Graph Drawing
Graph drawing research focuses on efficiently representing and manipulating graph-structured data, aiming to optimize algorithms for tasks like pathfinding, substructure counting, and graph classification. Current research emphasizes developing novel algorithms, including those based on reinforcement learning, linear programming, and graph neural networks (GNNs), to improve computational efficiency and address challenges like heterophily and scalability in large graphs. These advancements have significant implications for diverse fields, enabling faster and more accurate analysis of complex networks in areas such as social sciences, robotics, and materials science.
Papers
Decentralized Adversarial Training over Graphs
Ying Cao, Elsa Rizk, Stefan Vlaski, Ali H. Sayed
Extracting real estate values of rental apartment floor plans using graph convolutional networks
Atsushi Takizawa
GETT-QA: Graph Embedding based T2T Transformer for Knowledge Graph Question Answering
Debayan Banerjee, Pranav Ajit Nair, Ricardo Usbeck, Chris Biemann
Team Coordination on Graphs with State-Dependent Edge Cost
Sara Oughourli, Manshi Limbu, Zechen Hu, Xuan Wang, Xuesu Xiao, Daigo Shishika
Deep trip generation with graph neural networks for bike sharing system expansion
Yuebing Liang, Fangyi Ding, Guan Huang, Zhan Zhao
Random Inverse Problems Over Graphs: Decentralized Online Learning
Tao Li, Xiwei Zhang