A new relational reflection graph convolutional network for the knowledge representation

被引:1
作者
Shuanglong Y. [1 ]
Dechang P. [1 ]
机构
[1] College of Computer Science and Technology, Nanjing University of Aeronautics and Astronautics, Jiangjun Street, Jiangsu, Nanjing
关键词
Graph convolution network; Knowledge embedding; Knowledge graphs; Knowledge representation; Link prediction;
D O I
10.1007/s12652-023-04516-w
中图分类号
学科分类号
摘要
The goal of the knowledge representation is to embed entities and relationships in the facts into consecutive low-dimensional dense vectors. Although shallow embedding methods can directly map entities or relations into vectors, they lose information about the structure of the knowledge graph network during the learning process. Alternatively, deep embedding methods can be used to learn rich structural information. As a practical matter, existing deep embedding methods rely too heavily on simple logical operations, such as subtraction and multiplication, between entities and relations. This paper proposes a method for deep embedding, RRGCN. Unlike the traditional method of knowledge graph convolution, this method does not rely on logical transformations to determine aggregation information. In RRGCN, aggregation information is defined as a mapping projection of neighboring features on a unique hyperplane that corresponds to the relation. Furthermore, RRGCN constructs a residual neural network between two graph convolution layers in order to reduce the amount of information loss as a consequence of superimposing graph convolution layers on top of each other. Results from experiments show that RRGCN is capable of performing well on the publicly available benchmark datasets FB15k-237 and WN18RR in the knowledge graph link prediction task, which outerforms the state-of-the-art relevent models. © 2023, The Author(s), under exclusive licence to Springer-Verlag GmbH Germany, part of Springer Nature.
引用
收藏
页码:4191 / 4200
页数:9
相关论文
共 39 条
[1]  
Lowfer: Low-rank bilinear pooling for link prediction, In: International Conference on Machine Learning, pp. 257-268, (2020)
[2]  
Balazevic I., Allen C., Hospedales T.M., Tucker: Tensor factorization for knowledge graph completion, In the 2019 Conference on Empirical Methods in Natural Language Processing and the 9Th International Joint Conference on Natural Language Processing (EMNLP-IJCNLP), pp. 5188-5197, (2019)
[3]  
Bo D., Wang X., Shi C., Shen H., Beyond low-frequency information in graph convolutional networks, Natl Conf Artificial Intell, 35, pp. 3950-3957, (2021)
[4]  
Bollacker K., Evans C., Paritosh P., Sturge T., Taylor J., Freebase: A collaboratively created graph database for structuring human knowledge, In: The 2008 ACM SIGMOD International Conference on Management of Data, pp. 1247-1250, (2008)
[5]  
Translating embeddings for modeling multi-relational data, In: 27Nd Conference on Neural Information Processing Systems (NIPS, pp. 2787-2795, (2013)
[6]  
Cai H., Zheng V.W., Chang K.C.-C., A comprehensive survey of graph embedding: Problems, techniques, and applications, IEEE Trans Knowl Data Eng, 30, 9, pp. 1616-1637, (2018)
[7]  
Chami I., Ying Z., Re C., Leskovec J., Hyperbolic graph convolutional neural networks, Adv Neural Inform Process Syst, 32, (2019)
[8]  
Chang X., Nie F., Wang S., Yang Y., Zhou X., Zhang C., Compound rank- k projections for bilinear analysis, IEEE Trans Neural Netw Learni Syst, 27, 7, pp. 1502-1513, (2015)
[9]  
Chen K., Yao L., Zhang D., Wang X., Chang X., Nie F., A semisupervised recurrent convolutional attention model for human activity recognition, IEEE Trans Neural Netw Learn Syst, 31, 5, pp. 1747-1756, (2019)
[10]  
Dettmers T., Minervini P., Stenetorp P., Riedel S., Convolutional 2d knowledge graph embeddings, 32Nd AAAI Conference on Artificial Intelligence, pp. 1811-1818, (2018)