A Survey on Embedding Dynamic Graphs

被引:68
作者
Barros, Claudio D. T. [1 ]
Mendonca, Matheus R. F. [1 ]
Vieira, Alex B. [2 ]
Ziviani, Artur [1 ]
机构
[1] Natl Lab Sci Comp LNCC, Petropolis, RJ, Brazil
[2] Fed Univ Juiz de Fora UFJF, Juiz De Fora, MG, Brazil
关键词
Dynamic networks; graph embedding; graph representation learning; dynamic graphs; dynamic graph embedding;
D O I
10.1145/3483595
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
Embedding static graphs in low-dimensional vector spaces plays a key role in network analytics and inference, supporting applications like node classification, link prediction, and graph visualization. However, many realworld networks present dynamic behavior, including topological evolution, feature evolution, and diffusion. Therefore, several methods for embedding dynamic graphs have been proposed to learn network representations over time, facing novel challenges, such as time-domain modeling, temporal features to be captured, and the temporal granularity to be embedded. In this survey, we overview dynamic graph embedding, discussing its fundamentals and the recent advances developed so far. We introduce the formal definition of dynamic graph embedding, focusing on the problem setting and introducing a novel taxonomy for dynamic graph embedding input and output. We further explore different dynamic behaviors that may be encompassed by embeddings, classifying by topological evolution, feature evolution, and processes on networks. Afterward, we describe existing techniques and propose a taxonomy for dynamic graph embedding techniques based on algorithmic approaches, from matrix and tensor factorization to deep learning, random walks, and temporal point processes. We also elucidate main applications, including dynamic link prediction, anomaly detection, and diffusion prediction, and we further state some promising research directions in the area.
引用
收藏
页数:37
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