Characterizing interactions in online social networks during exceptional events
Elisa Omodei, Manlio De Domenico, and Alex Arenas

TL;DR
This study analyzes Twitter interactions during exceptional events, modeling user activity as multilayer networks to reveal distinct interaction patterns and universal social dynamics features.
Contribution
It introduces a multilayer network approach to characterize different interaction types and uncovers universal topological patterns during exceptional events.
Findings
Different interaction types have distinct network properties.
Multilayer networks better capture online social dynamics.
Universal patterns emerge across diverse exceptional events.
Abstract
Nowadays, millions of people interact on a daily basis on online social media like Facebook and Twitter, where they share and discuss information about a wide variety of topics. In this paper, we focus on a specific online social network, Twitter, and we analyze multiple datasets each one consisting of individuals' online activity before, during and after an exceptional event in terms of volume of the communications registered. We consider important events that occurred in different arenas that range from policy to culture or science. For each dataset, the users' online activities are modeled by a multilayer network in which each layer conveys a different kind of interaction, specifically: retweeting, mentioning and replying. This representation allows us to unveil that these distinct types of interaction produce networks with different statistical properties, in particular concerning…
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