TL;DR
This paper introduces InfoVGAE, an unsupervised variational graph auto-encoder that learns disentangled belief representations in polarized networks, improving stance detection, prediction, and ideology mapping.
Contribution
It proposes a novel information-theoretic regularization and disentanglement method for belief representation learning in polarized networks, outperforming existing models.
Findings
Reduces user clustering errors by 10.5%
Achieves 12.1% higher F1 scores in stance separation
Performs comparably to supervised models
Abstract
This paper develops a novel unsupervised algorithm for belief representation learning in polarized networks that (i) uncovers the latent dimensions of the underlying belief space and (ii) jointly embeds users and content items (that they interact with) into that space in a manner that facilitates a number of downstream tasks, such as stance detection, stance prediction, and ideology mapping. Inspired by total correlation in information theory, we propose the Information-Theoretic Variational Graph Auto-Encoder (InfoVGAE) that learns to project both users and content items (e.g., posts that represent user views) into an appropriate disentangled latent space. To better disentangle latent variables in that space, we develop a total correlation regularization module, a Proportional-Integral (PI) control module, and adopt rectified Gaussian distribution to ensure the orthogonality. The…
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