Transformer Based
Transformer-based models are revolutionizing various fields by leveraging self-attention mechanisms to capture long-range dependencies in sequential data, achieving state-of-the-art results in tasks ranging from natural language processing and image recognition to time series forecasting and robotic control. Current research focuses on improving efficiency (e.g., through quantization and optimized architectures), enhancing generalization capabilities, and addressing challenges like handling long sequences and endogeneity. These advancements are significantly impacting diverse scientific communities and practical applications, leading to more accurate, efficient, and robust models across numerous domains.
Papers
CryoFormer: Continuous Heterogeneous Cryo-EM Reconstruction using Transformer-based Neural Representations
Xinhang Liu, Yan Zeng, Yifan Qin, Hao Li, Jiakai Zhang, Lan Xu, Jingyi Yu
Transformer and Snowball Graph Convolution Learning for Brain functional network Classification
Jinlong Hu, Yangmin Huang, Shoubin Dong