Physic Based
Physics-based modeling integrates physical laws and principles into machine learning models to improve accuracy, efficiency, and interpretability, particularly in scenarios with limited data. Current research focuses on developing hybrid models combining neural networks (e.g., PINNs, DEQs) with traditional numerical methods or incorporating physical constraints into various architectures like graph neural networks and transformers. This approach enhances the reliability and generalizability of machine learning for applications ranging from robotics and character animation to weather prediction and material science, bridging the gap between data-driven and physics-driven approaches.
Papers
June 3, 2024
May 29, 2024
May 16, 2024
May 1, 2024
April 21, 2024
April 11, 2024
April 5, 2024
January 27, 2024
January 22, 2024
January 7, 2024
December 6, 2023
December 5, 2023
November 27, 2023
November 14, 2023
November 12, 2023
October 31, 2023
October 16, 2023
October 6, 2023
September 30, 2023
September 25, 2023