4.8 Article

The dynamics of information-driven coordination phenomena: A transfer entropy analysis

Journal

SCIENCE ADVANCES
Volume 2, Issue 4, Pages -

Publisher

AMER ASSOC ADVANCEMENT SCIENCE
DOI: 10.1126/sciadv.1501158

Keywords

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Funding

  1. Moore and Sloan Foundations as part of the Moore-Sloan Data Science Environment at New York University
  2. European Union MULTIPLEX [317532]
  3. Spanish Ministry of Science and Innovation [FIS2012-38266-C02-01]
  4. ICREA Academia
  5. James S. McDonnell Foundation
  6. MINECO [FIS2011-25167]
  7. Comunidad de Aragon (Spain)
  8. European Commission Future and Emerging Technologies Proactive Project MULTIPLEX [317532]
  9. Intelligence Advanced Research Projects Activity (IARPA) via Department of Interior National Business Center (DoI/NBC) [D12PC00285]

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Data from social media provide unprecedented opportunities to investigate the processes that govern the dynamics of collective social phenomena. We consider an information theoretical approach to define and measure the temporal and structural signatures typical of collective social events as they arise and gain prominence. We use the symbolic transfer entropy analysis of microblogging time series to extract directed networks of influence among geolocalized subunits in social systems. This methodology captures the emergence of system-level dynamics close to the onset of socially relevant collective phenomena. The framework is validated against a detailed empirical analysis of five case studies. In particular, we identify a change in the characteristic time scale of the information transfer that flags the onset of information-driven collective phenomena. Furthermore, our approach identifies an order-disorder transition in the directed network of influence between social subunits. In the absence of clear exogenous driving, social collective phenomena can be represented as endogenously driven structural transitions of the information transfer network. This study provides results that can help define models and predictive algorithms for the analysis of societal events based on open source data.

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