{"title":"使用多模态优化算法并行处理自适应贝叶斯立体模型","authors":"Fangqi Hong, Pengfei Wei, Michael Beer","doi":"10.1108/ec-12-2023-0957","DOIUrl":null,"url":null,"abstract":"<h3>Purpose</h3>\n<p>Bayesian cubature (BC) has emerged to be one of most competitive approach for estimating the multi-dimensional integral especially when the integrand is expensive to evaluate, and alternative acquisition functions, such as the Posterior Variance Contribution (PVC) function, have been developed for adaptive experiment design of the integration points. However, those sequential design strategies also prevent BC from being implemented in a parallel scheme. 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引用次数: 0
摘要
目的 贝叶斯立体法(Bayesian cubature,BC)已成为估算多维积分最有竞争力的方法之一,尤其是当积分的评估成本较高时。然而,这些顺序设计策略也阻碍了 BC 在并行方案中的实施。通过理论研究 PVC 函数的多模态行为,可以得出结论:多个局部最大值都对积分精度有重要贡献,可以被选作设计点,这为自适应 BC 的并行化提供了一条实用途径。研究结果通过两个数值基准和两个工程实例,证明了并行方案的优越性以及四种多模态优化算法的性能,并与 k-means 聚类方法进行了比较。获取函数的所有局部最大值都有助于提高自适应 BC 的精度。利用四种多模态优化方法实现了自适应 BC 的并行化。
Parallelization of adaptive Bayesian cubature using multimodal optimization algorithms
Purpose
Bayesian cubature (BC) has emerged to be one of most competitive approach for estimating the multi-dimensional integral especially when the integrand is expensive to evaluate, and alternative acquisition functions, such as the Posterior Variance Contribution (PVC) function, have been developed for adaptive experiment design of the integration points. However, those sequential design strategies also prevent BC from being implemented in a parallel scheme. Therefore, this paper aims at developing a parallelized adaptive BC method to further improve the computational efficiency.
Design/methodology/approach
By theoretically examining the multimodal behavior of the PVC function, it is concluded that the multiple local maxima all have important contribution to the integration accuracy as can be selected as design points, providing a practical way for parallelization of the adaptive BC. Inspired by the above finding, four multimodal optimization algorithms, including one newly developed in this work, are then introduced for finding multiple local maxima of the PVC function in one run, and further for parallel implementation of the adaptive BC.
Findings
The superiority of the parallel schemes and the performance of the four multimodal optimization algorithms are then demonstrated and compared with the k-means clustering method by using two numerical benchmarks and two engineering examples.
Originality/value
Multimodal behavior of acquisition function for BC is comprehensively investigated. All the local maxima of the acquisition function contribute to adaptive BC accuracy. Parallelization of adaptive BC is realized with four multimodal optimization methods.
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