This article develops a sociological theory of the epistemic power of generative AI within AI-centered platform convergence, as these systems are increasingly embedded in knowledge infrastructures. We define epistemic power as the capacity to structure collective perceptions of credibility and confer legitimacy in knowledge production. Drawing on Bourdieu and Weber, we introduce “charismatic machines”: AI systems that acquire authority not through actual understanding, but by convincingly performing it and leveraging their non-human status. Their charisma rests on a dual misrecognition, with AI perceived as both human-like and superhuman. However, this symbolic power is structurally unstable, coexisting with epistemic blame when manipulation, bias, or deception is attributed. To explain this ambivalence, we propose a sociotechnical circuit of epistemic attribution that spans models, interfaces, infrastructures, users, and social contexts. By redrawing boundaries between media, institutions, and algorithmic infrastructures, generative AI raises fundamental questions of governance, democracy, and epistemic inequalities in digital societies.
Charismatic machines: On the epistemic power of generative AI within platform convergence / M. Barisione. - In: NEW MEDIA & SOCIETY. - ISSN 1461-7315. - (2026). [Epub ahead of print] [10.1177/14614448261441417]
Charismatic machines: On the epistemic power of generative AI within platform convergence
M. Barisione
2026
Abstract
This article develops a sociological theory of the epistemic power of generative AI within AI-centered platform convergence, as these systems are increasingly embedded in knowledge infrastructures. We define epistemic power as the capacity to structure collective perceptions of credibility and confer legitimacy in knowledge production. Drawing on Bourdieu and Weber, we introduce “charismatic machines”: AI systems that acquire authority not through actual understanding, but by convincingly performing it and leveraging their non-human status. Their charisma rests on a dual misrecognition, with AI perceived as both human-like and superhuman. However, this symbolic power is structurally unstable, coexisting with epistemic blame when manipulation, bias, or deception is attributed. To explain this ambivalence, we propose a sociotechnical circuit of epistemic attribution that spans models, interfaces, infrastructures, users, and social contexts. By redrawing boundaries between media, institutions, and algorithmic infrastructures, generative AI raises fundamental questions of governance, democracy, and epistemic inequalities in digital societies.| File | Dimensione | Formato | |
|---|---|---|---|
|
barisione-2026-charismatic-machines-on-the-epistemic-power-of-generative-ai-within-platform-convergence.pdf
accesso riservato
Tipologia:
Publisher's version/PDF
Licenza:
Nessuna licenza
Dimensione
367.11 kB
Formato
Adobe PDF
|
367.11 kB | Adobe PDF | Visualizza/Apri Richiedi una copia |
Pubblicazioni consigliate
I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.




