Sample-to-sample fluctuations in real-network ensembles
Abstract
Network modeling based on ensemble averages tacitly assumes that the networks meant to be modeled are typical in the ensemble. Previous research on network eigenvalues, which govern a range of dynamical phenomena, has shown that this is indeed the case for uncorrelated networks with minimum degree . Here we focus on real networks, which generally have both structural correlations and low-degree nodes. We show that: (i) the ensemble distribution of the dynamically most important eigenvalues can be not only broad and far apart from the real eigenvalue but also highly structured, often with a multimodal rather than bell-shaped form; (ii) these interesting properties are found to be due to low-degree nodes, mainly those with degree , and network communities, which is a common form of structural correlation found in real networks. In addition to having implications for ensemble-based approaches, this shows that low-degree nodes may have a stronger influence on collective dynamics than previously anticipated from the study of computer-generated networks.
Cite
@article{arxiv.1111.6118,
title = {Sample-to-sample fluctuations in real-network ensembles},
author = {Nicole Carlson and Dong-Hee Kim and Adilson E. Motter},
journal= {arXiv preprint arXiv:1111.6118},
year = {2011}
}