Covariance Estimation
Covariance estimation aims to accurately quantify the relationships between variables within datasets, a crucial step in many statistical and machine learning applications. Current research emphasizes robust and efficient estimation methods, particularly in high-dimensional settings, focusing on techniques like neural networks (e.g., covariance neural networks and their sparse or fair variants), manifold learning, and multifidelity approaches that leverage data from multiple sources. These advancements improve the accuracy and stability of covariance estimates, leading to better performance in diverse fields such as robotics, signal processing, and deep learning, where reliable uncertainty quantification is essential.
Papers
September 2, 2023
August 30, 2023
August 15, 2023
July 23, 2023
May 20, 2023
March 21, 2023
March 18, 2023
January 31, 2023
January 28, 2023
January 21, 2023
December 2, 2022
September 22, 2022
August 31, 2022
May 28, 2022
May 16, 2022
April 26, 2022
March 17, 2022