Bayesian optimization is a powerful tool to optimize a black-box function, the evaluation of which is time-consuming or costly. In this paper, we propose a new approach to Bayesian optimization called GP-MGC, which maximizes multiscale graph correlation with respect to the global maximum to determine the next query point. We present our evaluation of GP-MGC in applications involving both synthetic benchmark functions and real-world datasets and demonstrate that GP-MGC performs as well as or even better than state-of-the-art methods such as max-value entropy search and GP-UCB.
翻译:贝叶斯优化是优化黑箱功能的有力工具,其评价耗时或费用昂贵。在本文件中,我们提出了一种叫作GP-MGC的新的巴伊斯优化方法,该方法将全球最大量的多尺度图形相关关系最大化,以确定下一个查询点。我们介绍了对GP-MGC在涉及合成基准功能和现实世界数据集的应用方面的评价,并表明GP-MGC的表现以及甚至比最高值的酶搜索和GP-UCB等最新方法更好。