Additive Perturbation
Additive perturbation research explores how small changes to input data affect the performance and robustness of various models, primarily focusing on improving model reliability and understanding their decision-making processes. Current research investigates this across diverse fields, employing techniques like adversarial training, randomized smoothing, and variational methods within model architectures ranging from large language models and neural networks to graph neural networks. This work is crucial for enhancing the trustworthiness and reliability of machine learning systems in safety-critical applications and for gaining deeper insights into model behavior and vulnerabilities.
Papers
August 24, 2023
July 24, 2023
July 22, 2023
July 11, 2023
June 16, 2023
June 13, 2023
June 8, 2023
May 25, 2023
May 18, 2023
April 20, 2023
March 15, 2023
December 26, 2022
November 14, 2022
October 5, 2022
October 2, 2022
September 30, 2022
September 29, 2022
September 16, 2022
July 18, 2022