CMA E
Covariance Matrix Adaptation Evolution Strategy (CMA-ES) is a powerful stochastic optimization algorithm used for finding optimal solutions in complex, high-dimensional search spaces, particularly in black-box scenarios where the objective function is unknown. Current research focuses on improving CMA-ES's efficiency and robustness, particularly for noisy, multi-modal, and mixed-integer problems, through techniques like adaptive re-evaluation, low-discrepancy sampling, and novel learning rate and margin adaptations. These advancements enhance CMA-ES's applicability across diverse fields, including engineering design, machine learning, and scientific simulations, by providing more efficient and reliable optimization solutions.
Papers
August 3, 2022
May 26, 2022
April 15, 2022
April 14, 2022
April 6, 2022