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Symmetry breaking in mixed integer linear programming formulations for blocking two-level orthogonal experimental designs

机译:混合整数线性规划公式的对称性破缺用于阻断两级正交实验设计

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Two-level orthogonal designs play an important role in industrial screening experiments, in which the primary goal is to identify the treatment factors with the largest main effects on the output of a process or the performance of a product. Often, the experimental tests suggested by the orthogonal designs cannot be performed on a single day or using a single batch of raw material. This causes day-to-day or batch-to-batch variation in the experimental results, and necessitates the use of orthogonal blocking patterns. These blocking patterns ensure that the factors' main effects can be estimated independently from the day-to-day or batch-to-batch variation. Finding an optimal orthogonal blocking pattern for an orthogonal design is a major challenge. Recently, mixed integer linear programming has been used for that purpose. While this approach is promising, computational experiments have indicated it is quite slow. We show how to speed up the mixed integer linear programming approach by adding symmetry breaking constraints to the formulation, and study the usefulness of an asymmetric representatives formulation. In other words, we introduce state-of-the-art symmetry breaking approaches in optimal experimental design. We perform extensive computational experiments to test which combinations of symmetry breaking constraints work best. Throughout, we consider two kinds of symmetry: symmetry due to the fact that the blocks can be relabeled without affecting the quality of the blocking pattern, and symmetry due to replicated test combinations. (C) 2018 Elsevier Ltd. All rights reserved.
机译:两级正交设计在工业筛选实验中起着重要作用,其主要目标是确定对过程输出或产品性能具有最大主要影响的处理因素。通常,正交设计建议的实验测试无法在一天之内或使用一批原料进行。这会导致实验结果的逐日变化或逐批变化,并且有必要使用正交阻断模式。这些阻止模式可确保可以独立于日常变化或批次间的变化来估计因素的主要影响。为正交设计找到最佳的正交阻挡图案是一个重大挑战。最近,混合整数线性编程已用于该目的。尽管这种方法很有希望,但计算实验表明它相当慢。我们展示了如何通过在公式中添加对称突破约束来加速混合整数线性规划方法,并研究了非对称代表公式的有效性。换句话说,我们在最佳实验设计中引入了最新的对称性破缺方法。我们进行了广泛的计算实验,以测试对称破断约束的最佳组合。在整篇文章中,我们考虑两种对称性:由于可以在不影响阻挡图案质量的情况下重新标记图块而引起的对称性,以及由于重复测试组合而产生的对称性。 (C)2018 Elsevier Ltd.保留所有权利。

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