Graph Classification
Graph classification aims to automatically categorize graphs based on their structural and/or attribute properties, a crucial task with applications across diverse fields. Current research focuses on improving the efficiency and accuracy of graph neural networks (GNNs) for this purpose, exploring novel architectures like those incorporating attention mechanisms, hierarchical pooling, and disentangled representation learning, as well as developing techniques to address challenges such as oversmoothing, imbalanced datasets, and out-of-distribution generalization. These advancements are significant because they enable more effective analysis of complex relational data in domains ranging from social networks and bioinformatics to high-energy physics.
Papers
BLIS-Net: Classifying and Analyzing Signals on Graphs
Charles Xu, Laney Goldman, Valentina Guo, Benjamin Hollander-Bodie, Maedee Trank-Greene, Ian Adelstein, Edward De Brouwer, Rex Ying, Smita Krishnaswamy, Michael Perlmutter
PSP: Pre-Training and Structure Prompt Tuning for Graph Neural Networks
Qingqing Ge, Zeyuan Zhao, Yiding Liu, Anfeng Cheng, Xiang Li, Shuaiqiang Wang, Dawei Yin