Data Manifold
Data manifolds represent the underlying low-dimensional structure of high-dimensional datasets, aiming to capture the intrinsic geometry and relationships within the data. Current research focuses on developing generative models, such as diffusion models and normalizing flows, that operate directly on these manifolds, often leveraging techniques like Riemannian geometry and isometric learning to preserve the data's inherent structure. This work has significant implications for various fields, improving generative modeling, enhancing model explainability, and enabling robust analysis of complex datasets in applications ranging from drug discovery to image generation and anomaly detection.
Papers
December 29, 2022
December 23, 2022
December 1, 2022
November 19, 2022
November 14, 2022
October 31, 2022
October 24, 2022
October 23, 2022
October 13, 2022
August 10, 2022
July 1, 2022
May 4, 2022
March 14, 2022
March 8, 2022