In the last two decades, the understanding of complex dynamical systems underwent important conceptual shifts. The catalyst was the infusion of new ideas from the theory of critical phenomena (scaling laws, renormalization group, etc.), (multi)fractals and trees, random matrix theory, network theory, and non-Shannonian information theory. The usual Boltzmann–Gibbs statistics were proven to be grossly inadequate in this context. While successful in describing stationary systems characterized by ergodicity or metric transitivity, Boltzmann–Gibbs statistics fail to reproduce the complex statistical behavior of many real-world systems in biology, astrophysics, geology, and the economic and social sciences.The aim of this Special Issue was to ex...
The paper deals with the generalization of both Boltzmann entropy and distribution in the light of m...
These expository notes propose to follow, across fields, some aspects of the concept of entropy. Sta...
The maximum entropy principle (MEP) is a method for obtaining the most likely distribution functions...
In order to measure and quantify the complex behavior of real-world systems, either novel mathematic...
International audienceThese expository notes propose to follow, across fields, some aspects of the c...
A topical research activity in statistical physics concerns the study of complex and disordered syst...
In summary, in the present Special Issue, manuscripts focused on any of the above-mentioned “Informa...
ca. 200 words; this text will present the book in all promotional forms (e.g. flyers). Please descri...
Entropy is ubiquitous in physics, and it plays important roles in numerous other disciplines ranging...
Entropy is ubiquitous in physics, and it plays important roles in numerous other disciplines ranging...
There are at least three distinct ways to conceptualize entropy: entropy as an extensive thermodynam...
We give a survey of the basic statistical ideas underlying the definition of entropy in information...
This book is a collection of outstanding papers on various aspects of entropy at the foundation of q...
In information theory the 4 Shannon-Khinchin (SK) axioms determine Boltzmann Gibbs entropy, S ~ -Sig...
A multi-parametric version of the nonadditive entropy S_q is introduced. This new entropic form, den...
The paper deals with the generalization of both Boltzmann entropy and distribution in the light of m...
These expository notes propose to follow, across fields, some aspects of the concept of entropy. Sta...
The maximum entropy principle (MEP) is a method for obtaining the most likely distribution functions...
In order to measure and quantify the complex behavior of real-world systems, either novel mathematic...
International audienceThese expository notes propose to follow, across fields, some aspects of the c...
A topical research activity in statistical physics concerns the study of complex and disordered syst...
In summary, in the present Special Issue, manuscripts focused on any of the above-mentioned “Informa...
ca. 200 words; this text will present the book in all promotional forms (e.g. flyers). Please descri...
Entropy is ubiquitous in physics, and it plays important roles in numerous other disciplines ranging...
Entropy is ubiquitous in physics, and it plays important roles in numerous other disciplines ranging...
There are at least three distinct ways to conceptualize entropy: entropy as an extensive thermodynam...
We give a survey of the basic statistical ideas underlying the definition of entropy in information...
This book is a collection of outstanding papers on various aspects of entropy at the foundation of q...
In information theory the 4 Shannon-Khinchin (SK) axioms determine Boltzmann Gibbs entropy, S ~ -Sig...
A multi-parametric version of the nonadditive entropy S_q is introduced. This new entropic form, den...
The paper deals with the generalization of both Boltzmann entropy and distribution in the light of m...
These expository notes propose to follow, across fields, some aspects of the concept of entropy. Sta...
The maximum entropy principle (MEP) is a method for obtaining the most likely distribution functions...