We present HIghly Parallelisable Pareto Optimisation (HIPPO) -- a batch acquisition function that enables multi-objective Bayesian optimisation methods to efficiently exploit parallel processing resources. Multi-Objective Bayesian Optimisation (MOBO) is a very efficient tool for tackling expensive black-box problems. However, most MOBO algorithms are designed as purely sequential strategies, and existing batch approaches are prohibitively expensive for all but the smallest of batch sizes. We show that by encouraging batch diversity through penalising evaluations with similar predicted objective values, HIPPO is able to cheaply build large batches of informative points. Our extensive experimental validation demonstrates that HIPPO is at least as efficient as existing alternatives whilst incurring an order of magnitude lower computational overhead and scaling easily to batch sizes considerably higher than currently supported in the literature. Additionally, we demonstrate the application of HIPPO to a challenging heat exchanger design problem, stressing the real-world utility of our highly parallelisable approach to MOBO.
翻译:我们提出了可平行的Pareto优化(HIPO) -- -- 批量获取功能,使多目标的Bayesian优化方法能够有效地利用平行加工资源。多目标Bayesian优化(MOBO)是解决昂贵黑箱问题的非常有效的工具。然而,大多数MOBO算法是设计为纯粹顺序战略的,现有的批量方法对所有人来说都是昂贵的,但对最小的批量规模却非常昂贵。我们表明,通过惩罚具有类似预测目标值的评价,鼓励批量多样性,HIPO能够廉价地建立大量的信息点。我们广泛的实验性鉴定表明,HIPO至少与现有的替代方法一样高效,同时产生比目前文献中支持的更低的计算间接费用和容易地扩大到批量规模。此外,我们展示了HIPO对具有挑战性的热交换器设计问题的应用,强调我们对MOBO的高度平行方法在现实世界中的效用。