Pareto Frontier
The Pareto frontier represents the set of optimal solutions in multi-objective optimization problems, where improving one objective necessitates sacrificing another. Current research focuses on efficiently approximating this frontier using diverse methods, including multi-objective evolutionary algorithms, Bayesian optimization, and neural networks like transformers and mixture-of-experts models, often applied to diverse fields such as recommender systems, image generation, and treatment effect estimation. Understanding and efficiently navigating the Pareto frontier is crucial for making informed decisions in scenarios with competing objectives, impacting fields ranging from engineering design to social program allocation and machine learning model development.
Papers
Consistency-diversity-realism Pareto fronts of conditional image generative models
Pietro Astolfi, Marlene Careil, Melissa Hall, Oscar Mañas, Matthew Muckley, Jakob Verbeek, Adriana Romero Soriano, Michal Drozdzal
Towards Efficient Pareto Set Approximation via Mixture of Experts Based Model Fusion
Anke Tang, Li Shen, Yong Luo, Shiwei Liu, Han Hu, Bo Du