Many real-world applications involve black-box optimization of multiple objectives using continuous function approximations that trade-off accuracy and resource cost of evaluation. For example, in rocket launching research, we need to find designs that trade-off return-time and angular distance using continuous-fidelity simulators (e.g., varying tolerance parameter to trade-off simulation time and accuracy) for design evaluations. The goal is to approximate the optimal Pareto set by minimizing the cost for evaluations. In this paper, we propose a novel approach referred to as information-Theoretic Multi-Objective Bayesian Optimization with Continuous Approximations (iMOCA)} to solve this problem. The key idea is to select the sequence of input and function approximations for multiple objectives which maximize the information gain per unit cost for the optimal Pareto front. Our experiments on diverse synthetic and real-world benchmarks show that iMOCA significantly improves over existing single-fidelity methods.
翻译:许多现实世界应用都涉及利用连续功能近似值优化多个目标的黑箱优化,这种近似值可以权衡准确性和评估的资源成本。例如,在火箭发射研究中,我们需要找到设计,在设计评价中使用连续纤维化模拟器(例如,不同容忍度参数可以权衡模拟时间和准确性)来权衡回报时间和角距离。目标是通过尽可能降低评估成本来接近Pareto设定的最佳目标。在本文中,我们提议了一种新颖的方法,称为信息-理论多目标贝叶西亚优化与连续近似(iMOCA) 来解决这个问题。关键的想法是选择多个目标的输入和函数近似序列,以最大限度地提高最佳Pareto前端的单位成本。我们在多种合成和实际世界基准上的实验显示,iMOCA大大改进了现有的单一忠诚方法。