Competing for Attention in Social Media under Information Overload Conditions
Ling Feng, Yanqing Hu, Baowen Li, H. Eugene Stanley, Shlomo Havlin and, Lidia A. Braunstein

TL;DR
This paper investigates how information spreads in overloaded social media environments, revealing that popular messages follow a different contagion mechanism than diseases, with a finite epidemic threshold affecting information dissemination.
Contribution
The study introduces a fractional SIR model capturing attention competition, showing real-world social networks have a finite epidemic threshold unlike traditional disease models.
Findings
Popular messages require more repeated exposures for spread.
The probability of sharing is proportional to neighbors who shared.
Social networks exhibit a finite epidemic threshold.
Abstract
Although the many forms of modern social media have become major channels for the dissemination of information, they are becoming overloaded because of the rapidly-expanding number of information feeds. We analyze the expanding user-generated content in Sina Weibo, the largest micro-blog site in China, and find evidence that popular messages often follow a mechanism that differs from that found in the spread of disease, in contrast to common believe. In this mechanism, an individual with more friends needs more repeated exposures to spread further the information. Moreover, our data suggest that in contrast to epidemics, for certain messages the chance of an individual to share the message is proportional to the fraction of its neighbours who shared it with him/her. Thus the greater the number of friends an individual has the greater the number of repeated contacts needed to spread the…
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