Black-box optimization is one of the vital tasks in machine learning, since it approximates real-world conditions, in that we do not always know all the properties of a given system, up to knowing almost nothing but the results. This paper describes our approach to solving the black-box optimization challenge at NeurIPS 2020 through learning search space partition for local Bayesian optimization. We describe the task of the challenge as well as our algorithm for low budget optimization that we named \texttt{SPBOpt}. We optimize the hyper-parameters of our algorithm for the competition finals using multi-task Bayesian optimization on results from the first two evaluation settings. Our approach has ranked third in the competition finals.
翻译:黑盒优化是机器学习的重要任务之一,因为它接近现实世界的条件,因为我们并不总是了解某一系统的所有特性,直到几乎一无所知,只有结果。本文描述了我们通过学习巴伊西亚本地优化的搜索空间分区解决NeurIPS2020年黑盒优化挑战的方法。我们描述了挑战的任务以及我们命名为\ texttt{SPBopt}的低预算优化算法。我们利用前两个评估设置结果的多任务巴耶斯优化优化优化了我们竞争决赛算法的超参数。我们的方法在竞赛决赛中排名第三。