Graph Representation Learning and Its Applications: A Survey

被引:17
作者
Hoang, Van Thuy [1 ]
Jeon, Hyeon-Ju [2 ]
You, Eun-Soon [1 ]
Yoon, Yoewon [3 ]
Jung, Sungyeop [4 ]
Lee, O-Joun [1 ]
机构
[1] Catholic Univ Korea, Dept Artificial Intelligence, 43 Jibong Ro, Bucheon 14662, Gyeonggi, South Korea
[2] Korea Inst Atmospher Predict Syst KIAPS, Data Assimilat Grp, 35 Boramae Ro 5 Gil, Seoul 07071, South Korea
[3] Dongguk Univ, Dept Social Welf, 30 Pildong Ro 1 Gil, Seoul 04620, South Korea
[4] Seoul Natl Univ, Adv Inst Convergence Technol AICT, Semicond Devices & Circuits Lab, 145 Gwanggyo Ro, Suwon 16229, Gyeonggi, South Korea
基金
新加坡国家研究基金会;
关键词
graph embedding; graph representation learning; graph transformer; graph neural networks; TARGET INTERACTION PREDICTION; NEURAL-NETWORKS; RANDOM-WALK; DIMENSIONALITY REDUCTION; TOPOLOGICAL SIMILARITY; CLASSIFICATION; INFORMATION; MODEL; FRAMEWORK; KERNELS;
D O I
10.3390/s23084168
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Graphs are data structures that effectively represent relational data in the real world. Graph representation learning is a significant task since it could facilitate various downstream tasks, such as node classification, link prediction, etc. Graph representation learning aims to map graph entities to low-dimensional vectors while preserving graph structure and entity relationships. Over the decades, many models have been proposed for graph representation learning. This paper aims to show a comprehensive picture of graph representation learning models, including traditional and state-of-the-art models on various graphs in different geometric spaces. First, we begin with five types of graph embedding models: graph kernels, matrix factorization models, shallow models, deep-learning models, and non-Euclidean models. In addition, we also discuss graph transformer models and Gaussian embedding models. Second, we present practical applications of graph embedding models, from constructing graphs for specific domains to applying models to solve tasks. Finally, we discuss challenges for existing models and future research directions in detail. As a result, this paper provides a structured overview of the diversity of graph embedding models.
引用
收藏
页数:104
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