GTAICLMAFeb 1, 2025

Distributive Fairness in Large Language Models: Evaluating Alignment with Human Values

arXiv:2502.00313v110 citationsh-index: 2
Originality Synthesis-oriented
AI Analysis

This addresses fairness issues in LLMs for social and economic decision-making, but it is incremental as it benchmarks existing models without proposing a new method.

The paper evaluated whether large language models (LLMs) align with human fairness concepts like equitability and envy-freeness in resource distribution tasks, finding that current LLM responses lack alignment and cannot effectively use money to reduce inequality.

The growing interest in employing large language models (LLMs) for decision-making in social and economic contexts has raised questions about their potential to function as agents in these domains. A significant number of societal problems involve the distribution of resources, where fairness, along with economic efficiency, play a critical role in the desirability of outcomes. In this paper, we examine whether LLM responses adhere to fundamental fairness concepts such as equitability, envy-freeness, and Rawlsian maximin, and investigate their alignment with human preferences. We evaluate the performance of several LLMs, providing a comparative benchmark of their ability to reflect these measures. Our results demonstrate a lack of alignment between current LLM responses and human distributional preferences. Moreover, LLMs are unable to utilize money as a transferable resource to mitigate inequality. Nonetheless, we demonstrate a stark contrast when (some) LLMs are tasked with selecting from a predefined menu of options rather than generating one. In addition, we analyze the robustness of LLM responses to variations in semantic factors (e.g. intentions or personas) or non-semantic prompting changes (e.g. templates or orderings). Finally, we highlight potential strategies aimed at enhancing the alignment of LLM behavior with well-established fairness concepts.

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