Discovering universal statistical laws of complex networks
Stefano Cardanobile, Volker Pernice, Moritz Deger, Stefan Rotter

TL;DR
This paper investigates the universal statistical laws of complex networks by comparing various models and real-world data, revealing common constraints and enabling global property estimation from local features.
Contribution
It identifies generic statistical dependencies across different network classes and demonstrates their applicability to real-world networks, including neural and metabolic systems.
Findings
Existence of universal statistical dependencies in complex networks
Regression models can predict global features from local network characteristics
Real-world networks conform to the statistical relations derived from models
Abstract
Different network models have been suggested for the topology underlying complex interactions in natural systems. These models are aimed at replicating specific statistical features encountered in real-world networks. However, it is rarely considered to which degree the results obtained for one particular network class can be extrapolated to real-world networks. We address this issue by comparing different classical and more recently developed network models with respect to their generalisation power, which we identify with large structural variability and absence of constraints imposed by the construction scheme. After having identified the most variable networks, we address the issue of which constraints are common to all network classes and are thus suitable candidates for being generic statistical laws of complex networks. In fact, we find that generic, not model-related…
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