This study proposes an innovative explainable predictive quality analytics solution to facilitate data-driven decision-making for process planning in manufacturing by combining process mining, machine learning, and explainable artificial intelligence (XAI) methods. For this purpose, after integrating the top-floor and shop-floor data obtained from various enterprise information systems, a deep learning model was applied to predict the process outcomes. Since this study aims to operationalize the delivered predictive insights by embedding them into decision-making processes, it is essential to generate relevant explanations for domain experts. To this end, two complementary local post-hoc explanation approaches, Shapley values and Individual Conditional Expectation (ICE) plots are adopted, which are expected to enhance the decision-making capabilities by enabling experts to examine explanations from different perspectives. After assessing the predictive strength of the applied deep neural network with relevant binary classification evaluation measures, a discussion of the generated explanations is provided.
翻译:这项研究提出了一种创新的、可解释的预测质量分析解决办法,通过结合工艺采矿、机器学习和可解释的人工智能(XAI)方法,便利以数据驱动的决策进行制造过程规划,为此,在综合了从各种企业信息系统获得的上层和上层数据后,采用了深层学习模型来预测过程结果;由于这项研究的目的是通过将这些结果纳入决策进程,使所提供的预测见解发挥作用,因此必须为域专家作出相关解释;为此,采用了两种相辅相成的当地热后解释方法,即“损耗值”和“个人条件预期”图,预期这将加强决策能力,使专家能够从不同角度审查解释;在评估了应用的深神经网络的预测力和相关的二元分类评价措施之后,提供了对所产生解释的讨论。