We propose a method to derive the stationary size distributions of a system, and the degree distributions of networks, using maximisation of the Gibbs-Shannon entropy. We apply this to a preferential attachment-type algorithm for systems of constant size, which contains exit of balls and urns (or nodes and edges for the network case). Knowing mean size (degree) and turnover rate, the power law exponent and exponential cutoff can be derived. Our results are confirmed by simulations and by computation of exact probabilities. We also apply this entropy method to reproduce existing results like the Maxwell-Boltzmann distribution for the velocity of gas particles, the Barabasi-Albert model and multiplicative noise systems
Entropy is a fundamental concept in science. It describes the disorder, randomness, and uncertainty ...
Barabási–Albert’s “Scale Free” model is the starting point for much of the accepted theory of the ev...
Consider the problem of estimating the Shannon entropy of a distribution over k elements from n inde...
AbstractIn this Letter we investigate a connection between Kaniadakis power-law statistics and netwo...
Maximum entropy models are increasingly being used to describe the collective activity of neural pop...
We give a characterization of Maximum Entropy/Minimum Relative Entropy inference by providing two ‘s...
We study the notion of approximate entropy within the framework of network theory. Approximate entro...
Some problems occurring in Expert Systems can be resolved by employing a causal (Bayesian) network a...
Maximum entropy models are increasingly being used to describe the collective activity of neural pop...
Probability distributions having power-law tails are observed in a broad range of social, economic, ...
Estimation of Distribution Algorithms (EDA) have been proposed as an extension of genetic algorithms...
In the field of optimization using probabilistic models of the search space, this thesis identifies ...
Properties of networks are often characterized in terms of features such as node degree distribution...
Many real systems can be represented as networks, and their study can unveil hidden information and...
In this thesis, we address problems in complex networks using the methods of statistical mechanics a...
Entropy is a fundamental concept in science. It describes the disorder, randomness, and uncertainty ...
Barabási–Albert’s “Scale Free” model is the starting point for much of the accepted theory of the ev...
Consider the problem of estimating the Shannon entropy of a distribution over k elements from n inde...
AbstractIn this Letter we investigate a connection between Kaniadakis power-law statistics and netwo...
Maximum entropy models are increasingly being used to describe the collective activity of neural pop...
We give a characterization of Maximum Entropy/Minimum Relative Entropy inference by providing two ‘s...
We study the notion of approximate entropy within the framework of network theory. Approximate entro...
Some problems occurring in Expert Systems can be resolved by employing a causal (Bayesian) network a...
Maximum entropy models are increasingly being used to describe the collective activity of neural pop...
Probability distributions having power-law tails are observed in a broad range of social, economic, ...
Estimation of Distribution Algorithms (EDA) have been proposed as an extension of genetic algorithms...
In the field of optimization using probabilistic models of the search space, this thesis identifies ...
Properties of networks are often characterized in terms of features such as node degree distribution...
Many real systems can be represented as networks, and their study can unveil hidden information and...
In this thesis, we address problems in complex networks using the methods of statistical mechanics a...
Entropy is a fundamental concept in science. It describes the disorder, randomness, and uncertainty ...
Barabási–Albert’s “Scale Free” model is the starting point for much of the accepted theory of the ev...
Consider the problem of estimating the Shannon entropy of a distribution over k elements from n inde...