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arXiv 提交日期: 2026-06-20
📄 Abstract - Plurification in/of language technology -- The integration of culture in next-generation AI

The paper explores how "culture" can be operationalised in Natural Language Processing (NLP) and what this reveals about the possibilities and limits of considering a plurality of cultural backgrounds in technological design. It proposes that cultural alignment cannot be achieved only by adding more examples of "other cultures", rather it requires plural epistemologies: allowing multiple, locally grounded ways of knowing. To analyze how this plurality of knowing can be addressed in NLP, the paper uses a socio-technical model of language technology (LT) design, the five layers of technological activity model, for collecting and systematizing approaches to culture in NLP. The analysis shows that while NLP research has made progress toward more culturally sensitive systems, many approaches remain partial, addressing "culture" primarily at the level of output or representation while leaving deeper questions of power, governance, and social context unresolved. The paper concludes that operationalising culture requires much more than technical adaptation; it suggests a reflexive and plural socio-technical approach that navigates potentials and limits of computational formalisation for accounting multiple linguistic and socio-cultural backgrounds.

顶级标签: natural language processing llm
详细标签: cultural alignment plural epistemologies socio-technical model language technology design 或 搜索:

语言技术中的多元文化净化——下一代AI中文化的整合 / Plurification in/of language technology -- The integration of culture in next-generation AI


1️⃣ 一句话总结

本文探讨了如何在自然语言处理中真正实现多元文化对齐,指出仅通过添加更多“其他文化”的示例是不够的,而是需要允许多种基于本地知识的方式共存,并提出了一个社会技术模型来分析当前NLP在整合文化方面的进展与局限。

源自 arXiv: 2606.22097