Knowledge Hypergraph Link Prediction Based on Multi-granular Attention Network
Author:
Affiliation:

Clc Number:

Fund Project:

  • Article
  • |
  • Figures
  • |
  • Metrics
  • |
  • Reference
  • |
  • Related
  • |
  • Cited by
  • |
  • Materials
  • |
  • Comments
    Abstract:

    Link prediction in knowledge graphs is the most effective method for graph complementation, which can effectively improve the data quality of knowledge graphs. However, the relationships in real life are often multiple, thus these knowledge graphs containing multiple relationships can be called knowledge hypergraphs (KHGs). Unfortunately, the existing knowledge graph link prediction methods cannot be directly applied to knowledge hypergraphs, and the existing knowledge hypergraph link prediction models ignore the equality (there is no sequential relationship among the elements in a multivariate relationship) and completeness (a multivariate relationship is not valid if it lacks elements) of the real-life multivariate relationships. To address these problems, a knowledge hypergraph multivariate representation model is firstly proposed, which can directly model the multivariate relationships in the knowledge hypergraph. Then, a multi-granularity neural network-based hypergraph prediction method (HPMG) is studied, which divides the relations into multiple granularities for learning and prediction from different granularities jointly. Next, to address the problem of inadequate HPMG feature fusion, HPMG+ is proposed based on multi-granularity attention network for link prediction of knowledge hypergraphs, which combines all and local attention to achieve differentiated fusion of different features and further improves the performance of the model. Finally, extensive experimental results on real datasets verify that the proposed methods significantly outperform all baseline methods in terms of hyper-edge prediction.

    Reference
    Related
    Cited by
Get Citation

庞俊,刘小琪,谷峪,王鑫,赵宇海,张晓龙,于戈.基于多粒度注意力网络的知识超图链接预测.软件学报,2023,34(3):1259-1276

Copy
Share
Article Metrics
  • Abstract:
  • PDF:
  • HTML:
  • Cited by:
History
  • Received:May 15,2022
  • Revised:September 07,2022
  • Adopted:
  • Online: October 26,2022
  • Published:
You are the firstVisitors
Copyright: Institute of Software, Chinese Academy of Sciences Beijing ICP No. 05046678-4
Address:4# South Fourth Street, Zhong Guan Cun, Beijing 100190,Postal Code:100190
Phone:010-62562563 Fax:010-62562533 Email:jos@iscas.ac.cn
Technical Support:Beijing Qinyun Technology Development Co., Ltd.

Beijing Public Network Security No. 11040202500063