主动学习和贝叶斯优化:带着目标学习的统一视角

IF 9.7 2区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Francesco Di Fiore, Michela Nardelli, Laura Mainini
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引用次数: 0

摘要

科学和工程应用通常与昂贵的优化问题相关联,以确定最佳设计方案和相关系统的状态。贝叶斯优化和主动学习通过高效的自适应采样方案计算代用模型,以协助和加速这一搜索任务,从而实现给定的优化目标。这两种方法都由特定的填充/学习标准驱动,这些标准量化了针对优化变量的未知组合评估目标函数这一既定目标的效用。虽然这两个领域在过去几十年中呈指数级增长,但它们的二元性和协同性迄今为止受到的关注却相对较少。本文讨论并正式阐述了贝叶斯优化和主动学习之间的协同作用,它们是由共同原理驱动的共生自适应采样方法。特别是,我们通过形式化贝叶斯填充标准和主动学习标准之间的类比,证明了这一统一的观点,因为贝叶斯填充标准和主动学习标准都是目标驱动程序的驱动原则。为了支持我们最初的观点,我们提出了自适应采样技术的一般分类,以突出自适应采样、主动学习和贝叶斯优化等众多技术之间的异同。相应地,我们展示了贝叶斯填充标准与主动学习标准之间的协同作用,并正式确定了由单一信息源和多级保真度提供信息的搜索。此外,我们还提供了应用这些学习标准的指南,针对各种基准问题对不同贝叶斯方案的性能进行了调查,以突出现实世界应用中数学特性的优势和局限性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Active Learning and Bayesian Optimization: A Unified Perspective to Learn with a Goal

Active Learning and Bayesian Optimization: A Unified Perspective to Learn with a Goal

Science and Engineering applications are typically associated with expensive optimization problem to identify optimal design solutions and states of the system of interest. Bayesian optimization and active learning compute surrogate models through efficient adaptive sampling schemes to assist and accelerate this search task toward a given optimization goal. Both those methodologies are driven by specific infill/learning criteria which quantify the utility with respect to the set goal of evaluating the objective function for unknown combinations of optimization variables. While the two fields have seen an exponential growth in popularity in the past decades, their dualism and synergy have received relatively little attention to date. This paper discusses and formalizes the synergy between Bayesian optimization and active learning as symbiotic adaptive sampling methodologies driven by common principles. In particular, we demonstrate this unified perspective through the formalization of the analogy between the Bayesian infill criteria and active learning criteria as driving principles of both the goal-driven procedures. To support our original perspective, we propose a general classification of adaptive sampling techniques to highlight similarities and differences between the vast families of adaptive sampling, active learning, and Bayesian optimization. Accordingly, the synergy is demonstrated mapping the Bayesian infill criteria with the active learning criteria, and is formalized for searches informed by both a single information source and multiple levels of fidelity. In addition, we provide guidelines to apply those learning criteria investigating the performance of different Bayesian schemes for a variety of benchmark problems to highlight benefits and limitations over mathematical properties that characterize real-world applications.

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来源期刊
CiteScore
19.80
自引率
4.10%
发文量
153
审稿时长
>12 weeks
期刊介绍: Archives of Computational Methods in Engineering Aim and Scope: Archives of Computational Methods in Engineering serves as an active forum for disseminating research and advanced practices in computational engineering, particularly focusing on mechanics and related fields. The journal emphasizes extended state-of-the-art reviews in selected areas, a unique feature of its publication. Review Format: Reviews published in the journal offer: A survey of current literature Critical exposition of topics in their full complexity By organizing the information in this manner, readers can quickly grasp the focus, coverage, and unique features of the Archives of Computational Methods in Engineering.
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