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Aristotelian Virtue Profiling of LLMs through Ethical Dilemmas

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NOW LET US Article – Aristotelian Virtue Profiling of LLMs through Ethical Dilemmas

Researchers have introduced VirtueMap, a novel framework that profiles the ethical virtues of Large Language Models (LLMs) using Aristotelian virtue ethics, revealing key differences in how AI models prioritize values like courage and justice.

Computer Science > Artificial Intelligence

Title:Aristotelian Virtue Profiling of LLMs through Ethical Dilemmas

View PDF HTML (experimental)Abstract:Large Language Models (LLMs) often face ethical tradeoffs in which several responses may be defensible but express different priorities, such as fairness, honesty, courage, or restraint. We introduce VirtueMap, a framework for describing these patterns through an Aristotelian virtue-ethics lens. Instead of asking for a single correct answer, VirtueMap asks humans or LLMs to rank all five responses to each of seven general, non-lethal, non-political, and non-religious ethical dilemmas. To define the reference orderings used for scoring, we first proposed, for each dilemma and virtue, an ordering of the five responses from most to least expressive of that virtue. We then collected more than 100 respondent evaluations per ordering and retained it as operational ground truth only when at least 95% confirmed it. Rankings are scored against these retained orderings using normalized Borda alignment, yielding profiles over Practical Wisdom, Justice, Truthfulness, Courage, and Temperance. We apply VirtueMap to nine LLM families in a repeated-run evaluation and find high mean rank consistency (90.3%), with the largest differences appearing on Courage, Temperance, and Justice. We also release an interactive website that computes profiles locally in the browser and compares respondents with measured LLM profiles.

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Source: arXiv cs.AI Recent

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