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Machine learning and Design of Experiments: Alternative approaches or complementary methodologies for quality improvement?

机译:机器学习与实验设计:质量改进的替代方法或互补方法?

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Machine Learning (ML), or the ability of self-learning computer algorithms to autonomously structure and interpret data, is a methodological approach to solve complicated optimization problems based on abundant data. ML is recently gaining momentum as algorithmic applications, computing potency, and available data sets increased manifold over the past two decades, providing an information-rich environment in which human reasoning can partially be replaced by computer reasoning. In this paper, we want to assess the implications of ML for Design of Experiments (DoE), a statistical methodology widely used in Quality Management for quantifying effects and interactions of factors with influence on the production quality or the process yield. We specifically want to assess the future role and importance of DoE: Will it remain unaltered by ML, will it be made obsolete, or will it be reinforced? With this, we want to contribute to the discussion of the future use of traditional Quality Management methodologies in production, as our ML assessment can in principle be applied to other statistical methodologies as well. While we are convinced that ML will heavily impact the field of Quality Management and its predominant set of statistical methodologies, we find reason to expect that this impact will be a mutual one. As this is the first paper addressing the joint force potential of the two methodologies ML and DoE, we expect a range of follow-up papers being written on the subject and a spark in specialized applications addressing DoE's ML-enhanced vital functionality for process improvements.
机译:机器学习(ML)或自学习计算机算法到自主结构和解释数据的能力,是一种解决基于丰富数据的复杂优化问题的方法方法。 ML最近在过去二十年中获得了算法应用,计算效力和可用数据集的势头,并且可用数据在过去二十年中增加了流歧管,提供了一种丰富的环境,其中人类推理可以部分地被计算机推理所取代。在本文中,我们希望评估ML的实验设计(DOE)的含义,一种统计方法,广泛用于质量管理,用于量化对生产质量或工艺产量影响的因素的影响和相互作用。我们专门想评估DOE的未来角色和重要性:它是否仍然不会被ML淘汰,它会被过时,还是将被加强?有了这一点,我们希望促进对未来在生产中使用传统质量管理方法的讨论,因为我们的ML评估原则上也可以应用于其他统计方法。虽然我们相信ML将大量影响质量管理领域及其主要的统计方法,我们发现理由期望这种影响将是相互的。因为这是解决两种方法的联合力潜力ML和DOE的第一个纸张,我们预计将在主题上写一篇关于课题的后续文件以及寻址DOE的ML增强的重要功能的专业应用程序进行过程改进。

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