While sample efficiency is the main motive for use of Bayesian optimisation when black-box functions are expensive to evaluate, the standard approach based on type II maximum likelihood (ML-II) may fail and result in disappointing performance in small-sample trials. The paper provides three compelling reasons to adopt fully Bayesian optimisation (FBO) as an alternative. First, failures of ML-II are more commonplace than implied by the existing studies using the contrived settings. Second, FBO is more robust than ML-II, and the price of robustness is almost trivial. Third, FBO has become simple to implement and fast enough to be practical. The paper supports the argument using relevant experiments, which reflect the current practice regarding models, algorithms, and software platforms. Since the benefits seem to outweigh the costs, researchers should consider adopting FBO for their applications so that they can guard against potential failures that end up wasting precious research resources.
翻译:样本效率是使用贝叶斯优化的主要动机,因为黑盒功能评估费用昂贵,而基于第二类最大可能性的标准方法(ML-II)可能失败,导致小样本试验的表现令人失望。该文件为完全采用巴伊斯优化提供了三个令人信服的理由。首先,ML-II的失败比使用设计环境的现有研究所隐含的更常见。第二,FBO比ML-II更强大,稳健的代价几乎微不足道。第三,FBO已经变得简单易执行,而且速度也足够实用。该文件支持使用相关实验的论点,这些实验反映了目前有关模型、算法和软件平台的做法。由于收益似乎大于成本,研究人员应考虑采用FBO来应用,以便防止最终浪费宝贵研究资源的潜在失败。