Multi Objective Optimization Problem
Multi-objective optimization (MOO) tackles problems with multiple, often conflicting, objectives, aiming to find a set of optimal solutions (Pareto front) representing diverse trade-offs. Current research emphasizes efficient algorithms, including evolutionary algorithms (like NSGA-II and MOEA/D), Pareto set learning using neural networks, and novel scalarization techniques, to address challenges in scalability and convergence, particularly for high-dimensional or black-box problems. The ability to effectively balance competing objectives has significant implications across diverse fields, from machine learning model optimization and automated algorithm design to resource allocation in complex systems like energy grids and robotics.
Papers
January 17, 2024
January 15, 2024
January 2, 2024
December 28, 2023
December 12, 2023
December 11, 2023
September 5, 2023
June 23, 2023
June 5, 2023
May 22, 2023
May 17, 2023
May 16, 2023
April 17, 2023
April 10, 2023
March 23, 2023
February 6, 2023
December 3, 2022
December 2, 2022
November 23, 2022
November 17, 2022