One Question Answering Model for Many Languages with Cross-lingual Dense Passage Retrieval [article]

Akari Asai, Xinyan Yu, Jungo Kasai, Hannaneh Hajishirzi
2021 arXiv   pre-print
We present Cross-lingual Open-Retrieval Answer Generation (CORA), the first unified many-to-many question answering (QA) model that can answer questions across many languages, even for ones without language-specific annotated data or knowledge sources. We introduce a new dense passage retrieval algorithm that is trained to retrieve documents across languages for a question. Combined with a multilingual autoregressive generation model, CORA answers directly in the target language without any
more » ... slation or in-language retrieval modules as used in prior work. We propose an iterative training method that automatically extends annotated data available only in high-resource languages to low-resource ones. Our results show that CORA substantially outperforms the previous state of the art on multilingual open QA benchmarks across 26 languages, 9 of which are unseen during training. Our analyses show the significance of cross-lingual retrieval and generation in many languages, particularly under low-resource settings.
arXiv:2107.11976v2 fatcat:fhlc373mpfc3bcthq7g72vssem