Residual Network
Residual networks (ResNets) are deep neural network architectures designed to overcome the vanishing gradient problem during training, enabling the effective training of very deep models. Current research focuses on improving ResNet performance and efficiency through modifications like dynamic weight adjustment, lightweight convolutional modules, and optimized network structures, as well as exploring their applications in diverse fields such as physics simulation, image processing, and biometric authentication. The widespread adoption of ResNets and their variants stems from their ability to achieve state-of-the-art results across numerous tasks while offering avenues for improved efficiency and interpretability.
Papers
November 5, 2024
October 19, 2024
September 23, 2024
August 19, 2024
July 9, 2024
July 1, 2024
June 20, 2024
June 14, 2024
June 11, 2024
May 2, 2024
April 5, 2024
March 26, 2024
March 10, 2024
March 8, 2024
March 7, 2024
March 6, 2024
February 24, 2024
January 28, 2024
November 23, 2023