Evolutionary Computation
Evolutionary computation (EC) is a powerful optimization and learning paradigm inspired by natural selection, aiming to find optimal solutions to complex problems by iteratively improving a population of candidate solutions. Current research emphasizes the integration of EC with large language models (LLMs) for automated hyperparameter tuning and heuristic design, as well as the development of novel, simpler algorithms like BMR and BWR for tackling real-world constrained and unconstrained optimization problems. The impact of EC is significant, extending to diverse fields such as robotic design, machine learning model optimization, and the design of efficient algorithms for resource-constrained problems, demonstrating its broad applicability and potential for solving challenging real-world optimization tasks.
Papers
Towards KAB2S: Learning Key Knowledge from Single-Objective Problems to Multi-Objective Problem
Xu Wendi, Wang Xianpeng, Guo Qingxin, Song Xiangman, Zhao Ren, Zhao Guodong, Yang Yang, Xu Te, He Dakuo
ETO Meets Scheduling: Learning Key Knowledge from Single-Objective Problems to Multi-Objective Problem
Wendi Xu, Xianpeng Wang