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Type-Aware Distantly Supervised Relation Extraction with Linked Arguments

机译:具有链接参数的类型感知的远程监督关系提取

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Distant supervision has become the leading method for training large-scale relation extractors, with nearly universal adoption in recent TAC knowledge-base population competitions. However, there are still many questions about the best way to learn such extractors. In this paper we investigate four orthogonal improvements: integrating named entity linking (NEL) and coreference resolution into argument identification for training and extraction, enforcing type constraints of linked arguments, and partitioning the model by relation type signature. We evaluate sentential extraction performance on two datasets: the popular set of NY Times articles partially annotated by Hoffmann et al. (2011) and a new dataset, called GoReCo, that is comprehensively annotated for 48 common relations. We find that using NEL for argument identification boosts performance over the traditional approach (named entity recognition with string match), and there is further improvement from using argument types. Our best system boosts precision by 44% and recall by 70%.
机译:远程监管已成为培训大型关系提取器的主要方法,在最近的TAC知识库人口竞赛中几乎被普遍采用。但是,关于学习此类提取器的最佳方法仍然存在许多问题。在本文中,我们研究了四个正交的改进:将命名实体链接(NEL)和共指解析集成到参数识别中以进行训练和提取,强制执行链接参数的类型约束以及通过关系类型签名对模型进行分区。我们在两个数据集上评估了句子提取的性能:Hoffmann等人部分注释的《纽约时报》的热门文章集。 (2011年)和一个名为GoReCo的新数据集,该数据集对48个共同关系进行了全面注释。我们发现使用NEL进行参数识别比传统方法(具有字符串匹配的命名实体识别)提高了性能,并且使用参数类型有进一步的改进。我们最好的系统将精度提高了44%,召回率提高了70%。

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