Many real-world optimisation problems are defined over both categorical and continuous variables, yet efficient optimisation methods such asBayesian Optimisation (BO) are not designed tohandle such mixed-variable search spaces. Re-cent approaches to this problem cast the selection of the categorical variables as a bandit problem, operating independently alongside a BO component which optimises the continuous variables. In this paper, we adopt a holistic view and aim to consolidate optimisation of the categorical and continuous sub-spaces under a single acquisition metric. We derive candidates from the ExpectedImprovement criterion, which we call value proposals, and use these proposals to make selections on both the categorical and continuous components of the input. We show that this unified approach significantly outperforms existing mixed-variable optimisation approaches across several mixed-variable black-box optimisation tasks.
翻译:许多现实世界的优化问题在绝对变量和连续变量上都有定义,然而,诸如Bayesian优化(BO)等高效的优化方法并非旨在处理这种混合可变搜索空间。这一问题的再集中方法将绝对变量的选择作为一个强盗问题,与一个选择连续变量的BO部分独立运作。在本文中,我们采用了一种整体观点,目的是将绝对和连续子空间的优化整合到一个单一的获取标准之下。我们从“预期改进”标准(我们称之为“改进建议”)中挑选候选人,并利用这些提案对输入的绝对和连续部分进行选择。我们表明,这种统一方法大大优于现有的混合可变选择方法,跨越了多种混合黑盒的优化任务。