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Unsupervised Relation Extraction from Language Models using Constrained Cloze Completion

2020-10-14 04:21:57
Ankur Goswami, Akshata Bhat, Hadar Ohana, Theodoros Rekatsinas

Abstract

We show that state-of-the-art self-supervised language models can be readily used to extract relations from a corpus without the need to train a fine-tuned extractive head. We introduce RE-Flex, a simple framework that performs constrained cloze completion over pretrained language models to perform unsupervised relation extraction. RE-Flex uses contextual matching to ensure that language model predictions matches supporting evidence from the input corpus that is relevant to a target relation. We perform an extensive experimental study over multiple relation extraction benchmarks and demonstrate that RE-Flex outperforms competing unsupervised relation extraction methods based on pretrained language models by up to 27.8 $F_1$ points compared to the next-best method. Our results show that constrained inference queries against a language model can enable accurate unsupervised relation extraction.

Abstract (translated)

URL

https://arxiv.org/abs/2010.06804

PDF

https://arxiv.org/pdf/2010.06804.pdf


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