Evolutionary Multi Objective Optimization
Evolutionary Multi-Objective Optimization (EMO) tackles problems with multiple, often conflicting, objectives by using evolutionary algorithms to find a set of optimal trade-offs, known as the Pareto front. Current research emphasizes improving the efficiency and scalability of EMO algorithms, focusing on advancements in techniques like decomposition-based methods (e.g., MOEA/D), novel selection mechanisms (e.g., sliding window approaches), and the integration of machine learning (e.g., diffusion models). These advancements are crucial for addressing complex real-world problems across diverse fields, from engineering design and resource allocation to financial modeling and autonomous systems, where finding optimal solutions considering multiple competing factors is essential.
Papers
Learning to Approximate: Auto Direction Vector Set Generation for Hypervolume Contribution Approximation
Ke Shang, Tianye Shu, Hisao Ishibuchi
Benchmarking Subset Selection from Large Candidate Solution Sets in Evolutionary Multi-objective Optimization
Ke Shang, Tianye Shu, Hisao Ishibuchi, Yang Nan, Lie Meng Pang