Cascade-based Echo Chamber Detection
- URL: http://arxiv.org/abs/2208.04620v1
- Date: Tue, 9 Aug 2022 09:30:38 GMT
- Title: Cascade-based Echo Chamber Detection
- Authors: Marco Minici and Federico Cinus and Corrado Monti and Francesco Bonchi
and Giuseppe Manco
- Abstract summary: echo chambers in social media have been under considerable scrutiny.
We propose a probabilistic generative model that explains social media footprints.
We show how our model can improve accuracy in auxiliary predictive tasks, such as stance detection and prediction of future propagations.
- Score: 16.35164446890934
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- 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 echo-chamber 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.
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