University of Limerick
Browse
Gleeson_2020_Branching.pdf (1.06 MB)

Branching process descriptions of information cascades on twitter

Download (1.06 MB)
journal contribution
posted on 2022-12-08, 11:18 authored by James GleesonJames Gleeson, Tomokatsu Onaga, Peter Fennell, James Cotter, Raymond Burke, David J.P. O'Sullivan

A detailed analysis of Twitter-based information cascades is performed, and it is demonstrated that branching process hypotheses are approximately satisfied. Using a branching process framework, models of agent-to-agent transmission are compared to conclude that a limited attention model better reproduces the relevant characteristics of the data than the more common independent cascade model. Existing and new analytical results for branching processes are shown to match well to the important statistical characteristics of the empirical information cascades, thus demonstrating the power of branching process descriptions for understanding social information spreading.

Funding

Mathematical Modelling of Social Spreading Phenomena

Science Foundation Ireland

Find out more...

Confirm Centre for Smart Manufacturing

Science Foundation Ireland

Find out more...

History

Publication

Journal of Complex Networks; 8 (6)

Publisher

Oxford University Press

Note

peer-reviewed

Other Funding information

SFI, European Union (EU)

Language

English

Also affiliated with

  • MACSI - Mathematics Application Consortium for Science & Industry

Department or School

  • Mathematics & Statistics

Usage metrics

    University of Limerick

    Exports

    RefWorks
    BibTeX
    Ref. manager
    Endnote
    DataCite
    NLM
    DC