Beneath the Surface of Consistency: Exploring Cross-lingual Knowledge Representation Sharing in LLMs

ACL ARR 2024 August Submission283 Authors

16 Aug 2024 (modified: 26 Sept 2024)ACL ARR 2024 August SubmissionEveryoneRevisionsBibTeXCC BY 4.0
Abstract: The veracity of a factoid is largely independent of the language it is written in. However, language models are inconsistent in their ability to answer the same factual question across languages. This raises questions about how LLMs represent a given fact across languages. We explore multilingual factual knowledge through two aspects: the model's ability to answer a query consistently across languages, and the ability to ''store'' answers in a shared representation for several languages. We propose a methodology to measure the extent of representation sharing across languages by repurposing knowledge editing methods. We examine LLMs with various multilingual configurations using a new multilingual dataset. We reveal that high consistency does not necessarily imply shared representation, particularly for languages with different scripts. Moreover, we find that script similarity is a dominant factor in representation sharing. Finally, we observe that if LLMs could fully share knowledge across languages, their accuracy in their best-performing language could benefit an increase of up to 150\% on average. These findings highlight the need for improved multilingual knowledge representation in LLMs and suggest a path for the development of more robust and consistent multilingual LLMs.
Paper Type: Long
Research Area: Multilingualism and Cross-Lingual NLP
Research Area Keywords: multilingual representations; knowledge tracing/discovering/inducing; multilingual evaluation; multilingualism; multilingual extraction; zero/few-shot extraction; multilingualism; resources for less-resourced languages; multilingual QA;
Contribution Types: Model analysis & interpretability, Approaches to low-resource settings, Data resources
Languages Studied: English, French, Italian, Spanish, Russian, Ukrainian, Bulgarian, Hindi, Bengali, Chinese, Japanese, Hebrew, and Arabic.
Submission Number: 283
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