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Bayesian learning of structures of ordered block graphical models with an application on multistage manufacturing processes

机译:多级制造过程中有序块图形模型结构的贝叶斯学习

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摘要

The Ordered Block Model (OBM) is a special form of directed graphical models and is widely used in various fields. In this article, we focus on learning of structures of OBM based on prior knowledge obtained from historical data. The proposed learning method is applied to a multistage car body assembly process to validate the learning efficiency. In this approach, Bayesian score is used to learn the graph structure and a novel informative structure prior distribution is constructed to help the learning process. Specifically, the graphical structure is represented by a categorical random variable and its distribution is treated as the informative prior. In this way, the informative prior distribution construction is equivalent to the parameter estimation of the graph random variable distribution using historical data. Since the historical OBMs may not contain the same nodes as those in the new OBM, the sample space of the graphical structure of the historical OBMs and the new OBM may be inconsistent. We deal with this issue by adding pseudo nodes with probability normalization, then removing extra nodes through marginalization to align the sample space between historical OBMs and the new OBM. The performance of the proposed method is illustrated and compared to conventional methods through numerical studies and a real car assembly process. The results show the proposed informative structure prior can effectively boost the performance of the graph structure learning procedure, especially when the data from the new OBM is small.
机译:有序块模型(OBM)是一种特殊的定向图形模型的形式,广泛用于各种领域。在本文中,我们专注于根据历史数据获得的先验知识来学习OBM的结构。所提出的学习方法应用于多级车身组装过程以验证学习效率。在这种方法中,贝叶斯分数用于学习图形结构,并且建立了新的信息结构以帮助学习过程。具体地,图形结构由分类随机变量表示,并且其分布被视为前面的信息。以这种方式,信息性的先前分配结构等同于使用历史数据的图形随机变量分布的参数估计。由于历史OBM可能不包含与新OBM中相同的节点,因此历史OBMS和新OBM的图形结构的示例空间可能不一致。我们通过添加具有概率标准化的伪节点来处理此问题,然后通过边缘化删除额外节点以对准历史OBMS和新OBM之间的示例空间。通过数值研究和真实的汽车组装过程说明了所提出的方法的性能和与常规方法进行比较。结果表明,所提出的信息结构可以有效地提高了图形结构学习程序的性能,尤其是当来自新OBM的数据很小时。

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