Mean-field analysis is an important tool for understanding dynamics on complex networks. However, surprisingly little attention has been paid to the question of whether mean-field predictions are accurate, and this is particularly true for real-world networks with clustering and modular structure. In this paper, we compare mean-field predictions to numerical simulation results for dynamical processes running on 21 real-world networks and demonstrate that the accuracy of such theory depends not only on the mean degree of the networks but also on the mean first-neighbor degree. We show that mean-field theory can give (unexpectedly) accurate results for certain dynamics on disassortative real-world networks even when the mean degree is as low ...
To be able to understand how infectious diseases spread on networks, it is important to understand t...
To be able to understand how infectious diseases spread on networks, it is important to understand t...
Mean field theory models of percolation on networks provide analytic estimates of network robustness...
Mean-field analysis is an important tool for understanding dynamics on complex networks. However, su...
Collective dynamics on small-world networks emerge in a broad range of systems with their spectra ch...
Diffusion is a key element of a large set of phenomena occurring on natural and social systems model...
The mean field algorithm is a widely used approximate inference algorithm for graphical models whose...
The mean field algorithm is a widely used approximate inference algorithm for graphical models whose...
Mean-field approximations (MFAs) are frequently used in physics. When a process (such as an epidemic...
We demonstrate that a tree-based theory for various dynamical processes operating on static, undirec...
© The Author(s) 2015. This article is published with open access at Springerlink.com Abstract Cluste...
The study of the dynamics of large, complex networks is generally very hard. Analytical solutions ar...
Collective dynamics on small-world networks emerge in a broad range of systems with their spectra ch...
We demonstrate that a tree-based theory for various dynamical processes operating on static, undirec...
I will present comparisons between large-scale stochastic simulations and mean-field theories for th...
To be able to understand how infectious diseases spread on networks, it is important to understand t...
To be able to understand how infectious diseases spread on networks, it is important to understand t...
Mean field theory models of percolation on networks provide analytic estimates of network robustness...
Mean-field analysis is an important tool for understanding dynamics on complex networks. However, su...
Collective dynamics on small-world networks emerge in a broad range of systems with their spectra ch...
Diffusion is a key element of a large set of phenomena occurring on natural and social systems model...
The mean field algorithm is a widely used approximate inference algorithm for graphical models whose...
The mean field algorithm is a widely used approximate inference algorithm for graphical models whose...
Mean-field approximations (MFAs) are frequently used in physics. When a process (such as an epidemic...
We demonstrate that a tree-based theory for various dynamical processes operating on static, undirec...
© The Author(s) 2015. This article is published with open access at Springerlink.com Abstract Cluste...
The study of the dynamics of large, complex networks is generally very hard. Analytical solutions ar...
Collective dynamics on small-world networks emerge in a broad range of systems with their spectra ch...
We demonstrate that a tree-based theory for various dynamical processes operating on static, undirec...
I will present comparisons between large-scale stochastic simulations and mean-field theories for th...
To be able to understand how infectious diseases spread on networks, it is important to understand t...
To be able to understand how infectious diseases spread on networks, it is important to understand t...
Mean field theory models of percolation on networks provide analytic estimates of network robustness...