Faux Polyglot: A Study on Information Disparity in Multilingual Large Language Models

Although the multilingual capability of LLMs offers new opportunities to overcome the language barrier, do these capabilities translate into real-life scenarios where linguistic divide and knowledge conflicts between multilingual sources are known occurrences? In this paper, we studied LLM's linguistic preference in a cross-language RAG-based information search setting. We found that LLMs displayed systemic bias towards information in the same language as the query language in both document retrieval and answer generation. Furthermore, in scenarios where no information is in the language of the query, LLMs prefer documents in high-resource languages during generation, potentially reinforcing the dominant views. Such bias exists for both factual and opinion-based queries. Our results highlight the linguistic divide within multilingual LLMs in information search systems. The seemingly beneficial multilingual capability of LLMs may backfire on information parity by reinforcing language-specific information cocoons or filter bubbles further marginalizing low-resource views.
View on arXiv@article{sharma2025_2407.05502, title={ Faux Polyglot: A Study on Information Disparity in Multilingual Large Language Models }, author={ Nikhil Sharma and Kenton Murray and Ziang Xiao }, journal={arXiv preprint arXiv:2407.05502}, year={ 2025 } }