Node Classification
Node classification aims to assign labels to nodes within a graph based on their features and relationships with other nodes. Current research heavily utilizes Graph Neural Networks (GNNs), including variations like Graph Convolutional Networks (GCNs) and Graph Attention Networks (GATs), often incorporating techniques to address challenges like oversmoothing and heterophily. Focus areas include improving robustness to noisy data and adversarial attacks, enhancing efficiency for large-scale graphs, and developing methods for few-shot and open-world scenarios. These advancements have significant implications for various applications, such as social network analysis, recommendation systems, and biological network modeling.
Papers
Transfer Learning Under High-Dimensional Graph Convolutional Regression Model for Node Classification
Jiachen Chen, Danyang Huang, Liyuan Wang, Kathryn L. Lunetta, Debarghya Mukherjee, Huimin Cheng
Node Identifiers: Compact, Discrete Representations for Efficient Graph Learning
Yuankai Luo, Hongkang Li, Qijiong Liu, Lei Shi, Xiao-Ming Wu
Node Classification via Semantic-Structural Attention-Enhanced Graph Convolutional Networks
Hongyin Zhu
A Federated Parameter Aggregation Method for Node Classification Tasks with Different Graph Network Structures
Hao Song, Jiacheng Yao, Zhengxi Li, Shaocong Xu, Shibo Jin, Jiajun Zhou, Chenbo Fu, Qi Xuan, Shanqing Yu