We consider the problem of optimizing hybrid structures (mixture of discrete and continuous input variables) via expensive black-box function evaluations. This problem arises in many real-world applications. For example, in materials design optimization via lab experiments, discrete and continuous variables correspond to the presence/absence of primitive elements and their relative concentrations respectively. The key challenge is to accurately model the complex interactions between discrete and continuous variables. In this paper, we propose a novel approach referred as Hybrid Bayesian Optimization (HyBO) by utilizing diffusion kernels, which are naturally defined over continuous and discrete variables. We develop a principled approach for constructing diffusion kernels over hybrid spaces by utilizing the additive kernel formulation, which allows additive interactions of all orders in a tractable manner. We theoretically analyze the modeling strength of additive hybrid kernels and prove that it has the universal approximation property. Our experiments on synthetic and six diverse real-world benchmarks show that HyBO significantly outperforms the state-of-the-art methods.
翻译:我们考虑通过昂贵的黑盒功能评估优化混合结构(混合离散和连续输入变量)的问题。这个问题出现在许多现实世界的应用中。例如,通过实验室实验优化材料设计优化,离散和连续变量分别对应原始元素的存在/不存在及其相对浓度。关键的挑战是如何准确建模离散和连续变量之间的复杂互动。在本文中,我们建议采用新颖的方法,即混合贝叶西亚最佳化(HyBO),利用扩散内核,这些内核自然地界定了连续和离散变量。我们制定了在混合空间上构建扩散内核的原则方法,利用添加式内核制剂,使所有订单以可移动的方式产生叠加的相互作用。我们从理论上分析添加混合内核的模型强度,并证明它具有普遍接近性。我们关于合成和六个不同的现实世界基准的实验表明,HyBO大大超越了最先进的方法。