Phoa Frederick Kin Hing, Chen Ray-Bing, Wang Weichung, Wong Weng Kee
Institute of Statistical Science, Academia Sinica.
Department of Statistics, National Cheng Kung University.
Technometrics. 2016;58(1):43-49. doi: 10.1080/00401706.2014.981346. Epub 2016 Jan 22.
Supersaturated designs (SSDs) are often used to reduce the number of experimental runs in screening experiments with a large number of factors. As more factors are used in the study, the search for an optimal SSD becomes increasingly challenging because of the large number of feasible selection of factor level settings. This paper tackles this discrete optimization problem via an algorithm based on swarm intelligence. Using the commonly used () criterion as an illustrative example, we propose an algorithm to find ()-optimal SSDs by showing that they attain the theoretical lower bounds in Bulutoglu and Cheng (2004) and Bulutoglu (2007). We show that our algorithm consistently produces SSDs that are at least as efficient as those from the traditional CP exchange method in terms of computational effort, frequency of finding the ()-optimal SSD and also has good potential for finding -, - and -optimal SSDs.
超饱和设计(SSDs)常用于减少具有大量因素的筛选实验中的实验次数。随着研究中使用的因素越来越多,由于因素水平设置的可行选择数量众多,寻找最优的超饱和设计变得越来越具有挑战性。本文通过一种基于群体智能的算法来解决这个离散优化问题。以常用的()准则为例,我们提出了一种算法来找到()最优的超饱和设计,通过证明它们达到了Bulutoglu和Cheng(2004年)以及Bulutoglu(2007年)中的理论下限。我们表明,我们的算法在计算量、找到()最优超饱和设计的频率方面始终能产生至少与传统CP交换方法一样高效的超饱和设计,并且在寻找-、-和-最优超饱和设计方面也具有良好的潜力。