CLAIApr 17, 2025

Benchmarking Multi-National Value Alignment for Large Language Models

arXiv:2504.12911v26 citationsh-index: 13ACL
Originality Incremental advance
AI Analysis

This work addresses the need for scalable and comprehensive benchmarking of LLM value alignment across different countries, which is incremental as it builds on existing ethical review methods.

The authors tackled the problem of evaluating large language models' alignment with diverse national values by introducing NaVAB, a benchmark that assesses alignment across five major nations, and demonstrated its utility in reducing value concerns through alignment techniques.

Do Large Language Models (LLMs) hold positions that conflict with your country's values? Occasionally they do! However, existing works primarily focus on ethical reviews, failing to capture the diversity of national values, which encompass broader policy, legal, and moral considerations. Furthermore, current benchmarks that rely on spectrum tests using manually designed questionnaires are not easily scalable. To address these limitations, we introduce NaVAB, a comprehensive benchmark to evaluate the alignment of LLMs with the values of five major nations: China, the United States, the United Kingdom, France, and Germany. NaVAB implements a national value extraction pipeline to efficiently construct value assessment datasets. Specifically, we propose a modeling procedure with instruction tagging to process raw data sources, a screening process to filter value-related topics and a generation process with a Conflict Reduction mechanism to filter non-conflicting values.We conduct extensive experiments on various LLMs across countries, and the results provide insights into assisting in the identification of misaligned scenarios. Moreover, we demonstrate that NaVAB can be combined with alignment techniques to effectively reduce value concerns by aligning LLMs' values with the target country.

Foundations

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