Hybrid Modeling
Hybrid modeling integrates data-driven machine learning with established physical or theoretical models to leverage the strengths of both approaches. Current research focuses on improving model accuracy, interpretability, and efficiency through various architectures, including neural networks (e.g., RNNs, transformers), and algorithms like double machine learning and techniques for online model calibration. This approach is proving valuable across diverse fields, enhancing prediction accuracy in areas such as weather forecasting, climate modeling, and robotics, while also improving the understanding of complex systems through increased model interpretability.
Papers
October 25, 2024
September 7, 2024
July 14, 2024
May 7, 2024
March 13, 2024
March 6, 2024
February 20, 2024
December 29, 2023
December 18, 2023
November 17, 2023
November 3, 2023
September 28, 2023
September 22, 2023
September 19, 2023
September 6, 2023
August 16, 2023
July 25, 2023
July 5, 2023
March 22, 2023