Statistical Physics and Twitter analysis
ORAL
Abstract
In this work we analyse approximately 10^6 tweets exchanged during the last Italian elections held on March 4, 2018. Using an entropy-based null model discounting the activity of the users, we first identify potential political alliances within the group of verified accounts: if two verified users are retweeted more than expected by the non-verified ones, they are likely to be related. Then, we derive the users’ affiliation to a coalition measuring the polarisation of unverified accounts. Finally, we study the bipartite directed representation of the tweets and retweets network, in which tweets and users are collected on the two layers. Unexpectedly for most of the users, automated accounts, also known as social bots, contribute more and more to this process of news spreading Results show that social bots play a central role in the exchange of significant content. Indeed, not only the strongest hubs have a number of bots among their followers higher than expected, but furthermore a group of them, that can be assigned to the same political tendency, share a common set of bots as followers
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Presenters
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Guido Caldarelli
IMT Alti Studi Lucca
Authors
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Guido Caldarelli
IMT Alti Studi Lucca
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Carolina Becatti
IMT Alti Studi Lucca
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Rocco De Nicola
IMT Alti Studi Lucca
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Fabio Del Vigna
ISC, Consiglio Nazionale delle Ricerche
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Renaud Lambiotte
Mathematics, University of Oxford
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Marinella Petrocchi
IIT, Consiglio Nazionale delle RIcerche
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Fabio SARACCO
Networks Unit, IMT School For Advanced Studies Lucca, IMT Alti Studi Lucca