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图表示学习方法研究综述
引用本文:李青,王一晨,杜承烈.图表示学习方法研究综述[J].计算机应用研究,2023,40(6).
作者姓名:李青  王一晨  杜承烈
作者单位:西北工业大学计算机学院,西北工业大学计算机学院,西北工业大学计算机学院
摘    要:针对图表示方法的相关解析任务进行了研究,从形式化定义出发,首先以不同核心技术作为分类标准将图表示学习方法划分为五大类,其包括基于降维解析、矩阵分解、随机游走、深度学习和其他表示学习方法。其次通过归纳与对比分析梳理各类技术发展脉络,进而深层次展现各类图表示方法的优劣。随后结合图表示学习的常用数据集、评估方法和应用领域的归纳分析,展开动态性、可扩展性、可解释性和可解析性的四维剖析。最后总结并展望了图表示学习的未来研究趋势与发展方向。

关 键 词:图表示    图模型    图表示学习方法    表示学习    深度学习
收稿时间:2022/9/29 0:00:00
修稿时间:2023/5/16 0:00:00

Survey on graph representation learning methods
liqing,wangyichen and duchenglie.Survey on graph representation learning methods[J].Application Research of Computers,2023,40(6).
Authors:liqing  wangyichen and duchenglie
Affiliation:School of Computer Science, Northwestern Polytechnical University,,
Abstract:Research on the related analysis tasks of graph representation methods was carried out, starting from the formal definition, divide graph representation learning methods into five categories with different core technologies as the classification criteria, including dimensionality reduction analysis, matrix decomposition, random walk, neural network and other representation learning methods. Secondly, through induction and comparative analysis, the paper combed the development context of various technologies, and then showed the advantages and disadvantages of various graphic representation methods in a deep level. Then combined with the inductive analysis of common data sets, evaluation methods and application fields of graph representation learning, it carried out the four-dimensional analysis of dynamics, scalability, interpretability and analyticity. Finally, it summarized and looked forward to the future research trends and development directions of graph representation learning.
Keywords:graph representation  graph model  graph representation learning method  representation learning  deep learning
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