Graph Learning
Graph learning focuses on developing algorithms and models to analyze and learn from data represented as graphs, aiming to extract meaningful patterns and insights from complex relationships between entities. Current research emphasizes addressing challenges like heterophily (dissimilar nodes being connected), improving scalability for large graphs, and enhancing model interpretability, often employing graph neural networks (GNNs), graph transformers, and federated learning techniques. These advancements have significant implications for various fields, including social network analysis, drug discovery, and recommendation systems, by enabling more accurate predictions and a deeper understanding of complex interconnected systems.
Papers
A Survey on Graph Counterfactual Explanations: Definitions, Methods, Evaluation, and Research Challenges
Mario Alfonso Prado-Romero, Bardh Prenkaj, Giovanni Stilo, Fosca Giannotti
Learning Graphical Factor Models with Riemannian Optimization
Alexandre Hippert-Ferrer, Florent Bouchard, Ammar Mian, Titouan Vayer, Arnaud Breloy
ROLAND: Graph Learning Framework for Dynamic Graphs
Jiaxuan You, Tianyu Du, Jure Leskovec
DuETA: Traffic Congestion Propagation Pattern Modeling via Efficient Graph Learning for ETA Prediction at Baidu Maps
Jizhou Huang, Zhengjie Huang, Xiaomin Fang, Shikun Feng, Xuyi Chen, Jiaxiang Liu, Haitao Yuan, Haifeng Wang