Dual Gated Graph Attention Networks with Dynamic Iterative Training for Cross-Lingual Entity Alignment

Zhiwen Xie, Runjie Zhu, Kunsong Zhao, Jin Liu, Guangyou Zhou, Xiangji Huang
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引用次数: 9

Abstract

Cross-lingual entity alignment has attracted considerable attention in recent years. Past studies using conventional approaches to match entities share the common problem of missing important structural information beyond entities in the modeling process. This allows graph neural network models to step in. Most existing graph neural network approaches model individual knowledge graphs (KGs) separately with a small amount of pre-aligned entities served as anchors to connect different KG embedding spaces. However, this characteristic can cause several major problems, including performance restraint due to the insufficiency of available seed alignments and ignorance of pre-aligned links that are useful in contextual information in-between nodes. In this article, we propose DuGa-DIT, a dual gated graph attention network with dynamic iterative training, to address these problems in a unified model. The DuGa-DIT model captures neighborhood and cross-KG alignment features by using intra-KG attention and cross-KG attention layers. With the dynamic iterative process, we can dynamically update the cross-KG attention score matrices, which enables our model to capture more cross-KG information. We conduct extensive experiments on two benchmark datasets and a case study in cross-lingual personalized search. Our experimental results demonstrate that DuGa-DIT outperforms state-of-the-art methods.
基于动态迭代训练的双门控图注意网络跨语言实体对齐
近年来,跨语言实体对齐引起了相当大的关注。过去使用传统方法匹配实体的研究都存在一个共同的问题,即在建模过程中缺少实体之外的重要结构信息。这允许图形神经网络模型介入。现有的大多数图神经网络方法都是单独对单个知识图(KG)建模,用少量预先对齐的实体作为锚点连接不同的KG嵌入空间。然而,这个特性可能会导致几个主要问题,包括由于可用种子对齐不足而导致的性能限制,以及忽略在节点之间的上下文信息中有用的预对齐链接。在本文中,我们提出了DuGa-DIT,一个具有动态迭代训练的双门控图注意网络,在一个统一的模型中解决了这些问题。DuGa-DIT模型通过使用kg内注意层和跨kg注意层捕获邻域和跨kg对齐特征。通过动态迭代过程,我们可以动态更新跨kg注意评分矩阵,使我们的模型能够捕获更多的跨kg信息。我们在两个基准数据集上进行了广泛的实验,并对跨语言个性化搜索进行了案例研究。我们的实验结果表明,DuGa-DIT优于最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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