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Minimax and Minimax Projection Designs Using Clustering

机译:Minimax和Minimax投影设计使用群集

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摘要

Minimax designs provide a uniform coverage of a design space chi subset of R-p by minimizing the maximum distance from any point in this space to its nearest design point. Although minimax designs have many useful applications, for example, for optimal sensor allocation or as space-filling designs for computer experiments, there has been little work in developing algorithms for generating these designs, due to its computational complexity. In this article, a new hybrid algorithm combining particle swarm optimization and clustering is proposed for generating minimax designs on any convex and bounded design space. The computation time of this algorithm scales linearly in dimension p, meaning our method can generate minimax designs efficiently for high-dimensional regions. Simulation studies and a real-world example show that the proposed algorithm provides improved minimax performance over existing methods on a variety of design spaces. Finally, we introduce a new type of experimental design called a minimax projection design, and show that this proposed design provides better minimax performance on projected subspaces of chi compared to existing designs. An efficient implementation of these algorithms can be found in the R package minimaxdesign. Supplementary material for this article is available online.
机译:最小化通过将该空间中的任何点的最大距离最小化到最近的设计点来提供R-P的设计空间Chi子集的统一覆盖。尽管Minimax设计具有许多有用的应用,但例如,对于最佳传感器分配或作为计算机实验的空间填充设计,由于其计算复杂性,在开发出产生这些设计的算法时几乎没有作用。在本文中,提出了一种新的混合算法,用于组合粒子群优化和聚类,用于在任何凸面和有界设计空间上生成Minimax设计。该算法的计算时间在尺寸P中线性缩放,这意味着我们的方法可以有效地为高维地区产生最低限度设计。仿真研究和实际示例表明,该算法在各种设计空间上的现有方法提供了更高的最低限度性能。最后,我们介绍了一种新型的实验设计,称为最小新的投影设计,并表明,与现有设计相比,这一提出的设计在Chi的预计子空间上提供了更好的最小性能。可以在R包MinimaxDesign中找到这些算法的有效实现。本文的补充材料在线提供。

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