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Know Thyself, Improve Thyself: Personalized LLMs for Self-Knowledge and Moral Enhancement

Alberto Giubilini, Sebastian Porsdam Mann, Cristina Voinea, Brian D. Earp, Julian Savulescu

2024Science and Engineering Ethics18 citationsDOIOpen Access PDF

Abstract

In this paper, we suggest that personalized LLMs trained on information written by or otherwise pertaining to an individual could serve as artificial moral advisors (AMAs) that account for the dynamic nature of personal morality. These LLM-based AMAs would harness users' past and present data to infer and make explicit their sometimes-shifting values and preferences, thereby fostering self-knowledge. Further, these systems may also assist in processes of self-creation, by helping users reflect on the kind of person they want to be and the actions and goals necessary for so becoming. The feasibility of LLMs providing such personalized moral insights remains uncertain pending further technical development. Nevertheless, we argue that this approach addresses limitations in existing AMA proposals reliant on either predetermined values or introspective self-knowledge.

Topics & Concepts

Philosophy of sciencePsychologyEngineering ethicsSocial psychologyEpistemologyPhilosophyEngineeringLaw, AI, and Intellectual PropertyEthics and Social Impacts of AIArtificial Intelligence in Law
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