We consider the problem of finding an input to a stochastic black box function such that the scalar output of the black box function is as close as possible to a target value in the sense of the expected squared error. While the optimization of stochastic black boxes is classic in (robust) Bayesian optimization, the current approaches based on Gaussian processes predominantly focus either on i) maximization/minimization rather than target value optimization or ii) on the expectation, but not the variance of the output, ignoring output variations due to stochasticity in uncontrollable environmental variables. In this work, we fill this gap and derive acquisition functions for common criteria such as the expected improvement, the probability of improvement, and the lower confidence bound, assuming that aleatoric effects are Gaussian with known variance. Our experiments illustrate that this setting is compatible with certain extensions of Gaussian processes, and show that the thus derived acquisition functions can outperform classical Bayesian optimization even if the latter assumptions are violated. An industrial use case in billet forging is presented.
翻译:我们考虑了找到对随机黑盒函数的输入的问题,这样黑盒函数的伸缩输出就尽可能接近预期的平方误差意义上的目标值。 虽然对随机黑盒的优化在巴耶斯优化(robust)中是典型的, 但基于高斯进程的现行方法主要侧重于(i) 最大化/最小化,而不是目标值优化或(ii) 期望,而不是产出的差异,忽略了由于无法控制的环境变量的随机性而导致的产出变化。 在这项工作中,我们填补了这一缺口,并得出了共同标准的获取功能,如预期的改进、改进的概率和较低的信任约束,假设收缩效果是已知差异的高斯。我们的实验表明,这一设置与高斯进程的某些扩展相容,并表明由此产生的获取功能即使违反了后一种假设,也能够优于古典的巴耶斯优化。 挂图中的工业用途案例被提出。