Region Specific
Region-specific analysis focuses on understanding variations within data across geographical locations or sub-populations, aiming to improve model accuracy and uncover hidden patterns. Current research emphasizes developing models that incorporate regional information, leveraging techniques like contrastive learning, transformer architectures, and attention mechanisms to handle diverse data distributions and address issues like data sparsity and domain shift. This work is significant for improving the generalizability and reliability of models across various domains, from urban planning and disease prediction to autonomous navigation and medical image analysis, ultimately leading to more effective and equitable applications.
Papers
High-resolution segmentations of the hypothalamus and its subregions for training of segmentation models
Livia Rodrigues, Martina Bocchetta, Oula Puonti, Douglas Greve, Ana Carolina Londe, Marcondes França, Simone Appenzeller, Leticia Rittner, Juan Eugenio Iglesias
Formation Under Communication Constraints: Control Performance Meets Channel Capacity
Yaru Chen, Yirui Cong, Xiangyun Zhou, Long Cheng, Xiangke Wang
RoPINN: Region Optimized Physics-Informed Neural Networks
Haixu Wu, Huakun Luo, Yuezhou Ma, Jianmin Wang, Mingsheng Long
Multi-modality Regional Alignment Network for Covid X-Ray Survival Prediction and Report Generation
Zhusi Zhong, Jie Li, John Sollee, Scott Collins, Harrison Bai, Paul Zhang, Terrence Healey, Michael Atalay, Xinbo Gao, Zhicheng Jiao