Symmetry in complex networks (Q5892429)
From MaRDI portal
scientific article; zbMATH DE number 6714430
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Symmetry in complex networks |
scientific article; zbMATH DE number 6714430 |
Statements
Symmetry in complex networks (English)
0 references
12 May 2017
0 references
Summary: In this paper, we analyze a few interrelated concepts about graphs, such as their degree, entropy, or their symmetry/asymmetry levels. These concepts prove useful in the study of different types of Systems, and particularly, in the analysis of Complex Networks. A System can be defined as any set of components functioning together as a whole. A systemic point of view allows us to isolate a part of the world, and so, we can focus on those aspects that interact more closely than others. Network Science analyzes the interconnections among diverse networks from different domains: physics, engineering, biology, semantics, and so on. Current developments in the quantitative analysis of Complex Networks, based on graph theory, have been rapidly translated to studies of brain network organization. The brain's systems have complex network features -- such as the small-world topology, highly connected hubs and modularity. These networks are not random. The topology of many different networks shows striking similarities, such as the scale-free structure, with the degree distribution following a Power Law. How can very different systems have the same underlying topological features? Modeling and characterizing these networks, looking for their governing laws, are the current lines of research. So, we will dedicate this Special Issue paper to show measures of symmetry in Complex Networks, and highlight their close relation with measures of information and entropy.
0 references
graph theory
0 references
applications of graph theory
0 references
fuzzy sets
0 references
fuzzy logic
0 references
fuzzy topology
0 references
fuzzy measure theory
0 references
fuzzy real analysis
0 references
small world graphs
0 references
complex networks
0 references
artificial intelligence
0 references