Multi Objective Evolutionary Algorithm
Multi-objective evolutionary algorithms (MOEAs) are computational methods designed to find optimal solutions for problems with multiple, often conflicting, objectives. Current research emphasizes improving MOEA efficiency and interpretability, focusing on adaptive mechanisms, knowledge integration (e.g., using large language models or heuristic rules), and visual analytics tools to understand population dynamics. These advancements are significant because MOEAs are increasingly applied to complex real-world problems across diverse fields, including engineering design, scheduling, and drug discovery, where efficient and robust optimization is crucial.
Papers
Maintaining Diversity Provably Helps in Evolutionary Multimodal Optimization
Shengjie Ren, Zhijia Qiu, Chao Bian, Miqing Li, Chao Qian
Symbiotic Connectivity: Optimizing Rural Digital Infrastructure with Solar-Powered Mesh Networks Using Multi-Objective Evolutionary Algorithms
Yadira Sanchez Benitez
An Archive Can Bring Provable Speed-ups in Multi-Objective Evolutionary Algorithms
Chao Bian, Shengjie Ren, Miqing Li, Chao Qian