Mapping Discourse Reframing: A Multi-Layer Network Approach to Italian HPV Vaccine Discourse on X (2010-2024)
TLDR
This paper introduces a multi-layer network framework to map how online discourse, specifically on HPV vaccines in Italy, is reframed and amplified by information disorder.
Key contributions
- Proposes a novel multi-layer network framework to detect low-frequency signals of emerging information disorder.
- Applies a dual-layer approach using hashtag co-occurrence to Italian HPV vaccine discourse on X (2010-2024).
- Identifies stable prevention-oriented and increasingly separable skepticism coalitions in online discourse.
- Significantly improves recovery of long-tail, problematic hashtags by projecting fringe hashtags into core coalitions.
Why it matters
This research offers a crucial methodology for tracking the structural maturation of polarized online narratives. It provides a powerful tool for identifying and mapping how information disorder reframes and amplifies discourse over time, aiding in combating misinformation.
Original Abstract
Understanding how online narratives travel through coalitions is critical for identifying information disorder, yet computational analyses often rely on conservative network constructions that erase initially sparse but salient signals. This paper proposes a novel multi-layer framework that captures low-frequency signals of emerging information disorder allowing for locating where online discourse is reframed and amplified over time. The use case is 14 years of Italian discourse on X regarding the Human Papillomavirus (HPV) vaccine across three pivotal epochs (2010-2024). Utilizing hashtag co-occurrence networks, we introduce a dual-layer approach. We first identify robust core discourse coalitions through conservative community detection, revealing a stable prevention-oriented backbone contrasted with increasingly separable skepticism coalitions. We then introduce a coverage layer and project fringe hashtags into core coalitions based on weighted connectivity. Using a manually labelled set of skeptical and conspiratorial seed tweets, we demonstrate that this core-coverage projection significantly improves the recovery of long-tail, problematic hashtags while preserving an interpretable coalition structure. Our findings characterize the structural maturation of polarized narratives and provide a methodology for mapping how discourse is reframed and amplified by information disorder over time.
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