Publication Date:
2017
abstract:
We investigate different mean-field-like approximations for stochastic dynamics on graphs, within the framework of a cluster-variational approach. In analogy with its equilibrium counterpart, this approach allows one to give a unified view of various (previously known) approximation schemes, and suggests quite a systematic way to improve the level of accuracy. We compare the different approximations with Monte Carlo simulations on a reversible (susceptible-infected-susceptible) discrete-time epidemic-spreading model on random graphs.
Iris type:
01.01 Articolo in rivista
Keywords:
ynamical processes; stochastic processes; stationary states; random graphs; networks
List of contributors:
Pretti, Marco
Published in: