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arXiv:2205.02048

Few-Shot Document-Level Relation Extraction

Published on May 4, 2022
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Abstract

FREDo is a few-shot document-level relation extraction benchmark that addresses the limitations of sentence-level benchmarks by using document-level corpora and adapting a state-of-the-art method for improved domain adaptation.

AI-generated summary

We present FREDo, a few-shot document-level relation extraction (FSDLRE) benchmark. As opposed to existing benchmarks which are built on sentence-level relation extraction corpora, we argue that document-level corpora provide more realism, particularly regarding none-of-the-above (NOTA) distributions. Therefore, we propose a set of FSDLRE tasks and construct a benchmark based on two existing supervised learning data sets, DocRED and sciERC. We adapt the state-of-the-art sentence-level method MNAV to the document-level and develop it further for improved domain adaptation. We find FSDLRE to be a challenging setting with interesting new characteristics such as the ability to sample NOTA instances from the support set. The data, code, and trained models are available online (https://github.com/nicpopovic/FREDo).

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