Common Pitfall
Research into common pitfalls in various machine learning applications reveals recurring challenges in model development, evaluation, and deployment. Current efforts focus on improving model robustness against adversarial attacks, addressing biases and limitations in data and evaluation metrics (e.g., in multilingual ASR, medical imaging, and federated learning), and developing more reliable uncertainty quantification methods. These findings are crucial for enhancing the trustworthiness and generalizability of machine learning models across diverse domains, ultimately leading to more reliable and impactful applications.
Papers
June 1, 2023
May 4, 2023
April 26, 2023
April 17, 2023
March 24, 2023
February 25, 2023
January 25, 2023
January 20, 2023
January 3, 2023
December 15, 2022
November 28, 2022
November 24, 2022
November 22, 2022
November 11, 2022
November 5, 2022
October 24, 2022
October 23, 2022
October 1, 2022
September 26, 2022