Multi Objective
Multi-objective optimization tackles problems with multiple, often conflicting, objectives, aiming to find optimal trade-offs rather than a single best solution. Current research focuses on developing efficient algorithms, such as evolutionary algorithms (e.g., NSGA-II, MOEA/D), multi-objective reinforcement learning techniques, and novel architectures like transformer networks, to address this challenge across diverse applications. These advancements are improving the design of neural networks, recommender systems, and robotic control systems, among other areas, by enabling the simultaneous optimization of various performance metrics and constraints. The resulting Pareto-optimal solutions offer valuable insights and flexibility for decision-making in complex systems.
Papers
On Single-Objective Sub-Graph-Based Mutation for Solving the Bi-Objective Minimum Spanning Tree Problem
Jakob Bossek, Christian Grimme
Evolutionary Solution Adaption for Multi-Objective Metal Cutting Process Optimization
Leo Francoso Dal Piccol Sotto, Sebastian Mayer, Hemanth Janarthanam, Alexander Butz, Jochen Garcke