Research

NLP

Answering Complex Open-domain Questions With Multi-hop Dense Retrieval

May 3, 2021

Abstract

We propose a simple and efficient multi-hop dense retrieval approach for answering complex open-domain questions, which achieves state-of-the-art performance on two multi-hop datasets, HotpotQA and multi-evidence FEVER. Contrary to previous work, our method does not require access to any corpus-specific information, such as inter-document hyperlinks or human-annotated entity markers, and can be applied to any unstructured text corpus. Our system also yields a much better efficiency-accuracy trade-off, matching the best published accuracy on HotpotQA while being 10 times faster at inference time.

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AUTHORS

Written by

Wenhan Xiong

Xiang Lorraine Li

Srinivasan Iyer

Jingfei Du

Sebastian Riedel

Douwe Kiela

Barlas Oguz

Publisher

ICLR 2021

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