A popular approach for describing the structure of many complex networks focuses on graph theoretic properties that characterize their large-scale connectivity. While it is generally recognized that such descriptions based on aggregate statistics do not uniquely characterize a particular graph and also that many such statistical features are interdependent, the relationship between competing descriptions is not entirely understood. This paper lends perspective on this problem by showing how the degree sequence and other constraints (e.g., connectedness, no self-loops or parallel edges) on a particular graph play a primary role in dictating many features, including its correlation structure. Building on recent work, we show how a simple structural metric characterizes key differences between graphs having the same degree sequence. More broadly, we show how the (often implicit) choice of a background set against which to measure graph features has serious implications for the interpretation and comparability of graph theoretic descriptions.
%0 Journal Article
%1 Alderson2007Diversity
%A Alderson, David L.
%A Li, Lun
%D 2007
%I American Physical Society
%J Physical Review E
%K degree\_distributions, networks correlations
%N 4
%P 046102+
%R 10.1103/physreve.75.046102
%T Diversity of graphs with highly variable connectivity
%U http://dx.doi.org/10.1103/physreve.75.046102
%V 75
%X A popular approach for describing the structure of many complex networks focuses on graph theoretic properties that characterize their large-scale connectivity. While it is generally recognized that such descriptions based on aggregate statistics do not uniquely characterize a particular graph and also that many such statistical features are interdependent, the relationship between competing descriptions is not entirely understood. This paper lends perspective on this problem by showing how the degree sequence and other constraints (e.g., connectedness, no self-loops or parallel edges) on a particular graph play a primary role in dictating many features, including its correlation structure. Building on recent work, we show how a simple structural metric characterizes key differences between graphs having the same degree sequence. More broadly, we show how the (often implicit) choice of a background set against which to measure graph features has serious implications for the interpretation and comparability of graph theoretic descriptions.
@article{Alderson2007Diversity,
abstract = {{A popular approach for describing the structure of many complex networks focuses on graph theoretic properties that characterize their large-scale connectivity. While it is generally recognized that such descriptions based on aggregate statistics do not uniquely characterize a particular graph and also that many such statistical features are interdependent, the relationship between competing descriptions is not entirely understood. This paper lends perspective on this problem by showing how the degree sequence and other constraints (e.g., connectedness, no self-loops or parallel edges) on a particular graph play a primary role in dictating many features, including its correlation structure. Building on recent work, we show how a simple structural metric characterizes key differences between graphs having the same degree sequence. More broadly, we show how the (often implicit) choice of a background set against which to measure graph features has serious implications for the interpretation and comparability of graph theoretic descriptions.}},
added-at = {2019-06-10T14:53:09.000+0200},
author = {Alderson, David L. and Li, Lun},
biburl = {https://www.bibsonomy.org/bibtex/294431231779b6be27fad297b91d7027e/nonancourt},
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citeulike-linkout-3 = {http://link.aps.org/abstract/PRE/v75/i4/e046102},
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doi = {10.1103/physreve.75.046102},
interhash = {810d414c659f442eb4bf9935d7dfa5da},
intrahash = {94431231779b6be27fad297b91d7027e},
journal = {Physical Review E},
keywords = {degree\_distributions, networks correlations},
month = apr,
number = 4,
pages = {046102+},
posted-at = {2009-09-01 15:26:37},
priority = {2},
publisher = {American Physical Society},
timestamp = {2019-08-01T16:14:30.000+0200},
title = {{Diversity of graphs with highly variable connectivity}},
url = {http://dx.doi.org/10.1103/physreve.75.046102},
volume = 75,
year = 2007
}