Information diffusion epidemics in social networks
Jose Luis Iribarren, Esteban Moro

TL;DR
This paper combines experimental data and theoretical modeling to analyze how information spreads in social networks, revealing the significant role of super-spreading events and individual variability in diffusion dynamics.
Contribution
It introduces an integrated framework using real viral marketing data and stochastic models to understand and predict information diffusion in social networks, highlighting the impact of heterogeneity.
Findings
Super-spreading events dominate transmission
Information spreading slows logarithmically over time
Heterogeneity in human responses is crucial for diffusion dynamics
Abstract
The dynamics of information dissemination in social networks is of paramount importance in processes such as rumors or fads propagation, spread of product innovations or "word-of-mouth" communications. Due to the difficulty in tracking a specific information when it is transmitted by people, most understanding of information spreading in social networks comes from models or indirect measurements. Here we present an integrated experimental and theoretical framework to understand and quantitatively predict how and when information spreads over social networks. Using data collected in Viral Marketing campaigns that reached over 31,000 individuals in eleven European markets, we show the large degree of variability of the participants' actions, despite them being confronted with the common task of receiving and forwarding the same piece of information. This have a profound effect on…
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