Bayesian Optimization is a methodology for global optimization of unknown and expensive objectives. It combines a surrogate Bayesian regression model with an acquisition function to decide where to evaluate the objective. Typical regression models are Gaussian processes with stationary covariance functions, which, however, are unable to express prior input-dependent information, in particular information about possible locations of the optimum. The ubiquity of stationary models has led to the common practice of exploiting prior information via informative mean functions. In this paper, we highlight that these models can lead to poor performance, especially in high dimensions. We propose novel informative covariance functions that leverage nonstationarity to encode preferences for certain regions of the search space and adaptively promote local exploration during the optimization. We demonstrate that they can increase the sample efficiency of the optimization in high dimensions, even under weak prior information.
翻译:Bayesian 优化是全球优化未知和昂贵目标的一种方法,它将替代Bayesian回归模型与获取功能相结合,以决定如何评估目标。典型回归模型是带有固定共变功能的高斯进程,但无法表达以前依赖投入的信息,特别是可能最佳地点的信息。固定模型的普遍存在导致通过信息平均功能利用先前信息的共同做法。我们在本文件中强调,这些模型可能导致性能不佳,特别是在高维方面。我们提议新的信息共变功能,利用非静态来为某些搜索空间区域编码偏好,并在优化期间以适应方式促进当地探索。我们证明,这些功能可以提高高维方面优化的样本效率,即便在以往信息薄弱的情况下也是如此。