Graph Transformer
Graph Transformers (GTs) are a class of neural networks designed to leverage the power of transformer architectures for analyzing graph-structured data, aiming to improve upon the limitations of traditional graph neural networks. Current research focuses on enhancing GT efficiency and scalability for large graphs, developing novel attention mechanisms to better capture complex relationships, and addressing challenges like over-smoothing and adversarial attacks through techniques such as adaptive attacks and sharpness-aware minimization. The improved performance and expressiveness of GTs are impacting diverse fields, including traffic forecasting, drug discovery, and brain network analysis, by enabling more accurate and efficient modeling of complex relationships within these domains.
Papers
AMIGO: Sparse Multi-Modal Graph Transformer with Shared-Context Processing for Representation Learning of Giga-pixel Images
Ramin Nakhli, Puria Azadi Moghadam, Haoyang Mi, Hossein Farahani, Alexander Baras, Blake Gilks, Ali Bashashati
Diffusing Graph Attention
Daniel Glickman, Eran Yahav
Are More Layers Beneficial to Graph Transformers?
Haiteng Zhao, Shuming Ma, Dongdong Zhang, Zhi-Hong Deng, Furu Wei