Publication Date:
2022
abstract:
Despite echo chambers in social media have been under considerable scrutiny, general models for their detection and analysis are
missing. In this work, we aim to fill this gap by proposing a probabilistic generative model that explains social media footprints--i.e.,
social network structure and propagations of information--through
a set of latent communities, characterized by a degree of echochamber behavior and by an opinion polarity. Specifically, echo
chambers are modeled as communities that are permeable to pieces
of information with similar ideological polarity, and impermeable
to information of opposed leaning: this allows discriminating echo
chambers from communities that lack a clear ideological alignment.
To learn the model parameters we propose a scalable, stochastic
adaptation of the Generalized Expectation Maximization algorithm,
that optimizes the joint likelihood of observing social connections
and information propagation. Experiments on synthetic data show
that our algorithm is able to correctly reconstruct ground-truth
latent communities with their degree of echo-chamber behavior
and opinion polarity. Experiments on real-world data about polarized social and political debates, such as the Brexit referendum or
the COVID-19 vaccine campaign, confirm the effectiveness of our
proposal in detecting echo chambers. Finally, we show how our
model can improve accuracy in auxiliary predictive tasks, such as
stance detection and prediction of future propagations.
Iris type:
04.01 Contributo in Atti di convegno
Keywords:
echo chambers; information propagation; probabilistic modeling
List of contributors: