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A Novel End-to-End Multiple Tagging Model for Knowledge Extraction

机译:一种新颖的端到端多重标记知识抽取模型

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It is an emerging research topic in NLP to joint extraction of knowledge including entities and relations from unstructured text and representing them as meaningful triplets. Despite significant progresses made by recent deep neural network based solutions, these methods still confront the overlapping issue that different relational triplets may have overlapped entities in a sentence, and it is troublesome to address this issue by current solutions. In this paper, we propose a novel multiple tagging model to address the overlapping issue and extract knowledge from unstructured text. Specifically, we devise a multiple tagging scheme that transforms the problem of joint entity and relation extraction into a multiple sequence tagging problem. By using GRU as the building block for encoding-decoding, the proposed model is capable of handling the triplet overlapping problem because the decoder layer allows one entity to take part in more than one triplet. The whole network is end-to-end trianable and outputs all triplets in a sentence directly. Experimental results on the NYT and KBP benchmarks demonstrate that the proposed model siginificantly improves the recall of triplet, and consequently, achieving the new state-of-the-art in the task of triplet extraction on both datasets.
机译:从非结构化文本联合提取包括实体和关系的知识并将其表示为有意义的三元组,这是NLP中新兴的研究主题。尽管最近基于深度神经网络的解决方案取得了重大进展,但是这些方法仍然面临一个重叠的问题,即不同的关系三元组可能在一个句子中有重叠的实体,并且用当前的解决方案来解决这个问题很麻烦。在本文中,我们提出了一种新颖的多重标记模型,以解决重叠问题并从非结构化文本中提取知识。具体来说,我们设计了一种多重标记方案,该方案将联合实体和关系提取的问题转换为多重序列标记问题。通过使用GRU作为编码-解码的构建块,由于解码器层允许一个实体参与一个以上的三元组,因此所提出的模型能够处理三元组重叠问题。整个网络是端到端可三角化的,并直接在一个句子中输出所有三元组。在NYT和KBP基准上的实验结果表明,该模型显着改善了三元组的查全率,因此在两个数据集上都实现了三元组提取任务的最新技术。

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