Robust Deep
Robust deep learning focuses on developing deep neural networks (DNNs) that maintain high accuracy even when faced with noisy data, adversarial attacks, or variations in input distributions. Current research emphasizes improving robustness through techniques like adversarial training, ensemble methods, and biologically-inspired architectures (e.g., incorporating features of the visual cortex), as well as exploring novel activation functions and optimization strategies. This field is crucial for deploying DNNs in safety-critical applications (e.g., autonomous driving, medical diagnosis) and for enhancing the reliability and trustworthiness of AI systems more broadly.
Papers
October 13, 2022
October 11, 2022
October 6, 2022
September 15, 2022
August 6, 2022
July 20, 2022
July 9, 2022
June 26, 2022
June 24, 2022
March 25, 2022
March 17, 2022
February 24, 2022
February 23, 2022
February 13, 2022
February 11, 2022
January 31, 2022
January 22, 2022
January 9, 2022
December 9, 2021