CLJul 6, 2025

No Language Data Left Behind: A Comparative Study of CJK Language Datasets in the Hugging Face Ecosystem

arXiv:2507.04329v3h-index: 1Proceedings of the 5th Workshop on Multilingual Representation Learning (MRL 2025)
Originality Synthesis-oriented
AI Analysis

This addresses the problem of limited high-quality datasets for CJK languages, affecting over 1.6 billion speakers, by providing insights to enhance dataset documentation and cross-lingual sharing for more effective LLM development in East Asia, though it is incremental as it builds on existing ecosystem analysis.

The study tackled the fragmented and underexplored dataset landscape for Chinese, Japanese, and Korean (CJK) languages in NLP by analyzing over 3,300 datasets in the Hugging Face ecosystem, revealing distinct creation patterns such as institution-driven Chinese datasets, community-led Korean development, and entertainment-focused Japanese collections.

Recent advances in Natural Language Processing (NLP) have underscored the crucial role of high-quality datasets in building large language models (LLMs). However, while extensive resources and analyses exist for English, the landscape for East Asian languages - particularly Chinese, Japanese, and Korean (CJK) - remains fragmented and underexplored, despite these languages together serving over 1.6 billion speakers. To address this gap, we investigate the HuggingFace ecosystem from a cross-linguistic perspective, focusing on how cultural norms, research environments, and institutional practices shape dataset availability and quality. Drawing on more than 3,300 datasets, we employ quantitative and qualitative methods to examine how these factors drive distinct creation and curation patterns across Chinese, Japanese, and Korean NLP communities. Our findings highlight the large-scale and often institution-driven nature of Chinese datasets, grassroots community-led development in Korean NLP, and an entertainment- and subculture-focused emphasis on Japanese collections. By uncovering these patterns, we reveal practical strategies for enhancing dataset documentation, licensing clarity, and cross-lingual resource sharing - ultimately guiding more effective and culturally attuned LLM development in East Asia. We conclude by discussing best practices for future dataset curation and collaboration, aiming to strengthen resource development across all three languages.

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