Bayesian optimisation (BO) algorithms have shown remarkable success in applications involving expensive black-box functions. Traditionally BO has been set as a sequential decision-making process which estimates the utility of query points via an acquisition function and a prior over functions, such as a Gaussian process. Recently, however, a reformulation of BO via density-ratio estimation (BORE) allowed reinterpreting the acquisition function as a probabilistic binary classifier, removing the need for an explicit prior over functions and increasing scalability. In this paper, we present a theoretical analysis of BORE's regret and an extension of the algorithm with improved uncertainty estimates. We also show that BORE can be naturally extended to a batch optimisation setting by recasting the problem as approximate Bayesian inference. The resulting algorithms come equipped with theoretical performance guarantees and are assessed against other batch and sequential BO baselines in a series of experiments.
翻译:Bayesian优化算法(BO)在涉及昂贵黑盒功能的应用中表现出了显著的成功。 传统上BO一直被确定为顺序决策程序,通过获取功能和古希亚过程等先前的功能来估计查询点的效用。 最近,BO通过密度-比率估计(BORE)重新对BO进行修改,允许将获取功能重新解释为概率二进制分级器,消除了对明确先前功能的需求并增加了可缩放性。 在本文中,我们提出了对BORE遗憾的理论分析,并扩展了算法,增加了不确定性的估计数。我们还表明,BORE可以通过将问题重新表述为近似贝叶斯人的推断,自然地扩展为批次优化设定。 由此产生的算法具有理论性绩效保证,并根据一系列实验中其他批次和连续的BO基线进行评估。