In this work, we propose a meta algorithm that can solve a multivariate global optimization problem using univariate global optimizers. Although the univariate global optimization does not receive much attention compared to the multivariate case, which is more emphasized in academia and industry; we show that it is still relevant and can be directly used to solve problems of multivariate optimization. We also provide the corresponding regret bounds in terms of the time horizon $T$ and the average regret of the univariate optimizer, when it is robust against nonnegative noises with robust regret guarantees.
翻译:在这项工作中,我们提出一个元算法,用单一全球优化器解决多变全球优化问题。 虽然单变全球优化与多变情况相比没有得到多少关注,而多变情况在学术界和行业中更为突出;我们表明,它仍然相关,可以直接用于解决多变优化问题。 我们还提供了相应的遗憾界限,涉及时间范围$T和单变优化器的平均遗憾,因为它能够有力地对付带有强烈遗憾保证的非反向噪音。