小样本试验中完全贝叶斯优化的案例

Yuji Saikai
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引用次数: 0

摘要

虽然样本效率是使用贝叶斯优化的主要动机,但当黑盒函数的评估成本很高时,基于II型最大似然(ML-II)的标准方法可能会失败,并导致小样本试验中令人失望的性能。本文提供了采用完全贝叶斯优化(FBO)作为替代方案的三个令人信服的理由。首先,ML-II的失败比使用人为设置的现有研究所暗示的更为普遍。其次,FBO比ML-II更鲁棒,鲁棒性的代价几乎是微不足道的。第三,FBO已经变得易于实现,而且速度足够快,可以付诸实践。本文通过相关实验来支持这一观点,这些实验反映了当前在模型、算法和软件平台方面的实践。由于收益似乎大于成本,研究人员应该考虑在他们的应用程序中采用FBO,这样他们就可以防止潜在的失败,从而最终浪费宝贵的研究资源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The case for fully Bayesian optimisation in small-sample trials
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.
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