Graph Structure
Graph structure research focuses on understanding and manipulating the organization of interconnected nodes and edges, aiming to extract meaningful information and improve performance in various applications. Current research emphasizes developing robust methods for learning and refining graph structures, often employing graph neural networks (GNNs), large language models (LLMs), and optimization techniques like linear programming and genetic algorithms to address challenges such as noise, heterophily, and scalability. These advancements have significant implications for diverse fields, including data retrieval, machine learning, and even mathematical discovery, by enabling more accurate and efficient analysis of complex relational data.
Papers
LLM-assisted Knowledge Graph Engineering: Experiments with ChatGPT
Lars-Peter Meyer, Claus Stadler, Johannes Frey, Norman Radtke, Kurt Junghanns, Roy Meissner, Gordian Dziwis, Kirill Bulert, Michael Martin
Privacy-Utility Trade-offs in Neural Networks for Medical Population Graphs: Insights from Differential Privacy and Graph Structure
Tamara T. Mueller, Maulik Chevli, Ameya Daigavane, Daniel Rueckert, Georgios Kaissis