The study of complex networks led to the belief that the connectivity of network nodes generally follows a Power-law distribution. In this work, we show that modeling large-scale online social networks using a Power-law distribution produces significant fitting errors. We propose the use of a more accurate node degree distribution model based on the Pareto-Lognormal distribution. Using large datasets gathered from Facebook, we show that the Power-law curve produces a significant over-estimation of the number of high degree nodes, leading researchers to erroneous designs for a number of social applications and systems, including shortest-path prediction, community detection, and influence maximization. We provide a formal proof of the error reduction using the Pareto-Lognormal distribution, which we envision will have strong implications on the correctness of social systems and applications.

Revisiting the power-law degree distribution for social graph analysis / A. Sala, H. Zheng, B. Y. Zhao, S. Gaito, G. P. Rossi - In: PODC '10 : ACM symposium on principles of distributed computing, Zurich, Switzerland, july 25 - 28, 2010New York : ACM, 2010 Jul. - ISBN 9781605588889. - pp. 400-401 (( Intervento presentato al 29th. convegno Annual ACM SIGACT-SIGOPS Symposium on Principles of Distributed Computing tenutosi a Zurigo, CH nel 2010.

Revisiting the power-law degree distribution for social graph analysis

S. Gaito;G. P. Rossi
2010

Abstract

The study of complex networks led to the belief that the connectivity of network nodes generally follows a Power-law distribution. In this work, we show that modeling large-scale online social networks using a Power-law distribution produces significant fitting errors. We propose the use of a more accurate node degree distribution model based on the Pareto-Lognormal distribution. Using large datasets gathered from Facebook, we show that the Power-law curve produces a significant over-estimation of the number of high degree nodes, leading researchers to erroneous designs for a number of social applications and systems, including shortest-path prediction, community detection, and influence maximization. We provide a formal proof of the error reduction using the Pareto-Lognormal distribution, which we envision will have strong implications on the correctness of social systems and applications.
English
Settore INF/01 - Informatica
Intervento a convegno
PODC '10 : ACM symposium on principles of distributed computing, Zurich, Switzerland, july 25 - 28, 2010
New York
lug-2010
400
401
9781605588889
Volume a diffusione internazionale
Annual ACM SIGACT-SIGOPS Symposium on Principles of Distributed Computing
Zurigo, CH
2010
29th
ACM
Convegno internazionale
Intervento inviato
A. Sala, H. Zheng, B. Y. Zhao, S. Gaito, G. P. Rossi
Book Part (author)
none
273
Revisiting the power-law degree distribution for social graph analysis / A. Sala, H. Zheng, B. Y. Zhao, S. Gaito, G. P. Rossi - In: PODC '10 : ACM symposium on principles of distributed computing, Zurich, Switzerland, july 25 - 28, 2010New York : ACM, 2010 Jul. - ISBN 9781605588889. - pp. 400-401 (( Intervento presentato al 29th. convegno Annual ACM SIGACT-SIGOPS Symposium on Principles of Distributed Computing tenutosi a Zurigo, CH nel 2010.
info:eu-repo/semantics/conferenceObject
5
Prodotti della ricerca::03 - Contributo in volume
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/171658
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