论文标题

在有限的故障预算下,搜索有限的贝叶斯优化的游览搜索

Excursion Search for Constrained Bayesian Optimization under a Limited Budget of Failures

论文作者

Marco, Alonso, von Rohr, Alexander, Baumann, Dominik, Hernández-Lobato, José Miguel, Trimpe, Sebastian

论文摘要

当学习骑自行车时,一个孩子在取得首次成功之前倒下了很多次。由于跌倒通常只会带来轻微的后果,因此可以将其视为可容忍的失败,以换取更快的学习过程,因为它提供了有关不希望的行为的丰富信息。在未知约束(BOC)下贝叶斯优化的背景下,安全学习的典型策略会保守地探索,并避免失败。在频谱的另一侧,允许失败的非保守BOC算法可能会在达到最佳时失败。在这项工作中,我们提出了一个基于控制理论的新颖决策者,该决策者控制了我们在搜索中允许的风险量,这是给定的失败预算的函数。经验验证表明,在各种优化实验中,我们的算法更有效地使用故障预算,并且通常比最先进的方法降低了遗憾。此外,我们为不受约束的贝叶斯优化提出了一种原始算法,灵感来自于随机过程中的游览集概念,并在其上构建了失败算法。

When learning to ride a bike, a child falls down a number of times before achieving the first success. As falling down usually has only mild consequences, it can be seen as a tolerable failure in exchange for a faster learning process, as it provides rich information about an undesired behavior. In the context of Bayesian optimization under unknown constraints (BOC), typical strategies for safe learning explore conservatively and avoid failures by all means. On the other side of the spectrum, non conservative BOC algorithms that allow failing may fail an unbounded number of times before reaching the optimum. In this work, we propose a novel decision maker grounded in control theory that controls the amount of risk we allow in the search as a function of a given budget of failures. Empirical validation shows that our algorithm uses the failures budget more efficiently in a variety of optimization experiments, and generally achieves lower regret, than state-of-the-art methods. In addition, we propose an original algorithm for unconstrained Bayesian optimization inspired by the notion of excursion sets in stochastic processes, upon which the failures-aware algorithm is built.

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