计算机科学
贝叶斯优化
数学优化
贝叶斯概率
噪音(视频)
度量(数据仓库)
数据挖掘
机器学习
人工智能
数学
图像(数学)
作者
Samuel Daulton,Sait Cakmak,Maximilian Balandat,Michael A. Osborne,Enlu Zhou,Eytan Bakshy
出处
期刊:Cornell University - arXiv
日期:2022-01-01
被引量:3
标识
DOI:10.48550/arxiv.2202.07549
摘要
Bayesian optimization (BO) is a sample-efficient approach for tuning design parameters to optimize expensive-to-evaluate, black-box performance metrics. In many manufacturing processes, the design parameters are subject to random input noise, resulting in a product that is often less performant than expected. Although BO methods have been proposed for optimizing a single objective under input noise, no existing method addresses the practical scenario where there are multiple objectives that are sensitive to input perturbations. In this work, we propose the first multi-objective BO method that is robust to input noise. We formalize our goal as optimizing the multivariate value-at-risk (MVaR), a risk measure of the uncertain objectives. Since directly optimizing MVaR is computationally infeasible in many settings, we propose a scalable, theoretically-grounded approach for optimizing MVaR using random scalarizations. Empirically, we find that our approach significantly outperforms alternative methods and efficiently identifies optimal robust designs that will satisfy specifications across multiple metrics with high probability.
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