CR-TransR: A Knowledge Graph Embedding Model for Cultural Domain

IF 2.1 3区 计算机科学 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS ACM Journal on Computing and Cultural Heritage Pub Date : 2023-10-25 DOI:10.1145/3625299
Wenjun Hou, Bing Bai, Chenyang Cai
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Abstract

As a combination of information computing technology and the cultural field, cultural computing is gaining more and more attention. The knowledge graph is also gradually applied as a particular data structure in the cultural area. Based on the domain knowledge graph data of the Beijing Municipal Social Science Project ”Mining and Utilization of Cultural Resources in the Ancient Capital of Beijing,” this paper proposes a graph representation learning model CR-TransR that integrates cultural attributes. Through the analysis of the data in the cultural field of the ancient capital of Beijing, a cultural feature dictionary is constructed, and a domain-specific feature matrix is constructed in the form of word vector splicing. The feature matrix is used to constrain the embedding graph model TransR, and then the feature matrix and the TransR model are jointly trained to complete the embedded expression of the knowledge graph. Finally, a comparative experiment is carried out on the Beijing ancient capital cultural knowledge graph dataset and the effects of the classic graph embedding algorithms TransE, TransH, and TransR. At the same time, we try to reproduce the embedding method with the core idea of neighbor node information aggregation as the core idea, and CRTransR are compared. The experimental tasks include link prediction and triplet classification, and the experimental results show that the CRTransR model performs better.
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文化领域知识图谱嵌入模型CR-TransR
作为信息计算技术与文化领域的结合,文化计算越来越受到人们的关注。知识图谱作为一种特殊的数据结构也逐渐在文化领域得到应用。本文基于北京市社会科学项目“北京古都文化资源的挖掘与利用”的领域知识图谱数据,提出了一种融合文化属性的图表示学习模型CR-TransR。通过对北京古都文化领域数据的分析,构建了文化特征词典,并以词向量拼接的形式构建了特定领域的特征矩阵。利用特征矩阵约束嵌入图模型TransR,然后将特征矩阵与TransR模型联合训练,完成知识图的嵌入表达式。最后,在北京古都文化知识图谱数据集上进行对比实验,对比了TransE、TransH和TransR经典图谱嵌入算法的效果。同时,我们尝试以邻居节点信息聚合的核心思想为核心思想再现嵌入方法,并与CRTransR进行比较。实验任务包括链路预测和三元组分类,实验结果表明CRTransR模型表现更好。
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来源期刊
ACM Journal on Computing and Cultural Heritage
ACM Journal on Computing and Cultural Heritage Arts and Humanities-Conservation
CiteScore
4.60
自引率
8.30%
发文量
90
期刊介绍: ACM Journal on Computing and Cultural Heritage (JOCCH) publishes papers of significant and lasting value in all areas relating to the use of information and communication technologies (ICT) in support of Cultural Heritage. The journal encourages the submission of manuscripts that demonstrate innovative use of technology for the discovery, analysis, interpretation and presentation of cultural material, as well as manuscripts that illustrate applications in the Cultural Heritage sector that challenge the computational technologies and suggest new research opportunities in computer science.
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