Publications
Cross-Platform Narrative Prediction: Leveraging Platform-Invariant Discourse Networks
Abstract
Online narratives spread unevenly across platforms, with content emerging on one site often appearing on others, hours, days or weeks later. Existing cross-platform information diffusion models often treat platforms as isolated systems, disregarding cross-platform activity that might make these patterns more predictable. In this work, we frame cross-platform prediction as a network proximity problem: rather than tracking individual users across platforms or relying on brittle signals like shared URLs or hashtags, we construct platform-invariant discourse networks that link users through shared narrative engagement. We show that cross-platform neighbor proximity provides a strong predictive signal: adoption patterns follow discourse network structure even without direct cross-platform influence. Our highly-scalable approach substantially outperforms diffusion models and other baselines while requiring less than 3% of …
- Date
- 2026
- Authors
- Patrick Gerard, Luca Luceri, Leonardo Blas, Emilio Ferrara
- Book
- Proceedings of the ACM Web Conference 2026
- Pages
- 4898-4909