Projected Gaussian Markov Improvement Algorithm for High-dimensional Discrete Optimization via Simulation

IF 0.7 4区 计算机科学 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Xinru Li, Eunhye Song
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Abstract

This paper considers a discrete optimization via simulation (DOvS) problem defined on a graph embedded in the high-dimensional integer grid. Several DOvS algorithms that model the responses at the solutions as a realization of a Gaussian Markov random field (GMRF) have been proposed exploiting its inferential power and computational benefits. However, the computational cost of inference increases exponentially in dimension. We propose the projected Gaussian Markov improvement algorithm (pGMIA), which projects the solution space onto a lower-dimensional space creating the region-layer graph to reduce the cost of inference. Each node on the region-layer graph can be mapped to a set of solutions projected to the node; these solutions form a lower-dimensional solution-layer graph. We define the response at each region-layer node to be the average of the responses within the corresponding solution-layer graph. From this relation, we derive the region-layer GMRF to model the region-layer responses. The pGMIA alternates between the two layers to make a sampling decision at each iteration; it first selects a region-layer node based on the lower-resolution inference provided by the region-layer GMRF, then makes a sampling decision among the solutions within the solution-layer graph of the node based on the higher-resolution inference from the solution-layer GMRF. To solve even higher-dimensional problems (e.g., 100 dimensions), we also propose the pGMIA+: a multi-layer extension of the pGMIA.We show that both pGMIA and pGMIA+ converge to the optimum almost surely asymptotically and empirically demonstrate their competitiveness against state-of-the-art high-dimensional Bayesian optimization algorithms.

通过模拟实现高维离散优化的投射高斯马尔可夫改进算法
本文研究的是一个离散模拟优化(DOvS)问题,该问题定义在嵌入高维整数网格的图形上。利用高斯马尔可夫随机场(GMRF)的推理能力和计算优势,已经提出了几种 DOvS 算法,这些算法将解决方案的响应建模为高斯马尔可夫随机场(GMRF)的实现。然而,推理的计算成本随维度呈指数增长。我们提出了投影高斯马尔可夫改进算法(pGMIA),它将解空间投影到低维空间,创建区域层图,以降低推理成本。区域层图上的每个节点都可以映射到投影到该节点的一组解;这些解构成了一个低维的解层图。我们将每个区域层节点的响应定义为相应解决方案层图中响应的平均值。根据这一关系,我们推导出区域层 GMRF,为区域层响应建模。pGMIA 在每次迭代时都会在两层之间交替进行采样决策;它首先根据区域层 GMRF 提供的低分辨率推论选择一个区域层节点,然后根据解法层 GMRF 提供的高分辨率推论在该节点的解法层图中进行采样决策。为了解决更高维的问题(例如 100 维),我们还提出了 pGMIA+:pGMIA 的多层扩展。我们的研究表明,pGMIA 和 pGMIA+ 几乎肯定会渐进地收敛到最优值,并通过实证证明了它们与最先进的高维贝叶斯优化算法相比的竞争力。
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来源期刊
ACM Transactions on Modeling and Computer Simulation
ACM Transactions on Modeling and Computer Simulation 工程技术-计算机:跨学科应用
CiteScore
2.50
自引率
22.20%
发文量
29
审稿时长
>12 weeks
期刊介绍: The ACM Transactions on Modeling and Computer Simulation (TOMACS) provides a single archival source for the publication of high-quality research and developmental results referring to all phases of the modeling and simulation life cycle. The subjects of emphasis are discrete event simulation, combined discrete and continuous simulation, as well as Monte Carlo methods. The use of simulation techniques is pervasive, extending to virtually all the sciences. TOMACS serves to enhance the understanding, improve the practice, and increase the utilization of computer simulation. Submissions should contribute to the realization of these objectives, and papers treating applications should stress their contributions vis-á-vis these objectives.
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