Relation extraction (RE) models have been challenged by their reliance on training data with expensive annotations. Considering that summarization tasks aim at acquiring concise expressions of synoptical information from the longer context, these tasks naturally align with the objective of RE, i.e., extracting a kind of synoptical information that describes the relation of entity mentions. We present SuRE, which converts RE into a summarization formulation. SuRE leads to more precise and resource-efficient RE based on indirect supervision from summarization tasks. To achieve this goal, we develop sentence and relation conversion techniques that essentially bridge the formulation of summarization and RE tasks. We also incorporate constraint decoding techniques with Trie scoring to further enhance summarization-based RE with robust inference. Experiments on three RE datasets demonstrate the effectiveness of SuRE in both full-dataset and low-resource settings, showing that summarization is a promising source of indirect supervision to improve RE models.
翻译:关系提取(RE)模型因依赖费用昂贵的说明说明的培训数据而受到挑战。考虑到汇总任务旨在从更长远的角度获取简明的概括信息,这些任务自然地与RE的目标相一致,即提取一种描述实体关系的综合信息。我们介绍Sure,它将RE转换成一个汇总配方。Sure导致更精确和资源效率更高的可再生能源,其基础是间接监督而不是总结任务。为了实现这一目标,我们开发了判决和关系转换技术,这些技术基本上将总和和和和RE任务的制定连接起来。我们还采用了与Trie评分的制约解码技术,以有力的推理进一步加强基于总和的RE。对三个RE数据集的实验表明SRE在全数据集和低资源环境中的有效性,表明对总和是一个很有希望的间接监督来源,可以改进RE模型。