Bayesian optimization (BO) with Gaussian processes is a powerful methodology to optimize an expensive black-box function with as few function evaluations as possible. The expected improvement (EI) and probability of improvement (PI) are among the most widely used schemes for BO. There is a plethora of other schemes that outperform EI and PI, but most of them are numerically far more expensive than EI and PI. In this work, we propose a new one-parameter family of acquisition functions for BO that unifies EI and PI. The proposed method is numerically inexpensive, is easy to implement, can be easily parallelized, and on benchmark tasks shows a performance superior to EI and GP-UCB. Its generalization to BO with Student-t processes is also presented.
翻译:利用高斯进程优化巴伊西亚(BO)是优化昂贵的黑箱功能并尽可能少进行功能评估的有力方法,预期的改进(EI)和改进概率(PI)是博爱最广泛使用的方案之一,其他方案比EI和PI多得多,但多数在数字上比EI和PI要贵得多。 在这项工作中,我们提议为博爱提出一个新的单数的购置功能系列,将EI和PI统一起来。 拟议的方法在数字上价格低廉,易于执行,容易平行,在基准任务上显示业绩优于EI和GP-UCB。