MiLQ: Benchmarking IR Models for Bilingual Web Search with Mixed Language Queries
MiLQ: Benchmarking IR Models for Bilingual Web Search with Mixed Language Queries
Despite bilingual speakers frequently using mixed-language queries in web searches, Information Retrieval (IR) research on them remains scarce. To address this, we introduce MiLQ,Mixed-Language Query test set, the first public benchmark of mixed-language queries, confirmed as realistic and highly preferred. Experiments show that multilingual IR models perform moderately on MiLQ and inconsistently across native, English, and mixed-language queries, also suggesting code-switched training data's potential for robust IR models handling such queries. Meanwhile, intentional English mixing in queries proves an effective strategy for bilinguals searching English documents, which our analysis attributes to enhanced token matching compared to native queries.
Jonghwi Kim、Deokhyung Kang、Seonjeong Hwang、Yunsu Kim、Jungseul Ok、Gary Lee
语言学
Jonghwi Kim,Deokhyung Kang,Seonjeong Hwang,Yunsu Kim,Jungseul Ok,Gary Lee.MiLQ: Benchmarking IR Models for Bilingual Web Search with Mixed Language Queries[EB/OL].(2025-05-22)[2025-07-16].https://arxiv.org/abs/2505.16631.点此复制
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