Graph Data
Graph data, representing relationships between entities, is increasingly important across diverse fields, driving research into efficient processing and analysis methods. Current research focuses on integrating graph data with large language models (LLMs) through techniques like graph flattening and alignment, as well as developing specialized graph neural networks (GNNs) tailored for tasks such as link prediction, node classification, and graph generation, often incorporating attention mechanisms and temporal dynamics. These advancements aim to improve scalability, accuracy, and interpretability in handling massive and complex graph datasets, impacting fields ranging from social network analysis to drug discovery and beyond.
Papers
Future Directions in the Theory of Graph Machine Learning
Christopher Morris, Fabrizio Frasca, Nadav Dym, Haggai Maron, İsmail İlkan Ceylan, Ron Levie, Derek Lim, Michael Bronstein, Martin Grohe, Stefanie Jegelka
A Survey on Graph Condensation
Hongjia Xu, Liangliang Zhang, Yao Ma, Sheng Zhou, Zhuonan Zheng, Bu Jiajun
Graph data modelling for outcome prediction in oropharyngeal cancer patients
Nithya Bhasker, Stefan Leger, Alexander Zwanenburg, Chethan Babu Reddy, Sebastian Bodenstedt, Steffen Löck, Stefanie Speidel
Provable Tensor Completion with Graph Information
Kaidong Wang, Yao Wang, Xiuwu Liao, Shaojie Tang, Can Yang, Deyu Meng