True scale-free networks hidden by finite size effects
ORAL
Abstract
We analyze about two hundred naturally occurring networks with distinct dynamical origins to formally test whether the commonly assumed hypothesis of an underlying scale-free structure is generally viable. This has recently been questioned on the basis of statistical testing of the validity of power law distributions of network degrees. Specifically, we analyze by finite-size scaling analysis the datasets of real networks to check whether the purported departures from power law behavior are due to the finiteness of sample size. We find that a large number of the networks follow a finite size scaling hypothesis without any self-tuning. This is the case of biological protein interaction networks, technological computer and hyperlink networks, and informational networks in general. Marked deviations appear in other cases, especially involving infrastructure and transportation but also in social networks. We conclude that underlying scale invariance properties of many naturally occurring networks are extant features often clouded by finite-size effects due to the nature of the sample data.
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Presenters
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Guido Caldarelli
University of Venice Ca'Foscari
Authors
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Guido Caldarelli
University of Venice Ca'Foscari
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matteo serafino
Networks, IMT Lucca, IMT Alti Studi Lucca
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Giulio Cimini
Physics, University of Rome "Tor Vergata"
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Amos Maritan
Physics, University of Padua, Università di Padova, Dipartimento di Fisica e Astronomia; INFN, via Marzolo 8, 9 35131 Padova, Italy
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Andrea Rinaldo
EPFL
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Samir suweis
Physics, University of Padua
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Jayanth Banavar
Physics, University of Oregon, University of Oregon