Graph Structured Data
Graph-structured data, representing relationships between entities as nodes and edges, is increasingly prevalent across diverse fields, driving research into effective methods for analysis and learning. Current research focuses on developing novel graph neural network (GNN) architectures, including those leveraging transformers, state-space models, and topological data analysis, to improve expressiveness, scalability, and robustness in tasks like node classification, link prediction, and graph classification. These advancements aim to address challenges such as over-smoothing, limited expressivity, and bias, ultimately enhancing the interpretability and reliability of GNNs for applications ranging from social network analysis to drug discovery. Furthermore, integrating large language models with GNNs is an emerging area of focus, aiming to leverage the strengths of both paradigms for improved performance and understanding of complex graph data.
Papers
Neural-Symbolic Recommendation with Graph-Enhanced Information
Bang Chen, Wei Peng, Maonian Wu, Bo Zheng, Shaojun Zhu
Intrinsically motivated graph exploration using network theories of human curiosity
Shubhankar P. Patankar, Mathieu Ouellet, Juan Cervino, Alejandro Ribeiro, Kieran A. Murphy, Dani S. Bassett