Missing Data
Missing data is a pervasive problem across numerous scientific domains, hindering accurate analysis and reliable model building. Current research focuses on developing robust methods that directly handle missing values, rather than relying on imputation, employing techniques like weighted linear discriminant analysis, optimal transport for causal structure learning, and deep learning architectures such as transformers and generative adversarial networks. These advancements are crucial for improving the accuracy and interpretability of machine learning models in various applications, from medical diagnosis and remote sensing to manufacturing and traffic prediction, where incomplete data is frequently encountered.
Papers
January 7, 2024
December 19, 2023
November 28, 2023
October 25, 2023
September 18, 2023
September 13, 2023
August 13, 2023
May 17, 2023
April 21, 2023
April 4, 2023
March 8, 2023
March 6, 2023
February 21, 2023
February 8, 2023
November 16, 2022
November 14, 2022
November 7, 2022
November 5, 2022
October 25, 2022
October 22, 2022