A vast variety of biological, social, and economical networks shows topologies drastically differing from random graphs; yet the quantitative characterization remains unsatisfactory from a conceptual point of view. Motivated from the discussion of small scale-free networks, a biased link distribution entropy is defined, which takes an extremum for a power-law distribution. This approach is extended to the node-node link cross-distribution, whose nondiagonal elements characterize the graph structure beyond link distribution, cluster coefficient and average path length. From here a simple (and computationally cheap) complexity measure can be defined. This offdiagonal complexity (OdC) is proposed as a novel measure to characterize the complexi...
Scale-free networks are a recently developed approach to modeling the interactions found in complex ...
peer reviewedWe describe some new conceptual tools for the rigorous, mathematical description of the...
One of the most popular methods of estimating the complexity of networks is to measure the entropy o...
A vast variety of biological, social, and economical networks shows topologies drastically differing...
Information-theoretic-based measures have been useful in quantifying network complexity. Here we bri...
BACKGROUND: Networks or graphs play an important role in the biological sciences. Protein interactio...
<p>Random, small-world and scale-free networks containing 20 nodes and 73 connections were generated...
As for many complex systems, network structures are important as their backbone. From research on dy...
This paper presents a taxonomy and overview of approaches to the measurement of graph and network co...
We show that numerical approximations of Kolmogorov complexity (K) of graphs and networks capture so...
Complex networks are everywhere. Many phenomena in nature can be modeled as networks: - brain struct...
Throughout the years, measuring the complexity of networks and graphs has been of great interest to ...
Network complexity has been studied for over half a century and has found a wide range of applicatio...
A common practice in the estimation of the complexity of objects, in particular of graphs, is to rel...
This paper explores relationships between classical and parametric measures of graph (or network) co...
Scale-free networks are a recently developed approach to modeling the interactions found in complex ...
peer reviewedWe describe some new conceptual tools for the rigorous, mathematical description of the...
One of the most popular methods of estimating the complexity of networks is to measure the entropy o...
A vast variety of biological, social, and economical networks shows topologies drastically differing...
Information-theoretic-based measures have been useful in quantifying network complexity. Here we bri...
BACKGROUND: Networks or graphs play an important role in the biological sciences. Protein interactio...
<p>Random, small-world and scale-free networks containing 20 nodes and 73 connections were generated...
As for many complex systems, network structures are important as their backbone. From research on dy...
This paper presents a taxonomy and overview of approaches to the measurement of graph and network co...
We show that numerical approximations of Kolmogorov complexity (K) of graphs and networks capture so...
Complex networks are everywhere. Many phenomena in nature can be modeled as networks: - brain struct...
Throughout the years, measuring the complexity of networks and graphs has been of great interest to ...
Network complexity has been studied for over half a century and has found a wide range of applicatio...
A common practice in the estimation of the complexity of objects, in particular of graphs, is to rel...
This paper explores relationships between classical and parametric measures of graph (or network) co...
Scale-free networks are a recently developed approach to modeling the interactions found in complex ...
peer reviewedWe describe some new conceptual tools for the rigorous, mathematical description of the...
One of the most popular methods of estimating the complexity of networks is to measure the entropy o...