Graph entropy

In information theory, the graph entropy is a measure of the information rate achievable by communicating symbols over a channel in which certain pairs of values may be confused.[1] This measure, first introduced by Körner in the 1970s,,[2][3] has since also proven itself useful in other settings, including combinatorics.[4]

Definition

Let be an undirected graph. The graph entropy of , denoted is defined as

where is chosen uniformly from , is an independent set in G, and is the mutual information of and .

Properties

Additionally, simple formulas exist for certain families classes of graphs.

Example

Here, we use properties of graph entropy to provide a simple proof that a complete graph on vertices cannot be expressed as the union of fewer than bipartite graphs.

Proof By monotonicity, no bipartite graph can have graph entropy greater than that of a complete bipartite graph, which is bounded by . Thus, by sub-additivity, the union of bipartite graphs cannot have entropy greater than . Now let be a complete graph on vertices. By the properties listed above, . Therefore, the union of fewer than bipartite graphs cannot have the same entropy as , so cannot be expressed as such a union.

Notes

  1. Matthias Dehmer; Abbe Mowshowitz; Frank Emmert-Streib (21 June 2013). Advances in Network Complexity. John Wiley & Sons. pp. 186–. ISBN 978-3-527-67048-2.
  2. Körner, János (1973). "Coding of an information source having ambiguous alphabet and the entropy of graphs.". 6th Prague conference on information theory: 411–425.
  3. Niels da Vitoria Lobo; Takis Kasparis; Michael Georgiopoulos (24 November 2008). Structural, Syntactic, and Statistical Pattern Recognition: Joint IAPR International Workshop, SSPR & SPR 2008, Orlando, USA, December 4-6, 2008. Proceedings. Springer Science & Business Media. pp. 237–. ISBN 978-3-540-89688-3.
  4. Bernadette Bouchon; Lorenza Saitta; Ronald R. Yager (8 June 1988). Uncertainty and Intelligent Systems: 2nd International Conference on Information Processing and Management of Uncertainty in Knowledge Based Systems IPMU '88. Urbino, Italy, July 4-7, 1988. Proceedings. Springer Science & Business Media. pp. 112–. ISBN 978-3-540-19402-6.

General References

This article is issued from Wikipedia - version of the 11/16/2016. The text is available under the Creative Commons Attribution/Share Alike but additional terms may apply for the media files.