Statistical design of experiments is widely used in scientific and industrial investigations. A generalized minimum aberration (GMA) orthogonal array is optimum under the well-established, so-called GMA criterion, and such an array can extract as much information as possible at a fixed cost. Finding GMA arrays is an open (yet fundamental) problem in design of experiments because constructing such arrays becomes intractable as the number of runs and factors increase. We develop two directed enumeration algorithms that call the integer programming with isomorphism pruning algorithm of Margot (2007) for the purpose of finding GMA arrays. Our results include 16 GMA arrays that were not previously in the literature, along with documentation of the efficiencies that made the required calculations possible within a reasonable budget of computer time. We also validate heuristic algorithms against a GMA array catalog, by showing that they quickly output near GMA arrays, and then use the heuristics to find near GMA arrays when enumeration is computationally burdensome.
翻译:实验的统计设计在科学和工业调查中广泛使用。在公认的、所谓的全球海洋环境状况评估标准下,一般最低偏差(GMA)正方阵列是最佳的,这种阵列可以以固定的成本提取尽可能多的信息。在设计实验时,发现全球海洋环境状况评估阵列是一个开放的(目前是根本性的)问题,因为随着运行量和因素的增加,建造这些阵列变得难以解决。我们开发了两种直接的计数算法,用马戈特的异形操纵算法调整整整形编程(2007年),以寻找全球海洋环境状况评估阵列。我们的结果包括16个以前没有在文献中出现的全球海洋环境状况评估阵列,同时记录在合理的计算机时间预算内进行必要计算的效率。我们还验证了全球海洋环境状况评估阵列的超自然算法,表明这些阵列的快速输出在接近全球海洋环境状况评估阵列时会发现接近全球海洋环境状况评估阵列。