Domain Generalization
Domain generalization (DG) aims to train machine learning models that perform well on unseen data, overcoming the limitations of models trained and tested on similar data distributions. Current research focuses on improving model robustness through techniques like self-supervised learning, data augmentation (including novel methods like style prompting and spectrum synthesis), and the use of foundation models and parameter-efficient fine-tuning. These advancements are crucial for deploying reliable AI systems in real-world applications where data variability is inevitable, particularly in fields like medical imaging, autonomous systems, and natural language processing.
Papers
Domain Generalization for In-Orbit 6D Pose Estimation
Antoine Legrand, Renaud Detry, Christophe De Vleeschouwer
Revisiting Spurious Correlation in Domain Generalization
Bin Qin, Jiangmeng Li, Yi Li, Xuesong Wu, Yupeng Wang, Wenwen Qiang, Jianwen Cao
Beyond Boundaries: Learning a Universal Entity Taxonomy across Datasets and Languages for Open Named Entity Recognition
Yuming Yang, Wantong Zhao, Caishuang Huang, Junjie Ye, Xiao Wang, Huiyuan Zheng, Yang Nan, Yuran Wang, Xueying Xu, Kaixin Huang, Yunke Zhang, Tao Gui, Qi Zhang, Xuanjing Huang