Gene Level GNN
Gene-level Graph Neural Networks (GNNs) leverage the power of graph representations to model relationships between genes and other biological entities, aiming to improve the accuracy and interpretability of biological data analysis. Current research focuses on enhancing GNN expressivity, addressing challenges like oversmoothing and adversarial attacks, and developing efficient training methods for large-scale datasets, often incorporating techniques from reinforcement learning and knowledge distillation. These advancements hold significant promise for accelerating drug discovery, improving disease diagnosis, and furthering our understanding of complex biological systems.
Papers
GNN-GMVO: Graph Neural Networks for Optimizing Gross Merchandise Value in Similar Item Recommendation
Ramin Giahi, Reza Yousefi Maragheh, Nima Farrokhsiar, Jianpeng Xu, Jason Cho, Evren Korpeoglu, Sushant Kumar, Kannan Achan
Unleashing the potential of GNNs via Bi-directional Knowledge Transfer
Shuai Zheng, Zhizhe Liu, Zhenfeng Zhu, Xingxing Zhang, Jianxin Li, Yao Zhao