Equivariant Model
Equivariant models are neural networks designed to leverage data symmetries, improving generalization and efficiency by incorporating known invariances or transformations directly into their architecture. Current research focuses on developing efficient equivariant architectures for various symmetry groups (e.g., SO(n), SE(n), O(n)), including graph neural networks, convolutional neural networks, and novel designs like "Equitune," often applied to tasks such as molecule generation, fluid dynamics simulation, and robotic control. This approach offers significant advantages in data-scarce scenarios and enhances the interpretability and robustness of models across diverse scientific and engineering domains.
Papers
October 30, 2024
October 23, 2024
October 10, 2024
August 23, 2024
July 19, 2024
June 6, 2024
June 1, 2024
May 30, 2024
March 1, 2024
February 7, 2024
January 25, 2024
December 12, 2023
December 4, 2023
October 17, 2023
October 14, 2023
September 7, 2023
June 10, 2023
May 30, 2023