基于多头注意机制的双指针网络多实体关系提取

Seongsik Park, H. Kim
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引用次数: 1

摘要

以往的许多关系提取研究都集中在寻找单个句子中两个实体之间的一个关系。然而,我们很容易发现一个句子中存在多个实体,并且这些实体形成了多种关系。为了解决这一问题,我们提出了一种基于多头注意机制的双指针网络的关系提取模型。提出的模型通过使用称为对象解码器的前向解码器找到n- 1的主题-对象关系。然后,它通过使用称为主题解码器的向后解码器找到1对n的主题-对象关系。在ACE-05数据集和NYT数据集的实验中,所提出的模型达到了最先进的性能(ACE-05数据集的f1得分为80.5%,NYT数据集的f1得分为78.3%)。
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Relation Extraction among Multiple Entities Using a Dual Pointer Network with a Multi-Head Attention Mechanism
Many previous studies on relation extrac-tion have been focused on finding only one relation between two entities in a single sentence. However, we can easily find the fact that multiple entities exist in a single sentence and the entities form multiple relations. To resolve this prob-lem, we propose a relation extraction model based on a dual pointer network with a multi-head attention mechanism. The proposed model finds n-to-1 subject-object relations by using a forward de-coder called an object decoder. Then, it finds 1-to-n subject-object relations by using a backward decoder called a sub-ject decoder. In the experiments with the ACE-05 dataset and the NYT dataset, the proposed model achieved the state-of-the-art performances (F1-score of 80.5% in the ACE-05 dataset, F1-score of 78.3% in the NYT dataset)
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