World Event
Research on "World Events" currently focuses on leveraging large datasets and advanced machine learning models to understand and predict various global phenomena. This includes using transformer-based architectures and graph neural networks to analyze multimodal data (images, text, sensor readings) for tasks such as predicting wildfire risk, optimizing traffic flow, and forecasting e-commerce demand. These efforts aim to improve the accuracy and robustness of predictions, particularly in handling anomalies and diverse geographical contexts, leading to more effective resource allocation and decision-making across various sectors. The ultimate goal is to develop more comprehensive and reliable models for understanding complex global systems and their interactions.
Papers
GPFL: Simultaneously Learning Global and Personalized Feature Information for Personalized Federated Learning
Jianqing Zhang, Yang Hua, Hao Wang, Tao Song, Zhengui Xue, Ruhui Ma, Jian Cao, Haibing Guan
From Global to Local: Multi-scale Out-of-distribution Detection
Ji Zhang, Lianli Gao, Bingguang Hao, Hao Huang, Jingkuan Song, Hengtao Shen