Temporal Graph Network
Temporal graph networks (TGNs) are a class of machine learning models designed to analyze data represented as graphs that evolve over time, aiming to learn meaningful representations from these dynamic interactions. Current research focuses on improving the efficiency and scalability of TGNs, often leveraging architectures inspired by transformers and exploring adaptive neighborhood sampling techniques to enhance performance. This field is significant due to its broad applicability across diverse domains, including financial fraud detection, recommendation systems, and human motion prediction, where understanding temporal dynamics within networked data is crucial for accurate modeling and prediction.
Papers
Towards Neural Scaling Laws for Foundation Models on Temporal Graphs
Razieh Shirzadkhani, Tran Gia Bao Ngo, Kiarash Shamsi, Shenyang Huang, Farimah Poursafaei, Poupak Azad, Reihaneh Rabbany, Baris Coskunuzer, Guillaume Rabusseau, Cuneyt Gurcan Akcora
Towards Adaptive Neighborhood for Advancing Temporal Interaction Graph Modeling
Siwei Zhang, Xi Chen, Yun Xiong, Xixi Wu, Yao Zhang, Yongrui Fu, Yinglong Zhao, Jiawei Zhang
Stock Recommendations for Individual Investors: A Temporal Graph Network Approach with Mean-Variance Efficient Sampling
Youngbin Lee, Yejin Kim, Javier Sanz-Cruzado, Richard McCreadie, Yongjae Lee
Temporal Graph Networks for Graph Anomaly Detection in Financial Networks
Yejin Kim, Youngbin Lee, Minyoung Choe, Sungju Oh, Yongjae Lee