The acquisition function, a critical component in Bayesian optimization (BO), can often be written as the expectation of a utility function under a surrogate model. However, to ensure that acquisition functions are tractable to optimize, restrictions must be placed on the surrogate model and utility function. To extend BO to a broader class of models and utilities, we propose likelihood-free BO (LFBO), an approach based on likelihood-free inference. LFBO directly models the acquisition function without having to separately perform inference with a probabilistic surrogate model. We show that computing the acquisition function in LFBO can be reduced to optimizing a weighted classification problem, where the weights correspond to the utility being chosen. By choosing the utility function for expected improvement (EI), LFBO outperforms various state-of-the-art black-box optimization methods on several real-world optimization problems. LFBO can also effectively leverage composite structures of the objective function, which further improves its regret by several orders of magnitude.
翻译:获取功能是巴耶斯优化(BO)中的一个关键部分,通常可以写成对代用模型下的公用事业功能的期望。然而,为确保获取功能可以优化,必须对代用模型和公用事业功能加以限制。为了将BO扩大到更广泛的模型和公用事业类别,我们提议采用无可能性的BO(LFBO),一种基于无可能性推断的方法。LFBO直接模拟获取功能,而不必用一种概率性替代模型分别进行推论。我们显示,在LFBO中计算获取功能可以降低到优化加权分类问题的程度,因为其重量与所选择的效用相对应。通过选择预期改进的通用功能(EI),LFBOBO超越了多种现实世界优化问题的各种最先进的黑箱优化方法。LFBO也可以有效地利用目标功能的综合结构,从而进一步令其遗憾。