Investigating the Observability of Complex Contagion in Empirical Social Networks

Social contagion is the mechanism by which ideas and behaviors spread across human social networks. Simple contagion models approximate the likelihood of adoption as constant with each exposure to an “infected” network neighbor. However, social theory postulates that when adopting an idea or behavior carries personal or social risk, an individual’s adoption likelihood also depends on the number of distinct neighbors who have adopted. Such complex contagions are thought to govern the spread of social movements and other important social phenomena. Online sites, such as Twitter, expose social interactions at a large scale and provide an opportunity to observe the spread of social contagions “in the wild.” Much of the effort in searching for complex phenomena in real world contagions focuses on measuring user adoption thresholds. In this work, we show an alternative method for fitting probabilistic complex contagion models to empirical data that avoids measuring thresholds directly, and our results indicate bias in observed thresholds under both complex and simple models. We also show 1) that probabilistic models of simple and complex contagion are distinguishable when applied to an empirical social network with random user activity; and 2) the predictive power of these probabilistic adoption models against observed adoptions of actual hashtags used on Twitter. We use a set of tweets collected from Nigeria in 2014, focusing on 20 popular hashtags, using the follow graphs of the users adopting the tags during their initial peaks of activ-

[1]  Jon Kleinberg,et al.  Differences in the mechanics of information diffusion across topics: idioms, political hashtags, and complex contagion on twitter , 2011, WWW.

[2]  Adilson E. Motter,et al.  A Poissonian explanation for heavy tails in e-mail communication , 2008, Proceedings of the National Academy of Sciences.

[3]  Vladimir Barash,et al.  The dynamics of social contagion , 2011 .

[4]  Lada A. Adamic,et al.  The Diffusion of Support in an Online Social Movement: Evidence from the Adoption of Equal-Sign Profile Pictures , 2015, CSCW.

[5]  J. Coleman,et al.  Medical Innovation: A Diffusion Study. , 1967 .

[6]  Mark S. Granovetter Threshold Models of Collective Behavior , 1978, American Journal of Sociology.

[7]  Mark S. Granovetter The Strength of Weak Ties , 1973, American Journal of Sociology.

[8]  Kyumin Lee,et al.  Seven Months with the Devils: A Long-Term Study of Content Polluters on Twitter , 2011, ICWSM.

[9]  Damon Centola,et al.  The Spread of Behavior in an Online Social Network Experiment , 2010, Science.

[10]  M. Macy,et al.  Complex Contagions and the Weakness of Long Ties1 , 2007, American Journal of Sociology.

[11]  T. Valente Social network thresholds in the diffusion of innovations , 1996 .

[12]  Fola Odufuwa,et al.  Understanding what is Happening in ICT in Nigeria: A Supply- and Demand-side Analysis of the ICT Sector , 2012 .

[13]  Vladimir Barash,et al.  Critical phenomena in complex contagions , 2012, Soc. Networks.

[14]  Albert-László Barabási,et al.  The origin of bursts and heavy tails in human dynamics , 2005, Nature.

[15]  Duncan J. Watts,et al.  The Structural Virality of Online Diffusion , 2015, Manag. Sci..