Graph Representation Learning
Graph representation learning aims to encode graph-structured data into low-dimensional vector representations suitable for machine learning tasks. Current research focuses on improving the expressiveness and efficiency of graph neural networks (GNNs), exploring alternative approaches like topological embeddings and leveraging large language models for enhanced interpretability and handling of text-attributed graphs. These advancements are crucial for tackling challenges in various domains, including recommendation systems, anomaly detection, and biological data analysis, where graph-structured data is prevalent and efficient, accurate analysis is critical.
Papers
Enhancing Intra-class Information Extraction for Heterophilous Graphs: One Neural Architecture Search Approach
Lanning Wei, Zhiqiang He, Huan Zhao, Quanming Yao
Towards Generalizable Graph Contrastive Learning: An Information Theory Perspective
Yige Yuan, Bingbing Xu, Huawei Shen, Qi Cao, Keting Cen, Wen Zheng, Xueqi Cheng
GRATIS: Deep Learning Graph Representation with Task-specific Topology and Multi-dimensional Edge Features
Siyang Song, Yuxin Song, Cheng Luo, Zhiyuan Song, Selim Kuzucu, Xi Jia, Zhijiang Guo, Weicheng Xie, Linlin Shen, Hatice Gunes
EDEN: A Plug-in Equivariant Distance Encoding to Beyond the 1-WL Test
Chang Liu, Yuwen Yang, Yue Ding, Hongtao Lu