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LANGSAE EDITING: Improving Multilingual Information Retrieval via Post-hoc Language Identity Removal

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Dense retrieval in multilingual settings often searches over mixed-language collections, yet multilingual embeddings encode language identity alongside semantics. This language signal can inflate similarity for same-language pairs and crowd out relevant evidence written in other languages. We propose LANGSAE EDITING, a post-hoc sparse autoencoder trained on pooled embeddings that enables controllable removal of language-identity signal directly in vector space. The method identifies language-associated latent units using cross-language activation statistics, suppresses these units at inference time, and reconstructs embeddings in the original dimensionality, making it compatible with existing vector databases without retraining the base encoder or re-encoding raw text. Experiments across multiple languages show consistent improvements in ranking quality and cross-language coverage, with especially strong gains for script-distinct languages.

Dongjun Kim, Jeongho Yoon, Chanjun Park, Heuiseok Lim• 2026

Related benchmarks

TaskDatasetResultRank
Multilingual Information RetrievalBelebele
nDCG@200.6653
33
Multilingual Information RetrievalXQuAD
nDCG@200.8016
21
Multilingual Information RetrievalBelebele
Arabic nDCG@200.681
4
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