CLMay 27, 2025

MAKIEval: A Multilingual Automatic WiKidata-based Framework for Cultural Awareness Evaluation for LLMs

arXiv:2505.21693v39 citationsh-index: 16Has CodeEMNLP
Originality Incremental advance
AI Analysis

This addresses the need for scalable, language-agnostic evaluation of cultural biases in LLMs, which is crucial for global deployment, though it is incremental as it builds on existing multilingual knowledge bases.

The paper tackles the problem of evaluating cultural awareness in large language models (LLMs) across languages by introducing MAKIEval, an automatic multilingual framework that uses Wikidata to assess models across 13 languages, 19 countries/regions, and 6 topics, finding that models show stronger cultural awareness in English.

Large language models (LLMs) are used globally across many languages, but their English-centric pretraining raises concerns about cross-lingual disparities for cultural awareness, often resulting in biased outputs. However, comprehensive multilingual evaluation remains challenging due to limited benchmarks and questionable translation quality. To better assess these disparities, we introduce MAKIEval, an automatic multilingual framework for evaluating cultural awareness in LLMs across languages, regions, and topics. MAKIEval evaluates open-ended text generation, capturing how models express culturally grounded knowledge in natural language. Leveraging Wikidata's multilingual structure as a cross-lingual anchor, it automatically identifies cultural entities in model outputs and links them to structured knowledge, enabling scalable, language-agnostic evaluation without manual annotation or translation. We then introduce four metrics that capture complementary dimensions of cultural awareness: granularity, diversity, cultural specificity, and consensus across languages. We assess 7 LLMs developed from different parts of the world, encompassing both open-source and proprietary systems, across 13 languages, 19 countries and regions, and 6 culturally salient topics (e.g., food, clothing). Notably, we find that models tend to exhibit stronger cultural awareness in English, suggesting that English prompts more effectively activate culturally grounded knowledge.

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