FROM SIMPLE GRAPH TO TEMPORAL GRAPH: A SURVEY ON GRAPH EMBEDDING
The Hong Kong University of Science and Technology (Guangzhou)
Data Science and Analytics Thrust
PhD Qualifying Examination
By Mr. Yifan SONG
Abstract
Graph embedding has emerged as a pivotal area of research in recent times, which is an important technique for transmuting graph data into compact and low-dimensional vectors while preserving its topological structure. In this survey, we furnish an exhaustive review of graph embedding techniques, starting with simple graph embedding methods, which aims to embed the graph without timestamp. We categorize simple graph embedding methods into three class: those predicated on random walk strategies, those reliant on matrix factorization, and those employing neural network-based frameworks. For each category, we elucidate their inherent strengths and limitations. Subsequently, we provide a review of temporal graph embedding methods that have attracted attention in recent years. We classify existing temporal graph embedding methods into GNN-based and non-GNN-based methods, and similarly analyze their advantages and disadvantages. By examining the challenges and potential future directions, this survey aims to impart a comprehensive understanding of the graph embedding domain and guide future research endeavors.
PQE Committee
Chairperson: Prof. Fugee TSUNG
Prime Supervisor: Prof Jing TANG
Co-Supervisor: Prof Jinglei YANG
Examiner: Prof Lei LI
Date
04 June 2024
Time
09:50:00 - 11:05:00
Location
E1-148
Join Link
Zoom Meeting ID: 872 2650 2674
Passcode: dsa2024