A general-purpose approach to multi-agent Bayesian optimization across decomposition methods.

IF 1.7 3区 工程技术 Q2 ENGINEERING, MULTIDISCIPLINARY
Optimization and Engineering Pub Date : 2025-01-01 Epub Date: 2025-01-20 DOI:10.1007/s11081-024-09953-w
Dinesh Krishnamoorthy
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引用次数: 0

Abstract

This paper proposes a general-purpose multi-agent Bayesian optimization (MABO) where agents are connected via shared variables or constraints, and each agent's local cost is unknown. The proposed approach is general-purpose in the sense that it can be used with a broad class of decomposition methods, whereby we augment traditional BO acquisition functions with suitably derived coordinating terms to facilitate coordination among subsystems without sharing local data. Regret analysis is also carried out for the general-purpose MABO framework, which reveals that the cumulative regret of the proposed general-purpose MABO is the sum of individual regrets and is independent of the coordinating terms. This adaptability to different decomposition methods ensures versatility across diverse distributed optimization scenarios. Numerical experiments validate the effectiveness of the proposed MABO framework for different classes of decomposition methods.

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跨分解方法的多智能体贝叶斯优化的通用方法。
本文提出了一种通用的多智能体贝叶斯优化方法,其中智能体通过共享变量或约束连接,每个智能体的局部成本是未知的。所提出的方法是通用的,因为它可以与广泛的分解方法一起使用,因此我们用适当派生的协调项来增强传统的BO获取函数,以促进子系统之间的协调,而不共享局部数据。本文还对通用MABO框架进行了遗憾分析,结果表明所提出的通用MABO框架的累积遗憾是个体遗憾的总和,与协调项无关。这种对不同分解方法的适应性确保了跨不同分布式优化场景的通用性。数值实验验证了所提出的MABO框架对不同类型分解方法的有效性。
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来源期刊
Optimization and Engineering
Optimization and Engineering 工程技术-工程:综合
CiteScore
4.80
自引率
14.30%
发文量
73
审稿时长
>12 weeks
期刊介绍: Optimization and Engineering is a multidisciplinary journal; its primary goal is to promote the application of optimization methods in the general area of engineering sciences. We expect submissions to OPTE not only to make a significant optimization contribution but also to impact a specific engineering application. Topics of Interest: -Optimization: All methods and algorithms of mathematical optimization, including blackbox and derivative-free optimization, continuous optimization, discrete optimization, global optimization, linear and conic optimization, multiobjective optimization, PDE-constrained optimization & control, and stochastic optimization. Numerical and implementation issues, optimization software, benchmarking, and case studies. -Engineering Sciences: Aerospace engineering, biomedical engineering, chemical & process engineering, civil, environmental, & architectural engineering, electrical engineering, financial engineering, geosciences, healthcare engineering, industrial & systems engineering, mechanical engineering & MDO, and robotics.
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