Published August 2025 | Published
Journal Article

Kernel Sum of Squares for data adapted kernel learning of dynamical systems from data: A global optimization approach

  • 1. ROR icon Imperial College London
  • 2. ROR icon California Institute of Technology
  • 3. ROR icon The Alan Turing Institute
  • 4. ROR icon Gulf University for Science & Technology

Abstract

This paper examines the application of the Kernel Sum of Squares (KSOS) method for enhancing kernel learning from data, particularly in the context of dynamical systems. Traditional kernel-based methods, despite their theoretical soundness and numerical efficiency, frequently struggle with selecting optimal base kernels and parameter tuning, especially with gradient-based methods prone to local optima. KSOS mitigates these issues by leveraging a global optimization framework with kernel-based surrogate functions, thereby achieving more reliable and precise learning of dynamical systems. Through comprehensive numerical experiments on the Logistic Map, Henon Map, and Lorentz System, KSOS is shown to consistently outperform gradient descent in minimizing the relative- ρ metric and improving kernel accuracy. These results highlight KSOS's effectiveness in predicting the behavior of chaotic dynamical systems, demonstrating its capability to adapt kernels to underlying dynamics and enhance the robustness and predictive power of kernel-based approaches, making it a valuable asset for time series analysis in various scientific fields.

Copyright and License

© 2025 Published by Elsevier B.V.

Acknowledgement

HO acknowledges support from the Air Force Office of Scientific Research, United States under MURI award number FA9550-20-1-0358 (Machine Learning and Physics-Based Modeling and Simulation) and the Department of Energy under the MMICCs SEA-CROGS award. BH acknowledges support from the Air Force Office of Scientific Research, United States (award number FA9550-21-1-0317) and the Department of Energy (award number SA22-0052-S001). HO is grateful for support from a Department of Defense Vannevar Bush Faculty Fellowship.

Conflict of Interest

The authors declare the following financial interests/personal relationships which may be considered as potential competing interests: Boumediene Hamzi is serving as a guest editors If there are other authors, they declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper.

Additional details

Created:
June 2, 2025
Modified:
June 2, 2025