TY - CONF T1 - Beyond Technical Transparency: Explainability as a Safeguard Against Manipulative AI* A1 - Petrocchi, Ermanno A1 - Tiribelli, Simona A1 - Pacioni, Elia A1 - Buzcu, Berk A1 - Calvaresi, Davide TI - IEEE International Conference on Metrology for eXtended Reality, Artificial Intelligence and Neural Engineering (IEEE MetroXRAINE) Y1 - 2025 T2 - IEEE CY - Ancona (Italy) KW - AI ethics KW - Explainable AI KW - manipulation N2 - Large Language Models (LLMs) now write with a fluency and persuasiveness that can subtly steer users' choices. When their outputs lack clear and comprehensible explanations, this persuasive power risks undermining human decision-making capacity, raising serious ethical concerns. Current explainable artificial intelligence (XAI) techniques focus primarily on technical transparency for epistemic purposes (how a model works); they are rarely intended to reveal to the user the kind of influence they are subject to. Drawing on the Indifference View of manipulation, we advance a preliminary framework that reconceives explainability as both an epistemic and an ethical imperative. The core idea is based on explanatory metadata: layered annotations that accompany model outputs with four complementary types of explanation-informative, justificatory, causal, and precautionary-which give models the ability to detail the reasons underlying the influence they exert. Doing so shifts the XAI goal from mere transparency to responsible influence. It positions explanations as a safeguard against the manipulative behaviour of generative AI systems, laying the groundwork for future methods that measure, audit, and actively constrain ethically problematic influence. ER -