2000 character limit reached
Entropy-based detection of Twitter echo chambers (2308.01750v2)
Published 3 Aug 2023 in cs.SI, physics.data-an, and physics.soc-ph
Abstract: Echo chambers, i.e. clusters of users exposed to news and opinions in line with their previous beliefs, were observed in many online debates on social platforms. We propose a completely unbiased entropy-based method for detecting echo chambers. The method is completely agnostic to the nature of the data. In the Italian Twitter debate about the Covid-19 vaccination, we find a limited presence of users in echo chambers (about 0.35% of all users). Nevertheless, their impact on the formation of a common discourse is strong, as users in echo chambers are responsible for nearly a third of the retweets in the original dataset. Moreover, in the case study observed, echo chambers appear to be a receptacle for disinformative content.
- Manuel Pratelli (11 papers)
- Fabio Saracco (42 papers)
- Marinella Petrocchi (34 papers)