Impact of Monolingual-Crosslingual Data Ratios on Zero-Shot Retrieval Accuracy in Low-Resource XNLI
Description
Information retrieval across different languages is an increasingly important challenge in natural language processing. Recent approaches based on multilingual pre-trained language models have achieved remarkable success, yet they often optimize for either monolingual, cross-lingual, or multilingual retrieval performance at the expense of others. This paper proposes a novel hybrid batch training strategy to simultaneously improve zero-shot retrieval performance across monolingual, cross-lingual, and multilingual settings while mitigating language bias. The approach fine-tunes multilingual lang
Research goal: How does varying the ratio of monolingual to cross-lingual data in hybrid batch training affect zero-shot retrieval accuracy on XNLI for low-resource languages compared to standard multilingual fine-tuning?
Autonomous synthesis report generated by Assignee Research. Tribunal consensus score: 7.6/10.
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