Analysing Twitter Semantic Networks: the case of 2018 Italian Elections
Tommaso Radicioni, Fabio Saracco, Elena Pavan, Tiziano, Squartini

TL;DR
This paper investigates the semantic networks within Twitter discussions during the 2018 Italian Elections, introducing an automated, behavior-based method to analyze political discourse without manual labeling.
Contribution
It presents a novel, fully automated approach to analyze socio-semantic structures in Twitter debates, grounded in user behavior and applicable across languages and topics.
Findings
Identified discursive communities based on retweeting behavior.
Monitored the evolution of semantic networks over time.
Revealed semantic peculiarities of the Italian electoral debate.
Abstract
Social media play a key role in shaping citizens' political opinion. According to the Eurobarometer, the percentage of EU citizens employing online social networks on a daily basis has increased from 18% in 2010 to 48% in 2019. The entwinement between social media and the unfolding of political dynamics has motivated the interest of researchers for the analysis of users online behavior - with particular emphasis on group polarization during debates and echo-chambers formation. In this context, attention has been predominantly directed towards the study of online relations between users while semantic aspects have remained under-explored. In the present paper, we aim at filling this gap by adopting a two-steps approach. First, we identify the discursive communities animating the political debate in the run up of the 2018 Italian Elections as groups of users with a significantly-similar…
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