X Then the superconnectivity k1 of G is k1 G min X X is a non trivial cutset A non trivial edge cut and the edge superconnectivity l1 G are defined analogously 6 Menger s theorem EditMain article Menger s theorem One of the most important facts about connectivity in graphs is Menger s theorem which characterizes the connectivity and edge connectivity of a graph in terms of the number of independent paths between vertices If u and v are vertices of a graph G then a collection of paths between u and v is called independent if no two of them share a vertex other than u and v themselves Similarly the collection is edge independent if no two paths in it share an edge The number of mutually independent paths between u and v is written as k u v and the number of mutually edge independent paths between u and v is written as l u v Menger s theorem asserts that for distinct vertices u v l u v equals l u v and if u is also not adjacent to v then k u v equals k u v 7 8 This fact is actually a special case of the max flow min cut theorem Computational aspects EditThe problem of determining whether two vertices in a graph are connected can be solved efficiently using a search algorithm such as breadth first search More generally it is easy to determine computationally whether a graph is connected for example by using a disjoint set data structure or to count the number of connected components A simple algorithm might be written in pseudo code as follows Begin at any arbitrary node of the graph G Proceed from that node using either depth first or breadth first search counting all nodes reached Once the graph has been entirely traversed if the number of nodes counted is equal to the number of nodes of G the graph is connected otherwise it is disconnected By Menger s theorem for any two vertices u and v in a connected graph G the numbers k u v and l u v can be determined efficiently using the max flow min cut algorithm The connectivity and edge connectivity of G can then be computed as the minimum values of k u v and l u v respectively In computational complexity theory SL is the class of problems log space reducible to the problem of determining whether two vertices in a graph are connected which was proved to be equal to L by Omer Reingold in 2004 9 Hence undirected graph connectivity may be solved in O log n space The problem of computing the probability that a Bernoulli random graph is connected is called network reliability and the problem of computing whether two given vertices are connected the ST reliability problem Both of these are P hard 10 Number of connected graphs Edit Main article Graph enumeration The number of distinct connected labeled graphs with n nodes is tabulated in the On Line Encyclopedia of Integer Sequences as sequence A001187 The first few non trivial terms are nbsp The number and images of connected graphs with 4 nodesn graphs1 12 13 44 385 7286 267047 18662568 251548592Examples EditThe vertex and edge connectivities of a disconnected graph are both 0 1 connectedness is equivalent to connectedness for graphs of at least 2 vertices The complete graph on n vertices has edge connectivity equal to n 1 Every other simple graph on n vertices has strictly smaller edge connectivity In a tree the local edge connectivity between every pair of vertices is 1 Bounds on connectivity EditThe vertex connectivity of a graph is less than or equal to its edge connectivity That is k G l G Both are less than or equal to the minimum degree of the graph since deleting all neighbors of a vertex of minimum degree will disconnect that vertex from the rest of the graph 1 For a vertex transitive graph of degree d we have 2 d 1 3 k G l G d 11 For a vertex transitive graph of degree d 4 or for any undirected minimal Cayley graph of degree d or for any symmetric graph of degree d both kinds of connectivity are equal k G l G d 12 Other properties EditConnectedness is preserved by graph homomorphisms If G is connected then its line graph L G is also connected A graph G is 2 edge connected if and only if it has an orientation that is strongly connected Balinski s theorem states that the polytopal graph 1 skeleton of a k dimensional convex polytope is a k vertex connected graph 13 Steinitz s previous theorem that any 3 vertex connected planar graph is a polytopal graph Steinitz theorem gives a partial converse According to a theorem of G A Dirac if a graph is k connected for k 2 then for every set of k vertices in the graph there is a cycle that passes through all the vertices in the set 14 15 The converse is true when k 2 See also EditAlgebraic connectivity Cheeger constant graph theory Dynamic connectivity Disjoint set data structure Expander graph Strength of a graphReferences Edit a b Diestel R 2005 Graph Theory Electronic Edition p 12 Chapter 11 Digraphs Principle of duality for digraphs Definition Gross Jonathan L Yellen Jay 2004 Handbook of graph theory CRC Press p 335 ISBN 978 1 58488 090 5 Liu Qinghai Zhang Zhao 2010 03 01 The existence and upper bound for two types of restricted connectivity Discrete Applied Mathematics 158 5 516 521 doi 10 1016 j dam 2009 10 017 Gross Jonathan L Yellen Jay 2004 Handbook of graph theory CRC Press p 338 ISBN 978 1 58488 090 5 Balbuena Camino Carmona Angeles 2001 10 01 On the connectivity and superconnectivity of bipartite digraphs and graphs Ars Combinatorica 61 3 22 CiteSeerX 10 1 1 101 1458 Gibbons A 1985 Algorithmic Graph Theory Cambridge University Press Nagamochi H Ibaraki T 2008 Algorithmic Aspects of Graph Connectivity Cambridge University Press Reingold Omer 2008 Undirected connectivity in log space Journal of the ACM 55 4 1 24 doi 10 1145 1391289 1391291 S2CID 207168478 Provan J Scott Ball Michael O 1983 The complexity of counting cuts and of computing the probability that a graph is connected SIAM Journal on Computing 12 4 777 788 doi 10 1137 0212053 MR 0721012 Godsil C Royle G 2001 Algebraic Graph Theory Springer Verlag Babai L 1996 Automorphism groups isomorphism reconstruction Technical Report TR 94 10 University of Chicago Archived from the original on 2010 06 11 Chapter 27 of The Handbook of Combinatorics Balinski M L 1961 On the graph structure of convex polyhedra in n space Pacific Journal of Mathematics 11 2 431 434 doi 10 2140 pjm 1961 11 431 Dirac Gabriel Andrew 1960 In abstrakten Graphen vorhandene vollstandige 4 Graphen und ihre Unterteilungen Mathematische Nachrichten 22 1 2 61 85 doi 10 1002 mana 19600220107 MR 0121311 Flandrin Evelyne Li Hao Marczyk Antoni Wozniak Mariusz 2007 A generalization of Dirac s theorem on cycles through k vertices in k connected graphs Discrete Mathematics 307 7 8 878 884 doi 10 1016 j disc 2005 11 052 MR 2297171 Retrieved from https en wikipedia org w index php title Connectivity graph theory amp oldid 1179143531, wikipedia, wiki, book, books, library,

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