Entropy of labeled versus unlabeled networks

Jeremy Paton, Harrison Hartle, Huck Stepanyants, Pim van der Hoorn, Dmitri Krioukov

Onderzoeksoutput: Bijdrage aan tijdschriftTijdschriftartikelAcademicpeer review

4 Citaten (Scopus)
106 Downloads (Pure)

Samenvatting

The structure of a network is an unlabeled graph, yet graphs in most models of complex networks are labeled by meaningless random integers. Is the associated labeling noise always negligible, or can it overpower the network-structural signal? To address this question, we introduce and consider the sparse unlabeled versions of popular network models and compare their entropy against the original labeled versions. We show that labeled and unlabeled Erdos-Rényi graphs are entropically equivalent, even though their degree distributions are very different. The labeled and unlabeled versions of the configuration model may have different prefactors in their leading entropy terms, although this remains conjectural. Our main results are upper and lower bounds for the entropy of labeled and unlabeled one-dimensional random geometric graphs. We show that their unlabeled entropy is negligible in comparison with the labeled entropy. This means that in sparse networks the entropy of meaningless labeling may dominate the entropy of the network structure. The main implication of this result is that the common practice of using exchangeable models to reason about real-world networks with distinguishable nodes may introduce uncontrolled aberrations into conclusions made about these networks, suggesting a need for a thorough reexamination of the statistical foundations and key results of network science.

Originele taal-2Engels
Artikelnummer054308
Aantal pagina's11
TijdschriftPhysical Review E
Volume106
Nummer van het tijdschrift5
DOI's
StatusGepubliceerd - 17 nov. 2022

Bibliografische nota

Funding Information:
We thank O. Kallenberg, Y. Peres, M. Rácz, Z. Burda, P. Krapivsky, N. Wormald, T. Łuczak, F. Radicchi, and G. Bianconi for useful discussions and suggestions. This work was supported by the NSF Grant No. IIS-1741355.

Publisher Copyright:
© 2022 American Physical Society.

Financiering

We thank O. Kallenberg, Y. Peres, M. Rácz, Z. Burda, P. Krapivsky, N. Wormald, T. Łuczak, F. Radicchi, and G. Bianconi for useful discussions and suggestions. This work was supported by the NSF Grant No. IIS-1741355.

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