Interactions in information spread: quantification and interpretation using stochastic block models

9 Apr 2020Gaël Poux-MédardJulien VelcinSabine Loudcher

In most real-world applications, it is seldom the case that a given observable evolves independently of its environment. In social networks, users' behavior results from the people they interact with, news in their feed, or trending topics... (read more)

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