Here we present the entropic dynamics formalism for networks. That is, a framework for the dynamics of graphs meant to represent a network derived from the principle of maximum entropy and the rate of transition is obtained taking into account the natural information geometry of probability distributions. We apply this framework to the Gibbs distribution of random graphs obtained with constraints on the node connectivity. The information geometry for this graph ensemble is calculated and the dynamical process is obtained as a diffusion equation. We compare the steady state of this dynamics to degree distributions found on real-world networks
We consider a Gaussian statistical model whose parameter space is given by the variances of random v...
We consider a Gaussian statistical model whose parameter space is given by the variances of random v...
Entropy production (EP) is a fundamental quantity useful for understanding irreversible process. In ...
This thesis presents a new type of dynamical entropy, defined by the movement of particles beetween ...
Using an information theoretic point of view, we investigate how a dynamics acting on a network can ...
Using an information theoretic point of view, we investigate how a dynamics acting on a network can ...
The past recent years have seen a large increase in the study of complex networks. This interest has...
We analyze complexity in spatial network ensembles through the lens of graph entropy. Mathematically...
A novel Markovian network evolution model is introduced and analysed by means of information theory....
We analyze complexity in spatial network ensembles through the lens of graph entropy. Mathematically...
Abstract. Generalised degrees provide a natural bridge between local and global topological properti...
Entropic Dynamics is a framework in which dynamical laws are derived as an application of entropic m...
22 pages, LateX, no figureUsing a maximum entropy principle to assign a statistical weight to any gr...
Abstract. In this article we give an in depth overview of the recent advances in the field of equili...
We consider a Gaussian statistical model whose parameter space is given by the variances of random v...
We consider a Gaussian statistical model whose parameter space is given by the variances of random v...
We consider a Gaussian statistical model whose parameter space is given by the variances of random v...
Entropy production (EP) is a fundamental quantity useful for understanding irreversible process. In ...
This thesis presents a new type of dynamical entropy, defined by the movement of particles beetween ...
Using an information theoretic point of view, we investigate how a dynamics acting on a network can ...
Using an information theoretic point of view, we investigate how a dynamics acting on a network can ...
The past recent years have seen a large increase in the study of complex networks. This interest has...
We analyze complexity in spatial network ensembles through the lens of graph entropy. Mathematically...
A novel Markovian network evolution model is introduced and analysed by means of information theory....
We analyze complexity in spatial network ensembles through the lens of graph entropy. Mathematically...
Abstract. Generalised degrees provide a natural bridge between local and global topological properti...
Entropic Dynamics is a framework in which dynamical laws are derived as an application of entropic m...
22 pages, LateX, no figureUsing a maximum entropy principle to assign a statistical weight to any gr...
Abstract. In this article we give an in depth overview of the recent advances in the field of equili...
We consider a Gaussian statistical model whose parameter space is given by the variances of random v...
We consider a Gaussian statistical model whose parameter space is given by the variances of random v...
We consider a Gaussian statistical model whose parameter space is given by the variances of random v...
Entropy production (EP) is a fundamental quantity useful for understanding irreversible process. In ...