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Addressing Issues of Cross-Linguality in Open-Retrieval Question Answering Systems For Emergent Domains

Authors :
Albalak, Alon
Levy, Sharon
Wang, William Yang
Publication Year :
2022

Abstract

Open-retrieval question answering systems are generally trained and tested on large datasets in well-established domains. However, low-resource settings such as new and emerging domains would especially benefit from reliable question answering systems. Furthermore, multilingual and cross-lingual resources in emergent domains are scarce, leading to few or no such systems. In this paper, we demonstrate a cross-lingual open-retrieval question answering system for the emergent domain of COVID-19. Our system adopts a corpus of scientific articles to ensure that retrieved documents are reliable. To address the scarcity of cross-lingual training data in emergent domains, we present a method utilizing automatic translation, alignment, and filtering to produce English-to-all datasets. We show that a deep semantic retriever greatly benefits from training on our English-to-all data and significantly outperforms a BM25 baseline in the cross-lingual setting. We illustrate the capabilities of our system with examples and release all code necessary to train and deploy such a system.<br />Comment: 6 pages, 8 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2201.11153
Document Type :
Working Paper