基于图卷积神经网络和属性信息的跨语言实体对齐

Xiaozhan Hu, Yuan Sun
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引用次数: 0

摘要

知识图谱在自然语言处理领域应用广泛。为了研究如何利用实体的结构和属性信息进行跨语言实体配准,我们先后借鉴了HGCN模型的高速门机制和RNM模型的关系感知邻域匹配模型。首先,利用图卷积神经网络(GCN)进行知识图嵌入学习,然后引入属性信息和高速门机制的方法,共同嵌入结构和属性进行学习。在实体配准中,使用关系感知邻域匹配来提高配准性能。因此,本文提出了一种基于图卷积神经网络和属性信息的实体配准研究方法。在公开数据集 DBP15k 上进行了实验,从实验结果可以看出,Hits@1 指标分别达到了 85.24%、87.26% 和 94.76%,取得了较好的实验效果。
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Cross-language entity alignment based on graph convolution neural network and attribute information
Knowledge graphs are widely used in the field of natural language processing applications. In order to study how to use the structural and attribute information of entities for cross language entity alignment, we have successively borrowed the high-speed gate mechanism of the HGCN model and the relationship aware neighborhood matching model of the RNM model. Firstly, using Graph Convolutional Neural Network (GCN) for knowledge graph embedding learning, and then introducing the method of attribute information and highway gates mechanism to jointly embed the structure and attributes for learning. In entity alignment, relationship aware neighborhood matching is used to improve alignment performance. Therefore, this article proposes a research method for entity alignment based on graph convolutional neural networks and attribute information. Experiments were conducted on the publicly available dataset DBP15k, and from the results, it can be seen that Hits@1 The indicators reached 85.24%, 87.26%, and 94.76% respectively, achieving better experimental results.
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