Structure of shells in complex networks
Jia Shao, Sergey V. Buldyrev, Lidia A. Braunstein, Shlomo Havlin, and, H. Eugene Stanley

TL;DR
This paper analyzes the shell structure of complex networks, deriving analytical expressions for node distributions outside shells, and introduces a correlation function to classify networks based on connectivity and transport properties.
Contribution
It provides a new analytical framework for understanding shell structures and network correlations, explaining power-law distributions in shells and classifying networks by connectivity.
Findings
Derived analytical degree distributions outside shells.
Introduced correlation function c(r_ell) for network classification.
Identified two classes of networks: well-connected and poorly-connected.
Abstract
In a network, we define shell as the set of nodes at distance with respect to a given node and define as the fraction of nodes outside shell . In a transport process, information or disease usually diffuses from a random node and reach nodes shell after shell. Thus, understanding the shell structure is crucial for the study of the transport property of networks. For a randomly connected network with given degree distribution, we derive analytically the degree distribution and average degree of the nodes residing outside shell as a function of . Further, we find that follows an iterative functional form , where is expressed in terms of the generating function of the original degree distribution of the network. Our results can explain the power-law distribution of the number of nodes found in…
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