The ability to optimize multiple competing objective functions with high sample efficiency is imperative in many applied problems across science and industry. Multi-objective Bayesian optimization (BO) achieves strong empirical performance on such problems, but even with recent methodological advances, it has been restricted to simple, low-dimensional domains. Most existing BO methods exhibit poor performance on search spaces with more than a few dozen parameters. In this work we propose MORBO, a method for multi-objective Bayesian optimization over high-dimensional search spaces. MORBO performs local Bayesian optimization within multiple trust regions simultaneously, allowing it to explore and identify diverse solutions even when the objective functions are difficult to model globally. We show that MORBO significantly advances the state-of-the-art in sample-efficiency for several high-dimensional synthetic and real-world multi-objective problems, including a vehicle design problem with 222 parameters, demonstrating that MORBO is a practical approach for challenging and important problems that were previously out of reach for BO methods.
翻译:在科学和工业的许多应用问题中,优化多种相互竞争的客观功能是绝对必要的。多目标贝叶斯优化(BO)在这些问题上取得了很强的经验性表现,但即使最近的方法进步,它也仅限于简单、低维的领域。大多数现有的BO方法在搜索空间上表现不佳,有几十个参数以上。在这项工作中,我们提议了MORBO,这是在高维搜索空间上实现多目标巴伊斯优化的一种方法。MOBO同时在多个信任区域中进行当地巴伊西亚优化,使其能够探索和确定各种解决方案,即使目标功能难以在全球建模。我们表明,MORBO在几个高维合成和实际世界的多目标问题上大大推进了最先进的样本效率,包括222个参数的车辆设计问题。我们表明,MOBO是解决以前无法为BO方法找到的挑战性和重要问题的实用方法。