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Denoising Relation Extraction from Document-level Distant Supervision

8 November 2020
Chaojun Xiao
Yuan Yao
Ruobing Xie
Xu Han
Zhiyuan Liu
Maosong Sun
Fen Lin
Leyu Lin
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Abstract

Distant supervision (DS) has been widely used to generate auto-labeled data for sentence-level relation extraction (RE), which improves RE performance. However, the existing success of DS cannot be directly transferred to the more challenging document-level relation extraction (DocRE), since the inherent noise in DS may be even multiplied in document level and significantly harm the performance of RE. To address this challenge, we propose a novel pre-trained model for DocRE, which denoises the document-level DS data via multiple pre-training tasks. Experimental results on the large-scale DocRE benchmark show that our model can capture useful information from noisy DS data and achieve promising results.

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