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Lexicon-Enhanced Self-Supervised Training for Multilingual Dense Retrieval

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arxiv 2303.14979 v1 pith:ZVCZAWGT submitted 2023-03-27 cs.IR

Lexicon-Enhanced Self-Supervised Training for Multilingual Dense Retrieval

classification cs.IR
keywords multilingualmethodmodelsdatasettrainingunlabeledbetterdata
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Recent multilingual pre-trained models have shown better performance in various multilingual tasks. However, these models perform poorly on multilingual retrieval tasks due to lacking multilingual training data. In this paper, we propose to mine and generate self-supervised training data based on a large-scale unlabeled corpus. We carefully design a mining method which combines the sparse and dense models to mine the relevance of unlabeled queries and passages. And we introduce a query generator to generate more queries in target languages for unlabeled passages. Through extensive experiments on Mr. TYDI dataset and an industrial dataset from a commercial search engine, we demonstrate that our method performs better than baselines based on various pre-trained multilingual models. Our method even achieves on-par performance with the supervised method on the latter dataset.

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