Author
Listed:
- Óscar Delgado-Mohatar
(School of Engineering, Universidad Autónoma de Madrid, 28049 Madrid, Spain)
- Raúl Alelú-Paz
(Biological Research Laboratory Professor Giacomo Rizzolatti, Madrid Scientific Park, 28049 Madrid, Spain
Department of Psychology, Universidad Francisco de Vitoria, 28223 Madrid, Spain
Department of Biology and Geology, Physics and Inorganic Chemistry, School of Experimental Sciences and Technology, Rey Juan Carlos University, 28933 Móstoles, Madrid, Spain
IRyCIS, Hospital Universitario Ramón y Cajal, 28034 Madrid, Spain)
Abstract
Democratic erosion often begins rhetorically before institutions show visible damage. Here we test whether large language models (LLMs) can detect early linguistic signals of authoritarian drift in political speech. Formal speeches by Adolf Hitler (1922–1939), Donald Trump (2017–2025), Nicola Sturgeon (2014–2023), Giorgia Meloni (2022–2025) and Viktor Orban (2022–2025) were scored using an 11-indicator taxonomy derived from the Levitsky–Ziblatt framework and evaluated independently by GPT-4o, Gemini 2.5-Pro and Grok-4-Fast, with near-perfect inter-model agreement. Principal Component Analysis revealed two poles: an authoritarian–populist cluster (Hitler–Trump–Orban) and a democratic-institutional pole (Meloni–Sturgeon). To quantify proximity to an authoritarian reference, we introduce the Authoritarian Reference Index (ARI), defined such that it captures both its alignment and intensity relative to the Hitler gold-standard vector. Trump exhibited the highest proximity to the reference (99.1% alignment, 80.7% intensity), followed by Orban, who mirrored the structural alignment (97.6%) with a moderated intensity (72.4%). In contrast, the democratic-institutional pole was distinguished by significantly lower intensity scores, with Meloni (16.4%) and Sturgeon (22.3%) remaining distant from the authoritarian magnitude despite varying degrees of structural overlap. These results show that extreme rhetorical peaks carry disproportionate diagnostic weight and that LLMs can expose structural authoritarian patterns relevant for democratic monitoring.
Suggested Citation
Óscar Delgado-Mohatar & Raúl Alelú-Paz, 2026.
"When Algorithms Guard Democracy: Measuring Authoritarian Rhetorical Behaviour in Political Speech,"
Social Sciences, MDPI, vol. 15(6), pages 1-21, June.
Handle:
RePEc:gam:jscscx:v:15:y:2026:i:6:p:372-:d:1962083
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