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Main Authors: Wu, Ya, Sheng, Qiang, Wang, Danding, Yang, Guang, Sun, Yifan, Wang, Zhengjia, Bu, Yuyan, Cao, Juan
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.18154
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author Wu, Ya
Sheng, Qiang
Wang, Danding
Yang, Guang
Sun, Yifan
Wang, Zhengjia
Bu, Yuyan
Cao, Juan
author_facet Wu, Ya
Sheng, Qiang
Wang, Danding
Yang, Guang
Sun, Yifan
Wang, Zhengjia
Bu, Yuyan
Cao, Juan
contents Ethical decision-making is a critical aspect of human judgment, and the growing use of LLMs in decision-support systems necessitates a rigorous evaluation of their moral reasoning capabilities. However, existing assessments primarily rely on single-step evaluations, failing to capture how models adapt to evolving ethical challenges. Addressing this gap, we introduce the Multi-step Moral Dilemmas (MMDs), the first dataset specifically constructed to evaluate the evolving moral judgments of LLMs across 3,302 five-stage dilemmas. This framework enables a fine-grained, dynamic analysis of how LLMs adjust their moral reasoning across escalating dilemmas. Our evaluation of nine widely used LLMs reveals that their value preferences shift significantly as dilemmas progress, indicating that models recalibrate moral judgments based on scenario complexity. Furthermore, pairwise value comparisons demonstrate that while LLMs often prioritize the value of care, this value can sometimes be superseded by fairness in certain contexts, highlighting the dynamic and context-dependent nature of LLM ethical reasoning. Our findings call for a shift toward dynamic, context-aware evaluation paradigms, paving the way for more human-aligned and value-sensitive development of LLMs.
format Preprint
id arxiv_https___arxiv_org_abs_2505_18154
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle The Staircase of Ethics: Probing LLM Value Priorities through Multi-Step Induction to Complex Moral Dilemmas
Wu, Ya
Sheng, Qiang
Wang, Danding
Yang, Guang
Sun, Yifan
Wang, Zhengjia
Bu, Yuyan
Cao, Juan
Computation and Language
Computers and Society
Ethical decision-making is a critical aspect of human judgment, and the growing use of LLMs in decision-support systems necessitates a rigorous evaluation of their moral reasoning capabilities. However, existing assessments primarily rely on single-step evaluations, failing to capture how models adapt to evolving ethical challenges. Addressing this gap, we introduce the Multi-step Moral Dilemmas (MMDs), the first dataset specifically constructed to evaluate the evolving moral judgments of LLMs across 3,302 five-stage dilemmas. This framework enables a fine-grained, dynamic analysis of how LLMs adjust their moral reasoning across escalating dilemmas. Our evaluation of nine widely used LLMs reveals that their value preferences shift significantly as dilemmas progress, indicating that models recalibrate moral judgments based on scenario complexity. Furthermore, pairwise value comparisons demonstrate that while LLMs often prioritize the value of care, this value can sometimes be superseded by fairness in certain contexts, highlighting the dynamic and context-dependent nature of LLM ethical reasoning. Our findings call for a shift toward dynamic, context-aware evaluation paradigms, paving the way for more human-aligned and value-sensitive development of LLMs.
title The Staircase of Ethics: Probing LLM Value Priorities through Multi-Step Induction to Complex Moral Dilemmas
topic Computation and Language
Computers and Society
url https://arxiv.org/abs/2505.18154