Many functions have approximately-known upper and/or lower bounds, potentially aiding the modeling of such functions. In this paper, we introduce Gaussian process models for functions where such bounds are (approximately) known. More specifically, we propose the first use of such bounds to improve Gaussian process (GP) posterior sampling and Bayesian optimization (BO). That is, we transform a GP model satisfying the given bounds, and then sample and weight functions from its posterior. To further exploit these bounds in BO settings, we present bounded entropy search (BES) to select the point gaining the most information about the underlying function, estimated by the GP samples, while satisfying the output constraints. We characterize the sample variance bounds and show that the decision made by BES is explainable. Our proposed approach is conceptually straightforward and can be used as a plug in extension to existing methods for GP posterior sampling and Bayesian optimization.
翻译:许多功能的上限和(或)下限大致已知,可能有助于这些功能的建模。在本文中,我们为已知(约)此类界限的功能引入了高斯进程模型。更具体地说,我们建议首先使用这些界限来改进高斯进程(GP)后端取样和巴伊西亚优化(BO)。也就是说,我们改造符合给定界限的GP模型,然后从后端转换样本和重量函数。为了在BO设置中进一步利用这些界限,我们提出了封闭式的酶搜索(BES),以便在满足产出限制的同时,选择获得关于由GP样本估计的基本功能的最大部分信息的点。我们确定了样本差异界限,并表明BES所作的决定是可以解释的。我们提议的方法在概念上是直截了当的,可以用作现有GP后端取样和巴伊西亚优化方法的延伸点。