摘要
知识图谱旨在为各种领域提供更加全面可靠的服务,在实际应用中的价值不可估量,为了使其不断更新和趋于完整,知识图谱补全技术开始被提出;近几年,随着人工智能和深度学习的兴起,许多国内外学者对知识图谱补全方向进行深入研究,出现了很多面向人工智能深度学习的知识图谱补全模型,但相关的文献综述却并不多;为了提供一个全面了解该领域的框架,有助于读者能够掌握当前的研究进展和应用情况,并为未来的研究和应用提供一些参考;通过介绍其概念和典型的知识图谱,从深度学习的知识补全技术的3个角度展开,分析和归纳了目前基于深度学习的知识图谱补全模型,探讨了不同模型的优缺点及改进模型;同时,讨论了现阶段知识图谱补全任务所存在的问题和挑战,并探索了该领域的应用方向和发展前景;综上所述,深度学习在知识图谱补全中具有巨大的发掘价值,亟待学者们进行更深入的研究和进一步地创新。
Knowledge graph aims to provide more comprehensive and reliable services for various fields,its value is immeasurable in practical applications,in order to make it constantly updated and complete,knowledge graph completion technology begins to be proposed;In recent years,with the developments of artificial intelligence and deep learning,many scholars at home and abroad conduct in-depth research on the direction of knowledge graph completion,and proposes many knowledge graph completion models for artificial intelligence deep learning,but there are not many relevant literature reviews.In order to provide a comprehensive understanding framework of the field,it helps readers to grasp current research progress and application,which provides some references for future research and application;By introducing its concept and typical knowledge graph,a current knowledge graph completion model based on deep learning is analyzed and summarized from three perspectives of deep learning knowledge completion technology,and the advantages and disadvantages of different models and the improved model are discussed.At the same time,the problems and challenges of current knowledge graph completion tasks are discussed,and the application direction and development prospects of this field are explored.In summary,deep learning has a great exploration value in knowledge graph completion,which urgently requires scholars to implement more in-depth research and further innovation.
作者
姜颖
祁云嵩
JIANG Ying;QI Yunsong(School of Computer,Jiangsu University of Science and Technology,Zhenjiang 212000,China)
出处
《计算机测量与控制》
2024年第5期8-16,共9页
Computer Measurement &Control
基金
国家自然科学基金(62261029)。
关键词
深度学习
知识图谱补全
链接预测
卷积神经网络
图神经网络
deep learning
knowledge graph completion
link prediction
convolutional neural network
graph neural network