Self Attention
Self-attention is a mechanism in neural networks that allows the model to weigh the importance of different parts of the input data when processing it, enabling the capture of long-range dependencies and contextual information. Current research focuses on improving the efficiency of self-attention, particularly in vision transformers and other large models, through techniques like low-rank approximations, selective attention, and grouped query attention, aiming to reduce computational costs while maintaining accuracy. These advancements are significantly impacting various fields, including computer vision, natural language processing, and time series analysis, by enabling more efficient and powerful models for tasks such as image restoration, text-to-image generation, and medical image segmentation.
Papers
Skip-Attention: Improving Vision Transformers by Paying Less Attention
Shashanka Venkataramanan, Amir Ghodrati, Yuki M. Asano, Fatih Porikli, Amirhossein Habibian
Towards Long-Term Time-Series Forecasting: Feature, Pattern, and Distribution
Yan Li, Xinjiang Lu, Haoyi Xiong, Jian Tang, Jiantao Su, Bo Jin, Dejing Dou
DLGSANet: Lightweight Dynamic Local and Global Self-Attention Networks for Image Super-Resolution
Xiang Li, Jinshan Pan, Jinhui Tang, Jiangxin Dong