Split (graph theory) explained

In graph theory, a split of an undirected graph is a cut whose cut-set forms a complete bipartite graph. A graph is prime if it has no splits. The splits of a graph can be collected into a tree-like structure called the split decomposition or join decomposition, which can be constructed in linear time. This decomposition has been used for fast recognition of circle graphs and distance-hereditary graphs, as well as for other problems in graph algorithms.

Splits and split decompositions were first introduced by, who also studied variants of the same notions for directed graphs.[1]

Definitions

A cut of an undirected graph is a partition of the vertices into two nonempty subsets, the sides of the cut. The subset of edges that have one endpoint in each side is called a cut-set. When a cut-set forms a complete bipartite graph, its cut is called a split. Thus, a split can be described as a partition of the vertices of the graph into two subsets and, such that every neighbor of in is adjacent to every neighbor of in .[2]

A cut or split is trivial when one of its two sides has only one vertex in it; every trivial cut is a split. A graph is said to be prime (with respect to splits) if it has no nontrivial splits.[2]

Two splits are said to cross if each side of one split has a non-empty intersection with each side of the other split. A split is called strong when it is not crossed by any other split. As a special case, every trivial split is strong. The strong splits of a graph give rise to a structure called the split decomposition or join decomposition of the graph. This decomposition can be represented by a tree whose leaves correspond one-to-one with the given graph, and whose edges correspond one-to-one with the strong splits of the graph, such that the partition of leaves formed by removing any edge from the tree is the same as the partition of vertices given by the associated strong split.[2]

Each internal node of the split decomposition tree of a graph is associated with a graph, called the quotient graph for node . The quotient graph can be formed by deleting from the tree, forming subsets of vertices in corresponding to the leaves in each of the resulting subtrees, and collapsing each of these vertex sets into a single vertex. Every quotient graph has one of three forms: it may be a prime graph, a complete graph, or a star.[2]

A graph may have exponentially many different splits, but they are all represented in the split decomposition tree, either as an edge of the tree (for a strong split) or as an arbitrary partition of a complete or star quotient graph (for a split that is not strong).[2]

Examples

In a complete graph or complete bipartite graph, every cut is a split.

In a cycle graph of length four, the partition of the vertices given by 2-coloring the cycle is a nontrivial split, but for cycles of any longer length there are no nontrivial splits.

A bridge of a graph that is not 2-edge-connected corresponds to a split, with each side of the split formed by the vertices on one side of the bridge. The cut-set of the split is just the single bridge edge, which is a special case of a complete bipartite subgraph. Similarly, if is an articulation point of a graph that is not 2-vertex-connected, then the graph has multiple splits in which and some but not all of the components formed by its deletion are on one side, and the remaining components are on the other side. In these examples, the cut-set of the split forms a star.

Algorithms

already showed that it is possible to find the split decomposition in polynomial time.[1] After subsequent improvements to the algorithm,[3] [4] linear time algorithms were discovered by [5] and .[2]

Applications

Split decomposition has been applied in the recognition of several important graph classes:

Split decomposition has also been used to simplify the solution of some problems that are NP-hard on arbitrary graphs:[9]

These methods can lead to polynomial time algorithms for graphs in which each quotient graph has a simple structure that allows its subproblem to be computed efficiently. For instance, this is true of the graphs in which each quotient graph has constant size.[9]

Notes and References

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