Information-theoretic-based measures have been useful in quantifying network complexity. Here we briefly survey and contrast (algorithmic) information-theoretic methods which have been used to characterize graphs and networks. We illustrate the strengths and limitations of Shannon’s entropy, lossless compressibility and algorithmic complexity when used to identify aspects and properties of complex networks. We review the fragility of computable measures on the one hand and the invariant properties of algorithmic measures on the other demonstrating how current approaches to algorithmic complexity are misguided and suffer of similar limitations than traditional statistical approaches such as Shannon entropy. Finally, we review some curr...
We consider the graph representation of the stochastic model with n binary variables, and develop an...
This paper explores relationships between classical and parametric measures of graph (or network) co...
The degree-based network entropy which is inspired by Shannon’s entropy concept becomes the informat...
One of the most popular methods of estimating the complexity of networks is to measure the entropy o...
A common practice in the estimation of the complexity of objects, in particular of graphs, is to rel...
This paper presents a taxonomy and overview of approaches to the measurement of graph and network co...
A great deal of work in recent years has been devoted to the topic of \complexity, ' its measur...
Quantitative graph analysis by using structural indices has been intricate in a sense that it often ...
Part 1: Cross-Domain Conference and Workshop on Multidisciplinary Research and Practice for Informat...
This paper aims to investigate information-theoretic network complexity measures which have already ...
peer reviewedInformation entropy metrics have been applied to a wide range of problems that were abs...
Understanding the structure and the dynamics of networks is of paramount importance for many scienti...
A central issue in the science of complex systems is the quantitative characterization of complexity...
Complexity is a catchword of certain extremely popular and rapidly devel oping interdisciplinary ne...
A vast variety of biological, social, and economical networks shows topologies drastically differing...
We consider the graph representation of the stochastic model with n binary variables, and develop an...
This paper explores relationships between classical and parametric measures of graph (or network) co...
The degree-based network entropy which is inspired by Shannon’s entropy concept becomes the informat...
One of the most popular methods of estimating the complexity of networks is to measure the entropy o...
A common practice in the estimation of the complexity of objects, in particular of graphs, is to rel...
This paper presents a taxonomy and overview of approaches to the measurement of graph and network co...
A great deal of work in recent years has been devoted to the topic of \complexity, ' its measur...
Quantitative graph analysis by using structural indices has been intricate in a sense that it often ...
Part 1: Cross-Domain Conference and Workshop on Multidisciplinary Research and Practice for Informat...
This paper aims to investigate information-theoretic network complexity measures which have already ...
peer reviewedInformation entropy metrics have been applied to a wide range of problems that were abs...
Understanding the structure and the dynamics of networks is of paramount importance for many scienti...
A central issue in the science of complex systems is the quantitative characterization of complexity...
Complexity is a catchword of certain extremely popular and rapidly devel oping interdisciplinary ne...
A vast variety of biological, social, and economical networks shows topologies drastically differing...
We consider the graph representation of the stochastic model with n binary variables, and develop an...
This paper explores relationships between classical and parametric measures of graph (or network) co...
The degree-based network entropy which is inspired by Shannon’s entropy concept becomes the informat...