Evolutionary Algorithm
Evolutionary algorithms (EAs) are computational optimization methods inspired by natural selection, aiming to find optimal or near-optimal solutions to complex problems by iteratively improving a population of candidate solutions. Current research emphasizes hybrid approaches, integrating EAs with other techniques like large language models (LLMs) for automated hyperparameter tuning and prompt engineering, reinforcement learning for robot design, and even quantum computing for enhanced search capabilities. These advancements are improving the efficiency and applicability of EAs across diverse fields, from logistics and manufacturing to drug discovery and materials science, by tackling previously intractable optimization challenges.
Papers
Comma Selection Outperforms Plus Selection on OneMax with Randomly Planted Optima
Joost Jorritsma, Johannes Lengler, Dirk Sudholt
Analysing Equilibrium States for Population Diversity
Johannes Lengler, Andre Opris, Dirk Sudholt
DECN: Automated Evolutionary Algorithms via Evolution Inspired Deep Convolution Network
Kai Wu, Penghui Liu, Jing Liu
Evolving Constrained Reinforcement Learning Policy
Chengpeng Hu, Jiyuan Pei, Jialin Liu, Xin Yao
MOREA: a GPU-accelerated Evolutionary Algorithm for Multi-Objective Deformable Registration of 3D Medical Images
Georgios Andreadis, Peter A. N. Bosman, Tanja Alderliesten
Towards Self-adaptive Mutation in Evolutionary Multi-Objective Algorithms
Furong Ye, Frank Neumann, Jacob de Nobel, Aneta Neumann, Thomas Bäck