SICLSOC-PHJun 14, 2025

Detecting Narrative Shifts through Persistent Structures: A Topological Analysis of Media Discourse

arXiv:2506.14836v13 citationsh-index: 4
Originality Incremental advance
AI Analysis

This advances computational social science by enabling real-time detection of narrative shifts during crises, though it is incremental as it applies an existing mathematical method to a new domain.

The study tackled the problem of detecting when global events reshape public discourse by introducing a topological framework using persistent homology on media narratives, showing that major events like the Russian invasion of Ukraine align with sharp spikes in structural metrics such as H0 and H1, with cross-correlation revealing lag patterns in semantic change.

How can we detect when global events fundamentally reshape public discourse? This study introduces a topological framework for identifying structural change in media narratives using persistent homology. Drawing on international news articles surrounding major events - including the Russian invasion of Ukraine (Feb 2022), the murder of George Floyd (May 2020), the U.S. Capitol insurrection (Jan 2021), and the Hamas-led invasion of Israel (Oct 2023) - we construct daily co-occurrence graphs of noun phrases to trace evolving discourse. Each graph is embedded and transformed into a persistence diagram via a Vietoris-Rips filtration. We then compute Wasserstein distances and persistence entropies across homological dimensions to capture semantic disruption and narrative volatility over time. Our results show that major geopolitical and social events align with sharp spikes in both H0 (connected components) and H1 (loops), indicating sudden reorganization in narrative structure and coherence. Cross-correlation analyses reveal a typical lag pattern in which changes to component-level structure (H0) precede higher-order motif shifts (H1), suggesting a bottom-up cascade of semantic change. An exception occurs during the Russian invasion of Ukraine, where H1 entropy leads H0, possibly reflecting top-down narrative framing before local discourse adjusts. Persistence entropy further distinguishes tightly focused from diffuse narrative regimes. These findings demonstrate that persistent homology offers a mathematically principled, unsupervised method for detecting inflection points and directional shifts in public attention - without requiring prior knowledge of specific events. This topological approach advances computational social science by enabling real-time detection of semantic restructuring during crises, protests, and information shocks.

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